Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1 | /* |
Giorgio Arena | 6e9d0e0 | 2020-01-03 15:02:04 +0000 | [diff] [blame] | 2 | * Copyright (c) 2018-2020 ARM Limited. |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 3 | * |
| 4 | * SPDX-License-Identifier: MIT |
| 5 | * |
| 6 | * Permission is hereby granted, free of charge, to any person obtaining a copy |
| 7 | * of this software and associated documentation files (the "Software"), to |
| 8 | * deal in the Software without restriction, including without limitation the |
| 9 | * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or |
| 10 | * sell copies of the Software, and to permit persons to whom the Software is |
| 11 | * furnished to do so, subject to the following conditions: |
| 12 | * |
| 13 | * The above copyright notice and this permission notice shall be included in all |
| 14 | * copies or substantial portions of the Software. |
| 15 | * |
| 16 | * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR |
| 17 | * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, |
| 18 | * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE |
| 19 | * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER |
| 20 | * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, |
| 21 | * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE |
| 22 | * SOFTWARE. |
| 23 | */ |
Michalis Spyrou | f464337 | 2019-11-29 16:17:13 +0000 | [diff] [blame] | 24 | #ifndef ARM_COMPUTE_GRAPH_BACKENDS_DETAIL_FUNCTION_HELPERS_H |
| 25 | #define ARM_COMPUTE_GRAPH_BACKENDS_DETAIL_FUNCTION_HELPERS_H |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 26 | |
| 27 | #include "arm_compute/graph/Logger.h" |
| 28 | #include "arm_compute/graph/Tensor.h" |
| 29 | #include "arm_compute/graph/TypePrinter.h" |
| 30 | #include "arm_compute/graph/Types.h" |
Georgios Pinitas | 9e4824c | 2019-04-12 13:15:58 +0100 | [diff] [blame] | 31 | #include "arm_compute/graph/Utils.h" |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 32 | #include "arm_compute/graph/backends/FusedConvolutionBatchNormalizationFunction.h" |
Manuel Bottini | bffb41e | 2019-06-20 16:00:27 +0100 | [diff] [blame] | 33 | #include "arm_compute/graph/backends/FusedDepthwiseConvolutionBatchNormalizationFunction.h" |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 34 | #include "arm_compute/graph/backends/Utils.h" |
| 35 | #include "arm_compute/graph/nodes/Nodes.h" |
| 36 | |
| 37 | #include "arm_compute/core/Error.h" |
| 38 | #include "arm_compute/core/Helpers.h" |
| 39 | #include "arm_compute/core/ITensorInfo.h" |
| 40 | #include "arm_compute/core/utils/misc/Cast.h" |
| 41 | |
| 42 | namespace arm_compute |
| 43 | { |
| 44 | namespace graph |
| 45 | { |
| 46 | namespace backends |
| 47 | { |
| 48 | namespace detail |
| 49 | { |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 50 | // Address rule DR-9R5 (1579. Return by converting move constructor) |
| 51 | #if defined(__clang__) || (defined(__GNUC__) && (__GNUC__ >= 5)) |
| 52 | #define RETURN_UNIQUE_PTR(x) (x) |
| 53 | #else /* defined(__clang__) || (defined(__GNUC__) && (__GNUC__ >= 5)) */ |
| 54 | #define RETURN_UNIQUE_PTR(x) (std::move(x)) |
| 55 | #endif /* defined(__clang__) || (defined(__GNUC__) && (__GNUC__ >= 5)) */ |
| 56 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 57 | /** Returns backing tensor of a given tensor |
| 58 | * |
| 59 | * @tparam TargetInfo Target information |
| 60 | * |
| 61 | * @param[in] tensor Tensor to extract the backing tensor from |
| 62 | * |
| 63 | * @return Backing tensor if present else nullptr |
| 64 | */ |
| 65 | template <typename TargetInfo> |
| 66 | typename TargetInfo::TensorType *get_backing_tensor(arm_compute::graph::Tensor *tensor) |
| 67 | { |
| 68 | typename TargetInfo::TensorType *backing_tensor = nullptr; |
| 69 | if(tensor != nullptr) |
| 70 | { |
| 71 | ARM_COMPUTE_ERROR_ON(tensor->desc().target != TargetInfo::TargetType); |
| 72 | // Get backing tensor handle |
| 73 | ITensorHandle *tensor_handle = tensor->handle(); |
| 74 | // Get backing tensor |
| 75 | backing_tensor = (tensor_handle != nullptr) ? arm_compute::utils::cast::polymorphic_cast<typename TargetInfo::TensorType *>(&tensor_handle->tensor()) : nullptr; |
| 76 | } |
| 77 | |
| 78 | return backing_tensor; |
| 79 | } |
| 80 | |
| 81 | template <typename TargetInfo> |
| 82 | void validate_node(const INode &node, size_t num_expected_inputs, size_t num_expected_outputs) |
| 83 | { |
| 84 | ARM_COMPUTE_LOG_GRAPH_VERBOSE("Creating " << node.type() |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 85 | << " Target: " << TargetInfo::TargetType |
| 86 | << " ID: " << node.id() |
| 87 | << node.name() |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 88 | << std::endl); |
| 89 | |
| 90 | ARM_COMPUTE_ERROR_ON(TargetInfo::TargetType != node.assigned_target()); |
| 91 | ARM_COMPUTE_ERROR_ON(node.num_inputs() != num_expected_inputs); |
| 92 | ARM_COMPUTE_ERROR_ON(node.num_outputs() != num_expected_outputs); |
Michalis Spyrou | 6bff195 | 2019-10-02 17:22:11 +0100 | [diff] [blame] | 93 | ARM_COMPUTE_UNUSED(node, num_expected_inputs, num_expected_outputs); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 94 | } |
| 95 | |
| 96 | /** Creates a backend activation layer function |
| 97 | * |
| 98 | * @tparam ActivationLayerFunction Backend activation function |
| 99 | * @tparam TargetInfo Target-specific information |
| 100 | * |
| 101 | * @param[in] node Node to create the backend function for |
| 102 | * |
| 103 | * @return Backend activation layer function |
| 104 | */ |
| 105 | template <typename ActivationLayerFunction, typename TargetInfo> |
| 106 | std::unique_ptr<IFunction> create_activation_layer(ActivationLayerNode &node) |
| 107 | { |
| 108 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 109 | |
| 110 | // Extract IO and info |
| 111 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 112 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 113 | const ActivationLayerInfo act_info = node.activation_info(); |
| 114 | |
| 115 | // Create function |
| 116 | auto func = support::cpp14::make_unique<ActivationLayerFunction>(); |
| 117 | func->configure(input, output, act_info); |
| 118 | |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 119 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 120 | << node.name() |
| 121 | << " Type: " << node.type() |
Isabella Gottardi | 0ae5de9 | 2019-03-14 10:32:11 +0000 | [diff] [blame] | 122 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 123 | << " Data Type: " << input->info()->data_type() |
| 124 | << " Shape: " << input->info()->tensor_shape() |
| 125 | << " Activation function: " << act_info.activation() |
| 126 | << " a: " << act_info.a() |
| 127 | << " b: " << act_info.b() |
| 128 | << " InPlace : " << is_in_place_operation(input, output) |
| 129 | << std::endl); |
| 130 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 131 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 132 | } |
| 133 | |
| 134 | /** Create a backend batch normalization layer function |
| 135 | * |
| 136 | * @tparam BatchNormalizationLayerFunction Backend batch normalization function |
| 137 | * @tparam TargetInfo Target-specific information |
| 138 | * |
| 139 | * @param[in] node Node to create the backend function for |
| 140 | * |
| 141 | * @return Backend batch normalization layer function |
| 142 | */ |
| 143 | template <typename BatchNormalizationLayerFunction, typename TargetInfo> |
| 144 | std::unique_ptr<IFunction> create_batch_normalization_layer(BatchNormalizationLayerNode &node) |
| 145 | { |
| 146 | validate_node<TargetInfo>(node, 5 /* expected inputs */, 1 /* expected outputs */); |
| 147 | |
| 148 | // Extract IO and info |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 149 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 150 | typename TargetInfo::TensorType *mean = get_backing_tensor<TargetInfo>(node.input(1)); |
| 151 | typename TargetInfo::TensorType *var = get_backing_tensor<TargetInfo>(node.input(2)); |
| 152 | typename TargetInfo::TensorType *beta = get_backing_tensor<TargetInfo>(node.input(3)); |
| 153 | typename TargetInfo::TensorType *gamma = get_backing_tensor<TargetInfo>(node.input(4)); |
| 154 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 155 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 156 | const float epsilon = node.epsilon(); |
| 157 | const ActivationLayerInfo fused_act = node.fused_activation(); |
| 158 | |
| 159 | // Create and configure function |
| 160 | auto func = support::cpp14::make_unique<BatchNormalizationLayerFunction>(); |
| 161 | func->configure(input, output, mean, var, beta, gamma, epsilon, fused_act); |
| 162 | |
| 163 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 164 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 165 | << node.name() |
| 166 | << " Type: " << node.type() |
| 167 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 168 | << " Data Type: " << input->info()->data_type() |
| 169 | << " Shape: " << input->info()->tensor_shape() |
| 170 | << " Epsilon: " << epsilon << " " |
| 171 | << (fused_act.enabled() ? to_string(fused_act.activation()) : "") |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 172 | << " InPlace: " << is_in_place_operation(input, output) |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 173 | << std::endl); |
| 174 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 175 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 176 | } |
| 177 | |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 178 | /** Create a backend batch normalization layer function |
| 179 | * |
| 180 | * @tparam BatchNormalizationLayerFunction Backend batch normalization function |
| 181 | * @tparam TargetInfo Target-specific information |
| 182 | * |
| 183 | * @param[in] node Node to create the backend function for |
Gian Marco Iodice | 5dea19e | 2019-11-08 12:13:48 +0000 | [diff] [blame] | 184 | * @param[in] ctx Graph context |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 185 | * |
| 186 | * @return Backend batch normalization layer function |
| 187 | */ |
| 188 | template <typename FusedLayerTypes, typename TargetInfo> |
Gian Marco Iodice | 5dea19e | 2019-11-08 12:13:48 +0000 | [diff] [blame] | 189 | std::unique_ptr<IFunction> create_fused_convolution_batch_normalization_layer(FusedConvolutionBatchNormalizationNode &node, GraphContext &ctx) |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 190 | { |
| 191 | validate_node<TargetInfo>(node, 7 /* expected inputs */, 1 /* expected outputs */); |
| 192 | |
| 193 | // Extract IO and info |
| 194 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 195 | typename TargetInfo::TensorType *weights = get_backing_tensor<TargetInfo>(node.input(1)); |
| 196 | typename TargetInfo::TensorType *biases = get_backing_tensor<TargetInfo>(node.input(2)); |
| 197 | typename TargetInfo::TensorType *mean = get_backing_tensor<TargetInfo>(node.input(3)); |
| 198 | typename TargetInfo::TensorType *var = get_backing_tensor<TargetInfo>(node.input(4)); |
| 199 | typename TargetInfo::TensorType *beta = get_backing_tensor<TargetInfo>(node.input(5)); |
| 200 | typename TargetInfo::TensorType *gamma = get_backing_tensor<TargetInfo>(node.input(6)); |
| 201 | |
| 202 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 203 | |
| 204 | const PadStrideInfo conv_info = node.convolution_info(); |
| 205 | const unsigned int num_groups = node.num_groups(); |
| 206 | const bool fast_math = node.fast_math_hint() == FastMathHint::Enabled; |
| 207 | const ActivationLayerInfo fused_act = node.fused_activation(); |
| 208 | const float epsilon = node.epsilon(); |
| 209 | |
Gian Marco Iodice | 5dea19e | 2019-11-08 12:13:48 +0000 | [diff] [blame] | 210 | // Create and configure function (we assume that functions have been validated before creation) |
| 211 | std::shared_ptr<IMemoryManager> mm = get_memory_manager(ctx, TargetInfo::TargetType); |
| 212 | std::unique_ptr<IFunction> func; |
| 213 | std::string func_name; |
| 214 | |
| 215 | using FType = FusedConvolutionBatchNormalizationFunction<TargetInfo, FusedLayerTypes>; |
| 216 | |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 217 | // Create and configure function |
Gian Marco Iodice | 5dea19e | 2019-11-08 12:13:48 +0000 | [diff] [blame] | 218 | std::tie(func, func_name) = create_named_memory_managed_function<FType>( |
| 219 | std::string("FusedConvolutionBatchNormalizationLayer"), mm, input, weights, biases, output, mean, var, beta, gamma, epsilon, conv_info, num_groups, fast_math, fused_act); |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 220 | |
| 221 | // Log info |
| 222 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 223 | << node.name() |
Manuel Bottini | bffb41e | 2019-06-20 16:00:27 +0100 | [diff] [blame] | 224 | << " Type: " << node.type() |
| 225 | << " Target: " << TargetInfo::TargetType |
| 226 | << " Data Type: " << input->info()->data_type() |
| 227 | << " Input shape: " << input->info()->tensor_shape() |
| 228 | << " Weights shape: " << weights->info()->tensor_shape() |
| 229 | << " Output shape: " << output->info()->tensor_shape() |
| 230 | << (fused_act.enabled() ? " " + to_string(fused_act.activation()) : "") |
| 231 | << std::endl); |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 232 | return RETURN_UNIQUE_PTR(func); |
Manuel Bottini | bffb41e | 2019-06-20 16:00:27 +0100 | [diff] [blame] | 233 | } |
| 234 | |
| 235 | /** Create a backend fused depthwise convolution batch normalization layer function |
| 236 | * |
| 237 | * @tparam FusedLayerTypes Fused layer types |
| 238 | * @tparam TargetInfo Target-specific information |
| 239 | * |
| 240 | * @param[in] node Node to create the backend function for |
Gian Marco Iodice | 5dea19e | 2019-11-08 12:13:48 +0000 | [diff] [blame] | 241 | * @param[in] ctx Graph context |
Manuel Bottini | bffb41e | 2019-06-20 16:00:27 +0100 | [diff] [blame] | 242 | * |
| 243 | * @return Backend fused depthwise convolution batch normalization layer function |
| 244 | */ |
| 245 | template <typename FusedLayerTypes, typename TargetInfo> |
Gian Marco Iodice | 5dea19e | 2019-11-08 12:13:48 +0000 | [diff] [blame] | 246 | std::unique_ptr<IFunction> create_fused_depthwise_convolution_batch_normalization_layer(FusedDepthwiseConvolutionBatchNormalizationNode &node, GraphContext &ctx) |
Manuel Bottini | bffb41e | 2019-06-20 16:00:27 +0100 | [diff] [blame] | 247 | { |
| 248 | validate_node<TargetInfo>(node, 7 /* expected inputs */, 1 /* expected outputs */); |
| 249 | |
| 250 | // Extract IO and info |
| 251 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 252 | typename TargetInfo::TensorType *weights = get_backing_tensor<TargetInfo>(node.input(1)); |
| 253 | typename TargetInfo::TensorType *biases = get_backing_tensor<TargetInfo>(node.input(2)); |
| 254 | typename TargetInfo::TensorType *mean = get_backing_tensor<TargetInfo>(node.input(3)); |
| 255 | typename TargetInfo::TensorType *var = get_backing_tensor<TargetInfo>(node.input(4)); |
| 256 | typename TargetInfo::TensorType *beta = get_backing_tensor<TargetInfo>(node.input(5)); |
| 257 | typename TargetInfo::TensorType *gamma = get_backing_tensor<TargetInfo>(node.input(6)); |
| 258 | |
| 259 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 260 | |
| 261 | const PadStrideInfo conv_info = node.convolution_info(); |
| 262 | const unsigned int depth_multiplier = node.depth_multiplier(); |
| 263 | const ActivationLayerInfo fused_act = node.fused_activation(); |
| 264 | const float epsilon = node.epsilon(); |
| 265 | |
Gian Marco Iodice | 5dea19e | 2019-11-08 12:13:48 +0000 | [diff] [blame] | 266 | // Create and configure function (we assume that functions have been validated before creation) |
| 267 | std::shared_ptr<IMemoryManager> mm = get_memory_manager(ctx, TargetInfo::TargetType); |
| 268 | std::unique_ptr<IFunction> func; |
| 269 | std::string func_name; |
| 270 | |
| 271 | using FType = FusedDepthwiseConvolutionBatchNormalizationFunction<TargetInfo, FusedLayerTypes>; |
| 272 | |
Manuel Bottini | bffb41e | 2019-06-20 16:00:27 +0100 | [diff] [blame] | 273 | // Create and configure function |
Gian Marco Iodice | 5dea19e | 2019-11-08 12:13:48 +0000 | [diff] [blame] | 274 | std::tie(func, func_name) = create_named_memory_managed_function<FType>( |
| 275 | std::string("FusedDepthwiseConvolutionBatchNormalizationLayer"), mm, input, weights, biases, output, mean, var, beta, gamma, epsilon, conv_info, depth_multiplier, fused_act); |
Manuel Bottini | bffb41e | 2019-06-20 16:00:27 +0100 | [diff] [blame] | 276 | |
| 277 | // Log info |
| 278 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 279 | << node.name() |
| 280 | << " Type: " << node.type() |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 281 | << " Target: " << TargetInfo::TargetType |
| 282 | << " Data Type: " << input->info()->data_type() |
| 283 | << " Input shape: " << input->info()->tensor_shape() |
| 284 | << " Weights shape: " << weights->info()->tensor_shape() |
| 285 | << " Output shape: " << output->info()->tensor_shape() |
| 286 | << (fused_act.enabled() ? " " + to_string(fused_act.activation()) : "") |
| 287 | << std::endl); |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 288 | return RETURN_UNIQUE_PTR(func); |
giuros01 | acce504 | 2019-02-21 17:32:34 +0000 | [diff] [blame] | 289 | } |
| 290 | |
Manuel Bottini | d2048ce | 2018-10-23 17:00:42 +0100 | [diff] [blame] | 291 | /** Create a backend bounding box transform layer function |
| 292 | * |
| 293 | * @tparam BoundingBoxTransformLayerFunction Backend bounding box transform function |
| 294 | * @tparam TargetInfo Target-specific information |
| 295 | * |
| 296 | * @param[in] node Node to create the backend function for |
| 297 | * |
| 298 | * @return Backend bounding box transform layer function |
| 299 | */ |
| 300 | template <typename BoundingBoxTransformLayerFunction, typename TargetInfo> |
| 301 | std::unique_ptr<IFunction> create_bounding_box_transform_layer(BoundingBoxTransformLayerNode &node) |
| 302 | { |
| 303 | validate_node<TargetInfo>(node, 2 /* expected inputs */, 1 /* expected outputs */); |
| 304 | |
| 305 | // Extract IO and info |
| 306 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 307 | typename TargetInfo::TensorType *deltas = get_backing_tensor<TargetInfo>(node.input(1)); |
| 308 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 309 | const BoundingBoxTransformInfo bbox_info = node.info(); |
| 310 | |
| 311 | // Create and configure function |
| 312 | auto func = support::cpp14::make_unique<BoundingBoxTransformLayerFunction>(); |
| 313 | func->configure(input, output, deltas, bbox_info); |
| 314 | |
| 315 | // Log info |
Isabella Gottardi | 0ae5de9 | 2019-03-14 10:32:11 +0000 | [diff] [blame] | 316 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 317 | << node.name() |
| 318 | << " Type: " << node.type() |
| 319 | << " Target: " << TargetInfo::TargetType |
Manuel Bottini | d2048ce | 2018-10-23 17:00:42 +0100 | [diff] [blame] | 320 | << " Data Type: " << input->info()->data_type() |
| 321 | << " Shape: " << input->info()->tensor_shape() |
| 322 | << " BoundingBox Info img W: " << bbox_info.img_width() << " " |
| 323 | << " BoundingBox Info img H: " << bbox_info.img_height() << " " |
| 324 | << std::endl); |
| 325 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 326 | return RETURN_UNIQUE_PTR(func); |
Manuel Bottini | d2048ce | 2018-10-23 17:00:42 +0100 | [diff] [blame] | 327 | } |
| 328 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 329 | /** Create a backend channel shuffle layer function |
| 330 | * |
| 331 | * @tparam ChannelShuffleLayerFunction Backend channel shuffle function |
| 332 | * @tparam TargetInfo Target-specific information |
| 333 | * |
| 334 | * @param[in] node Node to create the backend function for |
| 335 | * |
| 336 | * @return Backend channel shuffle layer function |
| 337 | */ |
| 338 | template <typename ChannelShuffleLayerFunction, typename TargetInfo> |
| 339 | std::unique_ptr<IFunction> create_channel_shuffle_layer(ChannelShuffleLayerNode &node) |
| 340 | { |
| 341 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 342 | |
| 343 | // Extract IO and info |
| 344 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 345 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 346 | const unsigned int num_groups = node.num_groups(); |
| 347 | |
| 348 | // Create function |
| 349 | auto func = support::cpp14::make_unique<ChannelShuffleLayerFunction>(); |
| 350 | func->configure(input, output, num_groups); |
| 351 | |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 352 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 353 | << node.name() |
| 354 | << " Type: " << node.type() |
| 355 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 356 | << " Data Type: " << input->info()->data_type() |
| 357 | << " Shape: " << input->info()->tensor_shape() |
| 358 | << " Num groups: " << num_groups |
| 359 | << std::endl); |
| 360 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 361 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 362 | } |
| 363 | |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 364 | /** Create a backend layer concatenate function |
| 365 | * |
| 366 | * @tparam ConcatenateLayerFunction Backend concatenate function |
| 367 | * @tparam TargetInfo Target-specific information |
| 368 | * |
| 369 | * @param[in] node Node to create the backend function for |
| 370 | * |
| 371 | * @return Backend concatenate layer function |
| 372 | */ |
| 373 | template <typename ConcatenateLayerFunction, typename TargetInfo> |
| 374 | std::unique_ptr<arm_compute::IFunction> create_concatenate_layer(ConcatenateLayerNode &node) |
| 375 | { |
| 376 | ARM_COMPUTE_LOG_GRAPH_VERBOSE("Creating Concatenate node with ID : " << node.id() << " and Name: " << node.name() << std::endl); |
| 377 | ARM_COMPUTE_ERROR_ON(node.num_outputs() != 1); |
| 378 | |
| 379 | // Return nullptr if depth concatenate is switched off |
| 380 | if(!node.is_enabled()) |
| 381 | { |
| 382 | return nullptr; |
| 383 | } |
| 384 | |
| 385 | // Extract IO and info |
| 386 | std::vector<typename TargetInfo::TensorType *> inputs; |
| 387 | for(unsigned int i = 0; i < node.num_inputs(); ++i) |
| 388 | { |
| 389 | inputs.push_back(get_backing_tensor<TargetInfo>(node.input(i))); |
| 390 | } |
| 391 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
Georgios Pinitas | 9e4824c | 2019-04-12 13:15:58 +0100 | [diff] [blame] | 392 | const DataLayout data_layout = node.output(0) != nullptr ? node.output(0)->desc().layout : DataLayout::UNKNOWN; |
| 393 | const size_t concat_axis = get_dimension_idx(data_layout, node.concatenation_axis()); |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 394 | |
| 395 | // Create and configure function |
| 396 | auto func = support::cpp14::make_unique<ConcatenateLayerFunction>(); |
| 397 | func->configure(inputs, output, concat_axis); |
| 398 | |
| 399 | // Log info |
Isabella Gottardi | 0ae5de9 | 2019-03-14 10:32:11 +0000 | [diff] [blame] | 400 | const bool is_quantized = is_data_type_quantized_asymmetric(output->info()->data_type()); |
| 401 | std::ostringstream qss; |
| 402 | if(is_quantized) |
| 403 | { |
| 404 | qss << " Output QuantInfo: " << output->info()->quantization_info(); |
| 405 | } |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 406 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 407 | << node.name() |
| 408 | << " Type: " << node.type() |
| 409 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 410 | << " Data Type: " << output->info()->data_type() |
| 411 | << " Shape: " << output->info()->tensor_shape() |
| 412 | << " Num Inputs: " << inputs.size() |
| 413 | << " Axis: " << concat_axis |
Isabella Gottardi | 0ae5de9 | 2019-03-14 10:32:11 +0000 | [diff] [blame] | 414 | << qss.str() |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 415 | << std::endl); |
| 416 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 417 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 418 | } |
| 419 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 420 | /** Create a backend convolution layer function |
| 421 | * |
| 422 | * @tparam ConvolutionLayerFunctions Backend convolution functions |
| 423 | * @tparam TargetInfo Target-specific information |
| 424 | * |
| 425 | * @param[in] node Node to create the backend function for |
| 426 | * @param[in] ctx Graph context |
| 427 | * |
| 428 | * @return Backend convolution layer function |
| 429 | */ |
| 430 | template <typename ConvolutionLayerFunctions, typename TargetInfo> |
| 431 | std::unique_ptr<IFunction> create_convolution_layer(ConvolutionLayerNode &node, GraphContext &ctx) |
| 432 | { |
| 433 | validate_node<TargetInfo>(node, 3 /* expected inputs */, 1 /* expected outputs */); |
| 434 | |
| 435 | // Extract IO and info |
| 436 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 437 | typename TargetInfo::TensorType *weights = get_backing_tensor<TargetInfo>(node.input(1)); |
| 438 | typename TargetInfo::TensorType *biases = get_backing_tensor<TargetInfo>(node.input(2)); |
| 439 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 440 | |
Georgios Pinitas | fd7e853 | 2018-09-07 10:51:27 +0100 | [diff] [blame] | 441 | const bool is_quantized = is_data_type_quantized_asymmetric(input->info()->data_type()); |
| 442 | |
| 443 | if(is_quantized) |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 444 | { |
| 445 | biases->info()->set_data_type(DataType::S32); |
| 446 | } |
| 447 | |
Georgios Pinitas | 08346e9 | 2018-10-16 19:10:46 +0100 | [diff] [blame] | 448 | const PadStrideInfo conv_info = node.convolution_info(); |
| 449 | const unsigned int num_groups = node.num_groups(); |
| 450 | const ConvolutionMethod conv_algorithm = node.convolution_method(); |
| 451 | const bool fast_math = node.fast_math_hint() == FastMathHint::Enabled; |
| 452 | const ActivationLayerInfo fused_act = node.fused_activation(); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 453 | |
| 454 | // Create and configure function (we assume that functions have been validated before creation) |
| 455 | std::shared_ptr<IMemoryManager> mm = get_memory_manager(ctx, TargetInfo::TargetType); |
| 456 | std::unique_ptr<IFunction> func; |
| 457 | std::string func_name; |
| 458 | |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 459 | if(conv_algorithm == ConvolutionMethod::Winograd) |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 460 | { |
Georgios Pinitas | 2a2db59 | 2018-08-15 12:14:46 +0100 | [diff] [blame] | 461 | ARM_COMPUTE_ERROR_ON_MSG(num_groups != 1, "WinogradConvolutionLayer does not support grouping!"); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 462 | std::tie(func, func_name) = create_named_memory_managed_function<typename ConvolutionLayerFunctions::WinogradConvolutionLayer>( |
| 463 | std::string("WinogradConvolutionLayer"), mm, |
Georgios Pinitas | 08346e9 | 2018-10-16 19:10:46 +0100 | [diff] [blame] | 464 | input, weights, biases, output, conv_info, fused_act, fast_math); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 465 | } |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 466 | else if(conv_algorithm == ConvolutionMethod::Direct) |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 467 | { |
Georgios Pinitas | 2a2db59 | 2018-08-15 12:14:46 +0100 | [diff] [blame] | 468 | ARM_COMPUTE_ERROR_ON_MSG(num_groups != 1, "DirectConvolutionLayer does not support grouping!"); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 469 | std::tie(func, func_name) = create_named_function<typename ConvolutionLayerFunctions::DirectConvolutionLayer>( |
| 470 | std::string("DirectConvolutionLayer"), |
Georgios Pinitas | 08346e9 | 2018-10-16 19:10:46 +0100 | [diff] [blame] | 471 | input, weights, biases, output, conv_info, fused_act); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 472 | } |
| 473 | else if(conv_algorithm == ConvolutionMethod::GEMM) |
| 474 | { |
| 475 | std::tie(func, func_name) = create_named_memory_managed_function<typename ConvolutionLayerFunctions::GEMMConvolutionLayer>( |
| 476 | std::string("GEMMConvolutionLayer"), mm, |
Georgios Pinitas | 2a2db59 | 2018-08-15 12:14:46 +0100 | [diff] [blame] | 477 | input, weights, biases, output, conv_info, |
Georgios Pinitas | 08346e9 | 2018-10-16 19:10:46 +0100 | [diff] [blame] | 478 | WeightsInfo(), Size2D(1U, 1U), fused_act, num_groups); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 479 | } |
| 480 | else |
| 481 | { |
| 482 | std::tie(func, func_name) = create_named_memory_managed_function<typename ConvolutionLayerFunctions::GenericConvolutionLayer>( |
| 483 | std::string("GenericConvolutionLayer"), mm, |
Georgios Pinitas | 2a2db59 | 2018-08-15 12:14:46 +0100 | [diff] [blame] | 484 | input, weights, biases, output, conv_info, |
Georgios Pinitas | 08346e9 | 2018-10-16 19:10:46 +0100 | [diff] [blame] | 485 | WeightsInfo(), Size2D(1U, 1U), fused_act, fast_math, num_groups); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 486 | } |
| 487 | |
| 488 | // Log info |
Georgios Pinitas | fd7e853 | 2018-09-07 10:51:27 +0100 | [diff] [blame] | 489 | std::ostringstream qss; |
| 490 | if(is_quantized) |
| 491 | { |
| 492 | qss << " Input QuantInfo: " << input->info()->quantization_info() |
| 493 | << " Weights QuantInfo: " << weights->info()->quantization_info() |
| 494 | << " Output QuantInfo: " << output->info()->quantization_info(); |
| 495 | } |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 496 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 497 | << node.name() |
| 498 | << " Type: " << func_name |
| 499 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 500 | << " Data Type: " << input->info()->data_type() |
Georgios Pinitas | 2a2db59 | 2018-08-15 12:14:46 +0100 | [diff] [blame] | 501 | << " Groups: " << num_groups |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 502 | << " Input shape: " << input->info()->tensor_shape() |
| 503 | << " Weights shape: " << weights->info()->tensor_shape() |
| 504 | << " Output shape: " << output->info()->tensor_shape() |
Isabella Gottardi | 0ae5de9 | 2019-03-14 10:32:11 +0000 | [diff] [blame] | 505 | << qss.str() |
Georgios Pinitas | 08346e9 | 2018-10-16 19:10:46 +0100 | [diff] [blame] | 506 | << (fused_act.enabled() ? " " + to_string(fused_act.activation()) : "") |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 507 | << std::endl); |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 508 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 509 | } |
| 510 | |
| 511 | /** Create a backend deconvolution layer function |
| 512 | * |
| 513 | * @tparam DeconvolutionLayerFunction Backend deconvolution function |
| 514 | * @tparam TargetInfo Target-specific information |
| 515 | * |
| 516 | * @param[in] node Node to create the backend function for |
| 517 | * @param[in] ctx Graph context |
| 518 | * |
| 519 | * @return Backend deconvolution layer function |
| 520 | */ |
| 521 | template <typename DeconvolutionLayerFunction, typename TargetInfo> |
| 522 | std::unique_ptr<IFunction> create_deconvolution_layer(DeconvolutionLayerNode &node, GraphContext &ctx) |
| 523 | { |
| 524 | validate_node<TargetInfo>(node, 3 /* expected inputs */, 1 /* expected outputs */); |
| 525 | |
| 526 | // Extract IO and info |
| 527 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 528 | typename TargetInfo::TensorType *weights = get_backing_tensor<TargetInfo>(node.input(1)); |
| 529 | typename TargetInfo::TensorType *biases = get_backing_tensor<TargetInfo>(node.input(2)); |
| 530 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 531 | |
Manuel Bottini | c1b76fa | 2019-06-17 12:04:40 +0100 | [diff] [blame] | 532 | const PadStrideInfo deconv_info = node.deconvolution_info(); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 533 | |
| 534 | // Create and configure function (we assume that functions have been validated before creation) |
| 535 | std::shared_ptr<IMemoryManager> mm = get_memory_manager(ctx, TargetInfo::TargetType); |
| 536 | std::unique_ptr<IFunction> func; |
| 537 | |
| 538 | std::tie(func, std::ignore) = create_named_memory_managed_function<DeconvolutionLayerFunction>( |
| 539 | std::string(), mm, |
Manuel Bottini | c1b76fa | 2019-06-17 12:04:40 +0100 | [diff] [blame] | 540 | input, weights, biases, output, deconv_info); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 541 | |
| 542 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 543 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 544 | << node.name() |
| 545 | << " Type: " << node.type() |
| 546 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 547 | << " Data Type: " << input->info()->data_type() |
| 548 | << " Input shape: " << input->info()->tensor_shape() |
| 549 | << " Weights shape: " << weights->info()->tensor_shape() |
| 550 | << " Output shape: " << output->info()->tensor_shape() |
| 551 | << std::endl); |
| 552 | return func; |
| 553 | } |
| 554 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 555 | /** Create a backend layer depth-wise convolution function |
| 556 | * |
| 557 | * @tparam DepthwiseConvolutionLayerFunctions Backend depthwise convolution function |
| 558 | * @tparam TargetInfo Target-specific information |
| 559 | * |
| 560 | * @param[in] node Node to create the backend function for |
| 561 | * |
| 562 | * @return Backend depth-wise convolution layer function |
| 563 | */ |
Manuel Bottini | 05069f0 | 2019-09-26 17:18:26 +0100 | [diff] [blame] | 564 | template <typename DepthwiseConvolutionLayer, typename TargetInfo> |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 565 | std::unique_ptr<IFunction> create_depthwise_convolution_layer(DepthwiseConvolutionLayerNode &node) |
| 566 | { |
| 567 | validate_node<TargetInfo>(node, 3 /* expected inputs */, 1 /* expected outputs */); |
| 568 | |
| 569 | // Extract IO and info |
| 570 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 571 | typename TargetInfo::TensorType *weights = get_backing_tensor<TargetInfo>(node.input(1)); |
| 572 | typename TargetInfo::TensorType *biases = get_backing_tensor<TargetInfo>(node.input(2)); |
| 573 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 574 | |
Georgios Pinitas | fd7e853 | 2018-09-07 10:51:27 +0100 | [diff] [blame] | 575 | const bool is_quantized = is_data_type_quantized_asymmetric(input->info()->data_type()); |
| 576 | |
| 577 | if(is_quantized) |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 578 | { |
| 579 | biases->info()->set_data_type(DataType::S32); |
| 580 | } |
| 581 | |
Manuel Bottini | 05069f0 | 2019-09-26 17:18:26 +0100 | [diff] [blame] | 582 | const PadStrideInfo conv_info = node.convolution_info(); |
| 583 | const unsigned int depth_multiplier = node.depth_multiplier(); |
| 584 | const ActivationLayerInfo fused_act = node.fused_activation(); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 585 | |
| 586 | // Create and configure function (we assume that functions have been validated before creation) |
| 587 | std::unique_ptr<IFunction> func; |
| 588 | std::string func_name; |
Manuel Bottini | 05069f0 | 2019-09-26 17:18:26 +0100 | [diff] [blame] | 589 | |
| 590 | std::tie(func, func_name) = create_named_function<DepthwiseConvolutionLayer>( |
| 591 | std::string("DepthwiseConvolutionLayer"), |
| 592 | input, weights, biases, output, conv_info, depth_multiplier, fused_act); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 593 | |
| 594 | // Log info |
Georgios Pinitas | fd7e853 | 2018-09-07 10:51:27 +0100 | [diff] [blame] | 595 | std::ostringstream qss; |
| 596 | if(is_quantized) |
| 597 | { |
| 598 | qss << " Input QuantInfo: " << input->info()->quantization_info() |
| 599 | << " Weights QuantInfo: " << weights->info()->quantization_info() |
| 600 | << " Output QuantInfo: " << output->info()->quantization_info(); |
| 601 | } |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 602 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 603 | << node.name() |
| 604 | << " Type: " << func_name |
| 605 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 606 | << " Data Type: " << input->info()->data_type() |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 607 | << " Input shape: " << input->info()->tensor_shape() |
| 608 | << " Weights shape: " << weights->info()->tensor_shape() |
| 609 | << " Output shape: " << output->info()->tensor_shape() |
Georgios Pinitas | 05045c1 | 2018-12-07 18:31:47 +0000 | [diff] [blame] | 610 | << " Depth multiplier: " << depth_multiplier |
Isabella Gottardi | 0ae5de9 | 2019-03-14 10:32:11 +0000 | [diff] [blame] | 611 | << qss.str() |
Georgios Pinitas | 60e9825 | 2018-10-22 16:17:20 +0100 | [diff] [blame] | 612 | << (fused_act.enabled() ? " " + to_string(fused_act.activation()) : "") |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 613 | << std::endl); |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 614 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 615 | } |
| 616 | |
Isabella Gottardi | cd4e9ab | 2019-11-05 17:50:27 +0000 | [diff] [blame] | 617 | /** Create a backend dequantize layer function |
| 618 | * |
| 619 | * @tparam DequantizationLayer Function Backend dequantize function |
| 620 | * @tparam TargetInfo Target-specific information |
| 621 | * |
| 622 | * @param[in] node Node to create the backend function for |
| 623 | * |
| 624 | * @return Backend dequantize layer function |
| 625 | */ |
| 626 | template <typename DequantizationLayerFunction, typename TargetInfo> |
| 627 | std::unique_ptr<IFunction> create_dequantization_layer(DequantizationLayerNode &node) |
| 628 | { |
| 629 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 630 | |
| 631 | // Extract IO and info |
| 632 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 633 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 634 | |
| 635 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 636 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 637 | |
| 638 | // Create and configure function |
| 639 | auto func = support::cpp14::make_unique<DequantizationLayerFunction>(); |
| 640 | func->configure(input, output); |
| 641 | |
| 642 | // Log info |
| 643 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 644 | << node.name() |
| 645 | << " Type: " << node.type() |
| 646 | << " Target: " << TargetInfo::TargetType |
| 647 | << " Data Type: " << input->info()->data_type() |
| 648 | << " Input shape: " << input->info()->tensor_shape() |
| 649 | << " Input quantization info: " << output->info()->quantization_info() |
| 650 | << " Output shape: " << output->info()->tensor_shape() |
| 651 | << std::endl); |
| 652 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 653 | return RETURN_UNIQUE_PTR(func); |
Isabella Gottardi | cd4e9ab | 2019-11-05 17:50:27 +0000 | [diff] [blame] | 654 | } |
Isabella Gottardi | 7234ed8 | 2018-11-27 08:51:10 +0000 | [diff] [blame] | 655 | /** Create a backend detection output layer function |
| 656 | * |
| 657 | * @tparam DetectionOutputLayer Function Backend detection output function |
| 658 | * @tparam TargetInfo Target-specific information |
| 659 | * |
| 660 | * @param[in] node Node to create the backend function for |
| 661 | * |
| 662 | * @return Backend detection output layer function |
| 663 | */ |
| 664 | template <typename DetectionOutputLayerFunction, typename TargetInfo> |
| 665 | std::unique_ptr<IFunction> create_detection_output_layer(DetectionOutputLayerNode &node) |
| 666 | { |
| 667 | validate_node<TargetInfo>(node, 3 /* expected inputs */, 1 /* expected outputs */); |
| 668 | |
| 669 | // Extract IO and info |
| 670 | typename TargetInfo::TensorType *input0 = get_backing_tensor<TargetInfo>(node.input(0)); |
| 671 | typename TargetInfo::TensorType *input1 = get_backing_tensor<TargetInfo>(node.input(1)); |
| 672 | typename TargetInfo::TensorType *input2 = get_backing_tensor<TargetInfo>(node.input(2)); |
| 673 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 674 | const DetectionOutputLayerInfo detect_info = node.detection_output_info(); |
| 675 | |
| 676 | ARM_COMPUTE_ERROR_ON(input0 == nullptr); |
| 677 | ARM_COMPUTE_ERROR_ON(input1 == nullptr); |
| 678 | ARM_COMPUTE_ERROR_ON(input2 == nullptr); |
| 679 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 680 | |
| 681 | // Create and configure function |
| 682 | auto func = support::cpp14::make_unique<DetectionOutputLayerFunction>(); |
| 683 | func->configure(input0, input1, input2, output, detect_info); |
| 684 | |
| 685 | // Log info |
| 686 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 687 | << node.name() |
| 688 | << " Type: " << node.type() |
| 689 | << " Target: " << TargetInfo::TargetType |
| 690 | << " Data Type: " << input0->info()->data_type() |
| 691 | << " Input0 shape: " << input0->info()->tensor_shape() |
| 692 | << " Input1 shape: " << input1->info()->tensor_shape() |
| 693 | << " Input2 shape: " << input2->info()->tensor_shape() |
| 694 | << " Output shape: " << output->info()->tensor_shape() |
| 695 | << " DetectionOutputLayer info: " << detect_info |
| 696 | << std::endl); |
| 697 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 698 | return RETURN_UNIQUE_PTR(func); |
Isabella Gottardi | 7234ed8 | 2018-11-27 08:51:10 +0000 | [diff] [blame] | 699 | } |
Isabella Gottardi | a7acb3c | 2019-01-08 13:48:44 +0000 | [diff] [blame] | 700 | |
| 701 | /** Create a backend detection post process layer function |
| 702 | * |
| 703 | * @tparam DetectionPostProcessLayerFunction Backend detection output function |
| 704 | * @tparam TargetInfo Target-specific information |
| 705 | * |
| 706 | * @param[in] node Node to create the backend function for |
| 707 | * |
| 708 | * @return Backend detection post process layer function |
| 709 | */ |
| 710 | template <typename DetectionPostProcessLayerFunction, typename TargetInfo> |
| 711 | std::unique_ptr<IFunction> create_detection_post_process_layer(DetectionPostProcessLayerNode &node) |
| 712 | { |
| 713 | validate_node<TargetInfo>(node, 3 /* expected inputs */, 4 /* expected outputs */); |
| 714 | |
| 715 | // Extract IO and info |
| 716 | typename TargetInfo::TensorType *input0 = get_backing_tensor<TargetInfo>(node.input(0)); |
| 717 | typename TargetInfo::TensorType *input1 = get_backing_tensor<TargetInfo>(node.input(1)); |
| 718 | typename TargetInfo::TensorType *input2 = get_backing_tensor<TargetInfo>(node.input(2)); |
| 719 | typename TargetInfo::TensorType *output0 = get_backing_tensor<TargetInfo>(node.output(0)); |
| 720 | typename TargetInfo::TensorType *output1 = get_backing_tensor<TargetInfo>(node.output(1)); |
| 721 | typename TargetInfo::TensorType *output2 = get_backing_tensor<TargetInfo>(node.output(2)); |
| 722 | typename TargetInfo::TensorType *output3 = get_backing_tensor<TargetInfo>(node.output(3)); |
| 723 | const DetectionPostProcessLayerInfo detect_info = node.detection_post_process_info(); |
| 724 | |
| 725 | ARM_COMPUTE_ERROR_ON(input0 == nullptr); |
| 726 | ARM_COMPUTE_ERROR_ON(input1 == nullptr); |
| 727 | ARM_COMPUTE_ERROR_ON(input2 == nullptr); |
| 728 | ARM_COMPUTE_ERROR_ON(output0 == nullptr); |
| 729 | ARM_COMPUTE_ERROR_ON(output1 == nullptr); |
| 730 | ARM_COMPUTE_ERROR_ON(output2 == nullptr); |
| 731 | ARM_COMPUTE_ERROR_ON(output3 == nullptr); |
| 732 | |
| 733 | // Create and configure function |
| 734 | auto func = support::cpp14::make_unique<DetectionPostProcessLayerFunction>(); |
| 735 | func->configure(input0, input1, input2, output0, output1, output2, output3, detect_info); |
| 736 | |
| 737 | // Log info |
| 738 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 739 | << node.name() |
| 740 | << " Type: " << node.type() |
| 741 | << " Target: " << TargetInfo::TargetType |
| 742 | << " Data Type: " << input0->info()->data_type() |
| 743 | << " Input0 shape: " << input0->info()->tensor_shape() |
| 744 | << " Input1 shape: " << input1->info()->tensor_shape() |
| 745 | << " Input2 shape: " << input2->info()->tensor_shape() |
| 746 | << " Output0 shape: " << output0->info()->tensor_shape() |
| 747 | << " Output1 shape: " << output1->info()->tensor_shape() |
| 748 | << " Output2 shape: " << output2->info()->tensor_shape() |
| 749 | << " Output3 shape: " << output3->info()->tensor_shape() |
| 750 | << " DetectionPostProcessLayer info: " << detect_info |
| 751 | << std::endl); |
| 752 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 753 | return RETURN_UNIQUE_PTR(func); |
Isabella Gottardi | a7acb3c | 2019-01-08 13:48:44 +0000 | [diff] [blame] | 754 | } |
| 755 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 756 | /** Create a backend element-wise operation layer function |
| 757 | * |
| 758 | * @tparam EltwiseFunctions Backend element-wise function |
| 759 | * @tparam TargetInfo Target-specific information |
| 760 | * |
| 761 | * @param[in] node Node to create the backend function for |
| 762 | * |
| 763 | * @return Backend element-wise operation layer function |
| 764 | */ |
| 765 | template <typename EltwiseFunctions, typename TargetInfo> |
| 766 | std::unique_ptr<IFunction> create_eltwise_layer(EltwiseLayerNode &node) |
| 767 | { |
| 768 | validate_node<TargetInfo>(node, 2 /* expected inputs */, 1 /* expected outputs */); |
| 769 | |
| 770 | // Extract IO and info |
| 771 | typename TargetInfo::TensorType *input1 = get_backing_tensor<TargetInfo>(node.input(0)); |
| 772 | typename TargetInfo::TensorType *input2 = get_backing_tensor<TargetInfo>(node.input(1)); |
| 773 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 774 | const EltwiseOperation eltwise_op = node.eltwise_operation(); |
| 775 | const ConvertPolicy convert_policy = node.convert_policy(); |
Giorgio Arena | 8b2a7d3 | 2020-02-11 17:21:31 +0000 | [diff] [blame] | 776 | const ActivationLayerInfo act_info = node.fused_activation(); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 777 | ARM_COMPUTE_ERROR_ON(input1 == nullptr); |
| 778 | ARM_COMPUTE_ERROR_ON(input2 == nullptr); |
| 779 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 780 | |
| 781 | std::unique_ptr<IFunction> func = nullptr; |
| 782 | std::string func_name; |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 783 | if(eltwise_op == EltwiseOperation::Add) |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 784 | { |
| 785 | std::tie(func, func_name) = create_named_function<typename EltwiseFunctions::Addition>( |
| 786 | std::string("ArithmeticAddition"), |
Giorgio Arena | 8b2a7d3 | 2020-02-11 17:21:31 +0000 | [diff] [blame] | 787 | input1, input2, output, convert_policy, act_info); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 788 | } |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 789 | else if(eltwise_op == EltwiseOperation::Sub) |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 790 | { |
| 791 | std::tie(func, func_name) = create_named_function<typename EltwiseFunctions::Subtraction>( |
| 792 | std::string("ArithmeticSubtraction"), |
Giorgio Arena | 8b2a7d3 | 2020-02-11 17:21:31 +0000 | [diff] [blame] | 793 | input1, input2, output, convert_policy, act_info); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 794 | } |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 795 | else if(eltwise_op == EltwiseOperation::Mul) |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 796 | { |
| 797 | std::tie(func, func_name) = create_named_function<typename EltwiseFunctions::Multiplication>( |
| 798 | std::string("PixelWiseMultiplication"), |
Giorgio Arena | 8b2a7d3 | 2020-02-11 17:21:31 +0000 | [diff] [blame] | 799 | input1, input2, output, 1.f, convert_policy, node.rounding_policy(), act_info); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 800 | } |
| 801 | else |
| 802 | { |
| 803 | ARM_COMPUTE_ERROR("Unsupported element-wise operation!"); |
| 804 | } |
| 805 | |
| 806 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 807 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 808 | << node.name() |
| 809 | << " Type: " << node.type() |
| 810 | << " Target: " << TargetInfo::TargetType |
| 811 | << " Operation: " << func_name |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 812 | << " Data Type: " << input1->info()->data_type() |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 813 | << " Shape: " << input1->info()->tensor_shape() |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 814 | << std::endl); |
| 815 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 816 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 817 | } |
| 818 | |
| 819 | /** Create a backend flatten layer function |
| 820 | * |
| 821 | * @tparam FlattenLayerFunction Backend flatten function |
| 822 | * @tparam TargetInfo Target-specific information |
| 823 | * |
| 824 | * @param[in] node Node to create the backend function for |
| 825 | * |
| 826 | * @return Backend flatten layer function |
| 827 | */ |
| 828 | template <typename FlattenLayerFunction, typename TargetInfo> |
| 829 | std::unique_ptr<IFunction> create_flatten_layer(FlattenLayerNode &node) |
| 830 | { |
| 831 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 832 | |
| 833 | // Extract IO and info |
| 834 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 835 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 836 | |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 837 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 838 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 839 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 840 | // Create and configure function |
| 841 | auto func = support::cpp14::make_unique<FlattenLayerFunction>(); |
| 842 | func->configure(input, output); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 843 | |
| 844 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 845 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 846 | << node.name() |
| 847 | << " Type: " << node.type() |
| 848 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 849 | << " Data Type: " << input->info()->data_type() |
| 850 | << " Input shape: " << input->info()->tensor_shape() |
| 851 | << " Output shape: " << output->info()->tensor_shape() |
| 852 | << std::endl); |
| 853 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 854 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 855 | } |
| 856 | |
| 857 | /** Create a backend fully connected layer function |
| 858 | * |
| 859 | * @tparam FullyConnectedLayerFunction Backend fully-connected function |
| 860 | * @tparam TargetInfo Target-specific information |
| 861 | * |
| 862 | * @param[in] node Node to create the backend function for |
| 863 | * @param[in] ctx Graph context |
| 864 | * |
| 865 | * @return Backend fully connected layer function |
| 866 | */ |
| 867 | template <typename FullyConnectedLayerFunction, typename TargetInfo> |
| 868 | std::unique_ptr<IFunction> create_fully_connected_layer(FullyConnectedLayerNode &node, GraphContext &ctx) |
| 869 | { |
| 870 | validate_node<TargetInfo>(node, 3 /* expected inputs */, 1 /* expected outputs */); |
| 871 | |
| 872 | // Extract IO and info |
| 873 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 874 | typename TargetInfo::TensorType *weights = get_backing_tensor<TargetInfo>(node.input(1)); |
| 875 | typename TargetInfo::TensorType *biases = get_backing_tensor<TargetInfo>(node.input(2)); |
| 876 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
Georgios Pinitas | 7d66a8e | 2018-07-17 12:28:42 +0100 | [diff] [blame] | 877 | const FullyConnectedLayerInfo fc_info = node.info(); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 878 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 879 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 880 | ARM_COMPUTE_ERROR_ON(weights == nullptr); |
| 881 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 882 | |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 883 | // Create and configure function |
Michalis Spyrou | 1a569a3 | 2019-09-10 17:20:34 +0100 | [diff] [blame] | 884 | auto wm = get_weights_manager(ctx, TargetInfo::TargetType); |
| 885 | auto mm = get_memory_manager(ctx, TargetInfo::TargetType); |
| 886 | auto func = support::cpp14::make_unique<FullyConnectedLayerFunction>(mm, wm.get()); |
Georgios Pinitas | e222055 | 2018-07-20 13:23:44 +0100 | [diff] [blame] | 887 | func->configure(input, weights, biases, output, fc_info); |
| 888 | |
Georgios Pinitas | fd7e853 | 2018-09-07 10:51:27 +0100 | [diff] [blame] | 889 | const bool is_quantized = is_data_type_quantized_asymmetric(input->info()->data_type()); |
| 890 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 891 | // Log info |
Georgios Pinitas | fd7e853 | 2018-09-07 10:51:27 +0100 | [diff] [blame] | 892 | std::ostringstream qss; |
| 893 | if(is_quantized) |
| 894 | { |
| 895 | qss << " Input QuantInfo: " << input->info()->quantization_info() |
| 896 | << " Weights QuantInfo: " << weights->info()->quantization_info() |
| 897 | << " Output QuantInfo: " << output->info()->quantization_info(); |
| 898 | } |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 899 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 900 | << node.name() |
| 901 | << " Type: " << node.type() |
| 902 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 903 | << " Data Type: " << input->info()->data_type() |
Georgios Pinitas | fd7e853 | 2018-09-07 10:51:27 +0100 | [diff] [blame] | 904 | << qss.str() |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 905 | << " Input shape: " << input->info()->tensor_shape() |
| 906 | << " Weights shape: " << weights->info()->tensor_shape() |
| 907 | << " Output shape: " << output->info()->tensor_shape() |
| 908 | << std::endl); |
| 909 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 910 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 911 | } |
| 912 | |
Manuel Bottini | 5209be5 | 2019-02-13 16:34:56 +0000 | [diff] [blame] | 913 | /** Create a backend generate proposals layer function |
| 914 | * |
| 915 | * @tparam GenerateProposalsLayerFunction Backend generate proposals function |
| 916 | * @tparam TargetInfo Target-specific information |
| 917 | * |
| 918 | * @param[in] node Node to create the backend function for |
| 919 | * @param[in] ctx Graph context |
| 920 | * |
| 921 | * @return Backend generate proposals layer function |
| 922 | */ |
| 923 | template <typename GenerateProposalsLayerFunction, typename TargetInfo> |
| 924 | std::unique_ptr<IFunction> create_generate_proposals_layer(GenerateProposalsLayerNode &node, GraphContext &ctx) |
| 925 | { |
| 926 | validate_node<TargetInfo>(node, 3 /* expected inputs */, 3 /* expected outputs */); |
| 927 | |
| 928 | // Extract IO and info |
| 929 | typename TargetInfo::TensorType *scores = get_backing_tensor<TargetInfo>(node.input(0)); |
| 930 | typename TargetInfo::TensorType *deltas = get_backing_tensor<TargetInfo>(node.input(1)); |
| 931 | typename TargetInfo::TensorType *anchors = get_backing_tensor<TargetInfo>(node.input(2)); |
| 932 | typename TargetInfo::TensorType *proposals = get_backing_tensor<TargetInfo>(node.output(0)); |
| 933 | typename TargetInfo::TensorType *scores_out = get_backing_tensor<TargetInfo>(node.output(1)); |
| 934 | typename TargetInfo::TensorType *num_valid_proposals = get_backing_tensor<TargetInfo>(node.output(2)); |
| 935 | const GenerateProposalsInfo info = node.info(); |
| 936 | |
| 937 | ARM_COMPUTE_ERROR_ON(scores == nullptr); |
| 938 | ARM_COMPUTE_ERROR_ON(deltas == nullptr); |
| 939 | ARM_COMPUTE_ERROR_ON(anchors == nullptr); |
| 940 | ARM_COMPUTE_ERROR_ON(proposals == nullptr); |
| 941 | ARM_COMPUTE_ERROR_ON(scores_out == nullptr); |
| 942 | |
| 943 | // Create and configure function |
| 944 | auto func = support::cpp14::make_unique<GenerateProposalsLayerFunction>(get_memory_manager(ctx, TargetInfo::TargetType)); |
| 945 | func->configure(scores, deltas, anchors, proposals, scores_out, num_valid_proposals, info); |
| 946 | |
| 947 | // Log info |
| 948 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " << node.type() |
| 949 | << " Target " << TargetInfo::TargetType |
| 950 | << " Data Type: " << scores->info()->data_type() |
| 951 | << " Scores shape: " << scores->info()->tensor_shape() |
| 952 | << " Deltas shape: " << deltas->info()->tensor_shape() |
| 953 | << " Anchors shape: " << anchors->info()->tensor_shape() |
| 954 | << " Proposals shape: " << proposals->info()->tensor_shape() |
| 955 | << " Num valid proposals shape: " << num_valid_proposals->info()->tensor_shape() |
| 956 | << " Scores Out shape: " << scores_out->info()->tensor_shape() |
| 957 | << std::endl); |
| 958 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 959 | return RETURN_UNIQUE_PTR(func); |
Manuel Bottini | 5209be5 | 2019-02-13 16:34:56 +0000 | [diff] [blame] | 960 | } |
| 961 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 962 | /** Create a backend normalization layer function |
| 963 | * |
| 964 | * @tparam NormalizationLayerFunction Backend normalization function |
| 965 | * @tparam TargetInfo Target-specific information |
| 966 | * |
| 967 | * @param[in] node Node to create the backend function for |
| 968 | * @param[in] ctx Graph context |
| 969 | * |
| 970 | * @return Backend normalization layer function |
| 971 | */ |
| 972 | template <typename NormalizationLayerFunction, typename TargetInfo> |
| 973 | std::unique_ptr<IFunction> create_normalization_layer(NormalizationLayerNode &node, GraphContext &ctx) |
| 974 | { |
| 975 | ARM_COMPUTE_UNUSED(ctx); |
| 976 | |
| 977 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 978 | |
| 979 | // Extract IO and info |
| 980 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 981 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 982 | const NormalizationLayerInfo norm_info = node.normalization_info(); |
| 983 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 984 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 985 | |
| 986 | // Create and configure function |
| 987 | auto func = support::cpp14::make_unique<NormalizationLayerFunction>(); |
| 988 | func->configure(input, output, norm_info); |
| 989 | |
| 990 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 991 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 992 | << node.name() |
| 993 | << " Type: " << node.type() |
| 994 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 995 | << " Data Type: " << input->info()->data_type() |
| 996 | << " Input shape: " << input->info()->tensor_shape() |
| 997 | << " Output shape: " << output->info()->tensor_shape() |
| 998 | << " Normalization info: " << norm_info.type() |
| 999 | << std::endl); |
| 1000 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1001 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1002 | } |
| 1003 | |
Michele Di Giorgio | 555d110 | 2018-09-12 13:51:59 +0100 | [diff] [blame] | 1004 | /** Create a backend normalize planar YUV layer function |
| 1005 | * |
| 1006 | * @tparam NormalizePlanarYUVLayerFunction Backend normalize planar YUV function |
| 1007 | * @tparam TargetInfo Target-specific information |
| 1008 | * |
| 1009 | * @param[in] node Node to create the backend function for |
| 1010 | * |
| 1011 | * @return Backend normalize plnar YUV layer function |
| 1012 | */ |
| 1013 | template <typename NormalizePlanarYUVLayerFunction, typename TargetInfo> |
| 1014 | std::unique_ptr<IFunction> create_normalize_planar_yuv_layer(NormalizePlanarYUVLayerNode &node) |
| 1015 | { |
| 1016 | validate_node<TargetInfo>(node, 3 /* expected inputs */, 1 /* expected outputs */); |
| 1017 | |
| 1018 | // Extract IO and info |
| 1019 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1020 | typename TargetInfo::TensorType *mean = get_backing_tensor<TargetInfo>(node.input(1)); |
| 1021 | typename TargetInfo::TensorType *std = get_backing_tensor<TargetInfo>(node.input(2)); |
| 1022 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1023 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1024 | ARM_COMPUTE_ERROR_ON(mean == nullptr); |
| 1025 | ARM_COMPUTE_ERROR_ON(std == nullptr); |
| 1026 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1027 | |
| 1028 | // Create and configure function |
| 1029 | auto func = support::cpp14::make_unique<NormalizePlanarYUVLayerFunction>(); |
| 1030 | func->configure(input, output, mean, std); |
| 1031 | |
| 1032 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1033 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1034 | << node.name() |
| 1035 | << " Type: " << node.type() |
| 1036 | << " Target: " << TargetInfo::TargetType |
Michele Di Giorgio | 555d110 | 2018-09-12 13:51:59 +0100 | [diff] [blame] | 1037 | << " Data Type: " << input->info()->data_type() |
| 1038 | << " Shape: " << input->info()->tensor_shape() |
| 1039 | << std::endl); |
| 1040 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1041 | return RETURN_UNIQUE_PTR(func); |
Michele Di Giorgio | 555d110 | 2018-09-12 13:51:59 +0100 | [diff] [blame] | 1042 | } |
| 1043 | |
Michele Di Giorgio | 4bb1733 | 2018-09-26 13:56:51 +0100 | [diff] [blame] | 1044 | /** Create a backend pad layer function |
| 1045 | * |
| 1046 | * @tparam PadLayerFunction Backend pad function |
| 1047 | * @tparam TargetInfo Target-specific information |
| 1048 | * |
| 1049 | * @param[in] node Node to create the backend function for |
| 1050 | * |
| 1051 | * @return Backend pad layer function |
| 1052 | */ |
| 1053 | template <typename PadLayerFunction, typename TargetInfo> |
| 1054 | std::unique_ptr<IFunction> create_pad_layer(PadLayerNode &node) |
| 1055 | { |
| 1056 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1057 | |
| 1058 | // Extract IO and info |
Georgios Pinitas | 102b0ce | 2020-02-13 17:59:09 +0000 | [diff] [blame] | 1059 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1060 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1061 | const PaddingList &padding = node.padding(); |
| 1062 | const PixelValue pad_value = node.pad_value(); |
Michele Di Giorgio | 4bb1733 | 2018-09-26 13:56:51 +0100 | [diff] [blame] | 1063 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1064 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1065 | |
| 1066 | // Create and configure function |
| 1067 | auto func = support::cpp14::make_unique<PadLayerFunction>(); |
Georgios Pinitas | 102b0ce | 2020-02-13 17:59:09 +0000 | [diff] [blame] | 1068 | func->configure(input, output, padding, pad_value); |
Michele Di Giorgio | 4bb1733 | 2018-09-26 13:56:51 +0100 | [diff] [blame] | 1069 | |
| 1070 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1071 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1072 | << node.name() |
| 1073 | << " Type: " << node.type() |
| 1074 | << " Target: " << TargetInfo::TargetType |
Michele Di Giorgio | 4bb1733 | 2018-09-26 13:56:51 +0100 | [diff] [blame] | 1075 | << " Data Type: " << input->info()->data_type() |
| 1076 | << " Input shape: " << input->info()->tensor_shape() |
| 1077 | << " Output shape: " << output->info()->tensor_shape() |
| 1078 | << std::endl); |
| 1079 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1080 | return RETURN_UNIQUE_PTR(func); |
Michele Di Giorgio | 4bb1733 | 2018-09-26 13:56:51 +0100 | [diff] [blame] | 1081 | } |
| 1082 | |
Georgios Pinitas | 57c4824 | 2018-08-02 13:41:49 +0100 | [diff] [blame] | 1083 | /** Create a backend permute layer function |
| 1084 | * |
| 1085 | * @tparam PermuteLayerFunction Backend permute function |
| 1086 | * @tparam TargetInfo Target-specific information |
| 1087 | * |
| 1088 | * @param[in] node Node to create the backend function for |
| 1089 | * |
| 1090 | * @return Backend permute layer function |
| 1091 | */ |
| 1092 | template <typename PermuteLayerFunction, typename TargetInfo> |
| 1093 | std::unique_ptr<IFunction> create_permute_layer(PermuteLayerNode &node) |
| 1094 | { |
| 1095 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1096 | |
| 1097 | // Extract IO and info |
| 1098 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1099 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1100 | const PermutationVector &perm = node.permutation_vector(); |
| 1101 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1102 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1103 | |
| 1104 | // Create and configure function |
| 1105 | auto func = support::cpp14::make_unique<PermuteLayerFunction>(); |
| 1106 | func->configure(input, output, perm); |
| 1107 | |
| 1108 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1109 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1110 | << node.name() |
| 1111 | << " Type: " << node.type() |
| 1112 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | 57c4824 | 2018-08-02 13:41:49 +0100 | [diff] [blame] | 1113 | << " Data Type: " << input->info()->data_type() |
| 1114 | << " Input shape: " << input->info()->tensor_shape() |
| 1115 | << " Output shape: " << output->info()->tensor_shape() |
| 1116 | << " Permutation vector: " << perm |
| 1117 | << std::endl); |
| 1118 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1119 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | 57c4824 | 2018-08-02 13:41:49 +0100 | [diff] [blame] | 1120 | } |
| 1121 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1122 | /** Create a backend pooling layer function |
| 1123 | * |
| 1124 | * @tparam PoolingLayerFunction Backend pooling function |
| 1125 | * @tparam TargetInfo Target-specific information |
| 1126 | * |
| 1127 | * @param[in] node Node to create the backend function for |
| 1128 | * |
| 1129 | * @return Backend pooling layer function |
| 1130 | */ |
| 1131 | template <typename PoolingLayerFunction, typename TargetInfo> |
| 1132 | std::unique_ptr<IFunction> create_pooling_layer(PoolingLayerNode &node) |
| 1133 | { |
| 1134 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1135 | |
| 1136 | // Extract IO and info |
| 1137 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1138 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1139 | const PoolingLayerInfo pool_info = node.pooling_info(); |
| 1140 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1141 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1142 | |
| 1143 | // Create and configure function |
| 1144 | auto func = support::cpp14::make_unique<PoolingLayerFunction>(); |
| 1145 | func->configure(input, output, pool_info); |
| 1146 | |
| 1147 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1148 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1149 | << node.name() |
| 1150 | << " Type: " << node.type() |
| 1151 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1152 | << " Data Type: " << input->info()->data_type() |
| 1153 | << " Input shape: " << input->info()->tensor_shape() |
| 1154 | << " Output shape: " << output->info()->tensor_shape() |
Sang-Hoon Park | 0cb3da6 | 2020-01-15 12:39:56 +0000 | [diff] [blame] | 1155 | << " Pooling info: " << pool_info.pool_type |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1156 | << std::endl); |
| 1157 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1158 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1159 | } |
| 1160 | |
Georgios Pinitas | f8c4749 | 2020-02-04 17:39:59 +0000 | [diff] [blame] | 1161 | /** Create a backend PRelu layer function |
| 1162 | * |
| 1163 | * @tparam PReluFunction Backend PRelu function |
| 1164 | * @tparam TargetInfo Target-specific information |
| 1165 | * |
| 1166 | * @param[in] node Node to create the backend function for |
| 1167 | * |
| 1168 | * @return Backend PRelu layer function |
| 1169 | */ |
| 1170 | template <typename PReluFunction, typename TargetInfo> |
| 1171 | std::unique_ptr<IFunction> create_prelu_layer(PReluLayerNode &node) |
| 1172 | { |
| 1173 | validate_node<TargetInfo>(node, 2 /* expected inputs */, 1 /* expected outputs */); |
| 1174 | |
| 1175 | // Extract IO and info |
| 1176 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1177 | typename TargetInfo::TensorType *alpha = get_backing_tensor<TargetInfo>(node.input(1)); |
| 1178 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1179 | ARM_COMPUTE_ERROR_ON(input == nullptr || alpha == nullptr); |
| 1180 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1181 | |
| 1182 | // Create and configure function |
| 1183 | auto func = support::cpp14::make_unique<PReluFunction>(); |
| 1184 | func->configure(input, alpha, output); |
| 1185 | |
| 1186 | // Log info |
| 1187 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1188 | << node.name() |
| 1189 | << " Type: " << node.type() |
| 1190 | << " Target: " << TargetInfo::TargetType |
| 1191 | << " Data Type: " << input->info()->data_type() |
| 1192 | << " Input shape: " << input->info()->tensor_shape() |
| 1193 | << " Output shape: " << output->info()->tensor_shape() |
| 1194 | << std::endl); |
| 1195 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1196 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | f8c4749 | 2020-02-04 17:39:59 +0000 | [diff] [blame] | 1197 | } |
| 1198 | |
Giorgio Arena | 6e9d0e0 | 2020-01-03 15:02:04 +0000 | [diff] [blame] | 1199 | /** Create a backend print layer function |
| 1200 | * |
| 1201 | * @tparam TargetInfo Target-specific information |
| 1202 | * |
| 1203 | * @param[in] node Node to create the backend function for |
| 1204 | * |
| 1205 | * @return Backend print layer function |
| 1206 | */ |
| 1207 | template <typename TargetInfo> |
| 1208 | std::unique_ptr<IFunction> create_print_layer(PrintLayerNode &node) |
| 1209 | { |
| 1210 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1211 | |
| 1212 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1213 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1214 | ARM_COMPUTE_UNUSED(input); |
| 1215 | |
| 1216 | // Log info |
| 1217 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1218 | << node.name() |
| 1219 | << " Type: " << node.type() |
| 1220 | << " Target: " << TargetInfo::TargetType |
| 1221 | << " Data Type: " << input->info()->data_type() |
| 1222 | << " Input shape: " << input->info()->tensor_shape() |
| 1223 | << std::endl); |
| 1224 | |
| 1225 | return nullptr; |
| 1226 | } |
| 1227 | |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1228 | /** Create a backend priorbox layer function |
| 1229 | * |
| 1230 | * @tparam PriorBoxLayerFunction Backend priorbox function |
| 1231 | * @tparam TargetInfo Target-specific information |
| 1232 | * |
| 1233 | * @param[in] node Node to create the backend function for |
| 1234 | * |
| 1235 | * @return Backend priorbox layer function |
| 1236 | */ |
| 1237 | template <typename PriorBoxLayerFunction, typename TargetInfo> |
| 1238 | std::unique_ptr<IFunction> create_priorbox_layer(PriorBoxLayerNode &node) |
| 1239 | { |
| 1240 | validate_node<TargetInfo>(node, 2 /* expected inputs */, 1 /* expected outputs */); |
| 1241 | |
| 1242 | // Extract IO and info |
| 1243 | typename TargetInfo::TensorType *input0 = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1244 | typename TargetInfo::TensorType *input1 = get_backing_tensor<TargetInfo>(node.input(1)); |
| 1245 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1246 | const PriorBoxLayerInfo prior_info = node.priorbox_info(); |
| 1247 | ARM_COMPUTE_ERROR_ON(input0 == nullptr); |
| 1248 | ARM_COMPUTE_ERROR_ON(input1 == nullptr); |
| 1249 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1250 | |
| 1251 | // Create and configure function |
| 1252 | auto func = support::cpp14::make_unique<PriorBoxLayerFunction>(); |
| 1253 | func->configure(input0, input1, output, prior_info); |
| 1254 | |
| 1255 | // Log info |
| 1256 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1257 | << node.name() |
| 1258 | << " Type: " << node.type() |
| 1259 | << " Target: " << TargetInfo::TargetType |
| 1260 | << " Data Type: " << input0->info()->data_type() |
| 1261 | << " Input0 shape: " << input0->info()->tensor_shape() |
| 1262 | << " Input1 shape: " << input1->info()->tensor_shape() |
| 1263 | << " Output shape: " << output->info()->tensor_shape() |
| 1264 | << " PriorBoxLayer info: " << prior_info |
| 1265 | << std::endl); |
| 1266 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1267 | return RETURN_UNIQUE_PTR(func); |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1268 | } |
| 1269 | |
Isabella Gottardi | 3db1ba9 | 2019-05-17 12:35:20 +0100 | [diff] [blame] | 1270 | /** Create a backend quantization layer function |
| 1271 | * |
| 1272 | * @tparam QuantizationLayerFunction Backend quantization function |
| 1273 | * @tparam TargetInfo Target-specific information |
| 1274 | * |
| 1275 | * @param[in] node Node to create the backend function for |
| 1276 | * |
| 1277 | * @return Backend quantization layer function |
| 1278 | */ |
| 1279 | template <typename QuantizationLayerFunction, typename TargetInfo> |
| 1280 | std::unique_ptr<IFunction> create_quantization_layer(QuantizationLayerNode &node) |
| 1281 | { |
| 1282 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1283 | |
| 1284 | // Extract IO and info |
| 1285 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1286 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1287 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1288 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1289 | |
| 1290 | // Create and configure function |
| 1291 | auto func = support::cpp14::make_unique<QuantizationLayerFunction>(); |
| 1292 | func->configure(input, output); |
| 1293 | |
| 1294 | // Log info |
| 1295 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1296 | << node.name() |
| 1297 | << " Type: " << node.type() |
| 1298 | << " Target: " << TargetInfo::TargetType |
| 1299 | << " Data Type: " << input->info()->data_type() |
| 1300 | << " Input shape: " << input->info()->tensor_shape() |
| 1301 | << " Output shape: " << output->info()->tensor_shape() |
| 1302 | << std::endl); |
| 1303 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1304 | return RETURN_UNIQUE_PTR(func); |
Isabella Gottardi | 3db1ba9 | 2019-05-17 12:35:20 +0100 | [diff] [blame] | 1305 | } |
| 1306 | |
Gian Marco Iodice | 23e2479 | 2018-09-07 15:32:14 +0100 | [diff] [blame] | 1307 | /** Create a backend reorg layer function |
| 1308 | * |
Michele Di Giorgio | c30b668 | 2018-09-12 17:44:08 +0100 | [diff] [blame] | 1309 | * @tparam ReorgLayerFunction Backend reorg function |
Gian Marco Iodice | 23e2479 | 2018-09-07 15:32:14 +0100 | [diff] [blame] | 1310 | * @tparam TargetInfo Target-specific information |
| 1311 | * |
| 1312 | * @param[in] node Node to create the backend function for |
| 1313 | * |
| 1314 | * @return Backend reshape layer function |
| 1315 | */ |
| 1316 | template <typename ReorgLayerFunction, typename TargetInfo> |
| 1317 | std::unique_ptr<IFunction> create_reorg_layer(ReorgLayerNode &node) |
| 1318 | { |
| 1319 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1320 | |
| 1321 | // Extract IO and info |
| 1322 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1323 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1324 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1325 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1326 | |
| 1327 | // Create and configure function |
| 1328 | auto func = support::cpp14::make_unique<ReorgLayerFunction>(); |
| 1329 | func->configure(input, output, node.stride()); |
| 1330 | |
| 1331 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1332 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1333 | << node.name() |
| 1334 | << " Type: " << node.type() |
| 1335 | << " Target: " << TargetInfo::TargetType |
Gian Marco Iodice | 23e2479 | 2018-09-07 15:32:14 +0100 | [diff] [blame] | 1336 | << " Data Type: " << input->info()->data_type() |
| 1337 | << " Input shape: " << input->info()->tensor_shape() |
| 1338 | << " Output shape: " << output->info()->tensor_shape() |
| 1339 | << std::endl); |
| 1340 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1341 | return RETURN_UNIQUE_PTR(func); |
Gian Marco Iodice | 23e2479 | 2018-09-07 15:32:14 +0100 | [diff] [blame] | 1342 | } |
| 1343 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1344 | /** Create a backend reshape layer function |
| 1345 | * |
| 1346 | * @tparam ReshapeLayerFunction Backend reshape function |
| 1347 | * @tparam TargetInfo Target-specific information |
| 1348 | * |
| 1349 | * @param[in] node Node to create the backend function for |
| 1350 | * |
| 1351 | * @return Backend reshape layer function |
| 1352 | */ |
| 1353 | template <typename ReshapeLayerFunction, typename TargetInfo> |
| 1354 | std::unique_ptr<IFunction> create_reshape_layer(ReshapeLayerNode &node) |
| 1355 | { |
| 1356 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1357 | |
| 1358 | // Extract IO and info |
| 1359 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1360 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1361 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1362 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1363 | |
| 1364 | // Create and configure function |
| 1365 | auto func = support::cpp14::make_unique<ReshapeLayerFunction>(); |
| 1366 | func->configure(input, output); |
| 1367 | |
| 1368 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1369 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1370 | << node.name() |
| 1371 | << " Type: " << node.type() |
| 1372 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1373 | << " Data Type: " << input->info()->data_type() |
| 1374 | << " Input shape: " << input->info()->tensor_shape() |
| 1375 | << " Output shape: " << output->info()->tensor_shape() |
| 1376 | << std::endl); |
| 1377 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1378 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1379 | } |
| 1380 | |
| 1381 | /** Create a backend resize layer function |
| 1382 | * |
| 1383 | * @tparam ResizeLayerFunction Backend resize function |
| 1384 | * @tparam TargetInfo Target-specific information |
| 1385 | * |
| 1386 | * @param[in] node Node to create the backend function for |
| 1387 | * |
| 1388 | * @return Backend resize layer function |
| 1389 | */ |
| 1390 | template <typename ResizeLayerFunction, typename TargetInfo> |
| 1391 | std::unique_ptr<IFunction> create_resize_layer(ResizeLayerNode &node) |
| 1392 | { |
| 1393 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1394 | |
| 1395 | // Extract IO and info |
| 1396 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1397 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1398 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1399 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1400 | const InterpolationPolicy policy = node.policy(); |
| 1401 | |
| 1402 | // Create and configure function |
| 1403 | auto func = support::cpp14::make_unique<ResizeLayerFunction>(); |
Sang-Hoon Park | ccd9496 | 2020-06-09 12:09:24 +0100 | [diff] [blame] | 1404 | func->configure(input, output, ScaleKernelInfo{ policy, BorderMode::CONSTANT }); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1405 | |
| 1406 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1407 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1408 | << node.name() |
| 1409 | << " Type: " << node.type() |
| 1410 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1411 | << " Data Type: " << input->info()->data_type() |
| 1412 | << " Input shape: " << input->info()->tensor_shape() |
| 1413 | << " Output shape: " << output->info()->tensor_shape() |
| 1414 | << " Interpolation: " << policy |
| 1415 | << std::endl); |
| 1416 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1417 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1418 | } |
| 1419 | |
Manuel Bottini | 3f9d4d7 | 2018-10-19 14:04:42 +0100 | [diff] [blame] | 1420 | /** Create a backend ROI align layer function |
| 1421 | * |
| 1422 | * @tparam ROIAlignLayerFunction ROI Align function |
| 1423 | * @tparam TargetInfo Target-specific information |
| 1424 | * |
| 1425 | * @param[in] node Node to create the backend function for |
| 1426 | * |
| 1427 | * @return ROI Align layer function |
| 1428 | */ |
| 1429 | template <typename ROIAlignLayerFunction, typename TargetInfo> |
| 1430 | std::unique_ptr<IFunction> create_roi_align_layer(ROIAlignLayerNode &node) |
| 1431 | { |
| 1432 | validate_node<TargetInfo>(node, 2 /* expected inputs */, 1 /* expected outputs */); |
| 1433 | |
| 1434 | // Extract IO and info |
| 1435 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1436 | typename TargetInfo::TensorType *rois = get_backing_tensor<TargetInfo>(node.input(1)); |
| 1437 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1438 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1439 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1440 | ARM_COMPUTE_ERROR_ON(rois == nullptr); |
| 1441 | |
| 1442 | const ROIPoolingLayerInfo pool_info = node.pooling_info(); |
| 1443 | |
| 1444 | // Create and configure function |
| 1445 | auto func = support::cpp14::make_unique<ROIAlignLayerFunction>(); |
| 1446 | |
| 1447 | func->configure(input, rois, output, pool_info); |
| 1448 | |
| 1449 | // Log info |
Isabella Gottardi | 0ae5de9 | 2019-03-14 10:32:11 +0000 | [diff] [blame] | 1450 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1451 | << node.name() |
| 1452 | << " Type: " << node.type() |
| 1453 | << " Target: " << TargetInfo::TargetType |
Manuel Bottini | 3f9d4d7 | 2018-10-19 14:04:42 +0100 | [diff] [blame] | 1454 | << " Data Type: " << input->info()->data_type() |
| 1455 | << " Input shape: " << input->info()->tensor_shape() |
| 1456 | << " Output shape: " << output->info()->tensor_shape() |
| 1457 | << " ROIs shape: " << rois->info()->tensor_shape() |
| 1458 | << " ROIPooling width: " << pool_info.pooled_width() |
| 1459 | << " ROIPooling height: " << pool_info.pooled_height() |
| 1460 | << std::endl); |
| 1461 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1462 | return RETURN_UNIQUE_PTR(func); |
Manuel Bottini | 3f9d4d7 | 2018-10-19 14:04:42 +0100 | [diff] [blame] | 1463 | } |
| 1464 | |
Michele Di Giorgio | c30b668 | 2018-09-12 17:44:08 +0100 | [diff] [blame] | 1465 | /** Create a backend slice layer function |
| 1466 | * |
| 1467 | * @tparam SliceLayerFunction Backend slice function |
| 1468 | * @tparam TargetInfo Target-specific information |
| 1469 | * |
| 1470 | * @param[in] node Node to create the backend function for |
| 1471 | * |
| 1472 | * @return Backend slice layer function |
| 1473 | */ |
| 1474 | template <typename SliceLayerFunction, typename TargetInfo> |
| 1475 | std::unique_ptr<IFunction> create_slice_layer(SliceLayerNode &node) |
| 1476 | { |
| 1477 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1478 | |
| 1479 | // Extract IO and info |
| 1480 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1481 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1482 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1483 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1484 | |
| 1485 | // Create and configure function |
| 1486 | auto func = support::cpp14::make_unique<SliceLayerFunction>(); |
| 1487 | func->configure(input, output, node.starts(), node.ends()); |
| 1488 | |
| 1489 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1490 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1491 | << node.name() |
| 1492 | << " Type: " << node.type() |
| 1493 | << " Target: " << TargetInfo::TargetType |
Michele Di Giorgio | c30b668 | 2018-09-12 17:44:08 +0100 | [diff] [blame] | 1494 | << " Data Type: " << input->info()->data_type() |
| 1495 | << " Input shape: " << input->info()->tensor_shape() |
| 1496 | << " Output shape: " << output->info()->tensor_shape() |
| 1497 | << std::endl); |
| 1498 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1499 | return RETURN_UNIQUE_PTR(func); |
Michele Di Giorgio | c30b668 | 2018-09-12 17:44:08 +0100 | [diff] [blame] | 1500 | } |
| 1501 | |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1502 | /** Create a backend softmax layer function |
| 1503 | * |
| 1504 | * @tparam SoftmaxLayerFunction Backend softmax function |
| 1505 | * @tparam TargetInfo Target-specific information |
| 1506 | * |
| 1507 | * @param[in] node Node to create the backend function for |
| 1508 | * @param[in] ctx Graph context |
| 1509 | * |
| 1510 | * @return Backend softmax layer function |
| 1511 | */ |
| 1512 | template <typename SoftmaxLayerFunction, typename TargetInfo> |
| 1513 | std::unique_ptr<IFunction> create_softmax_layer(SoftmaxLayerNode &node, GraphContext &ctx) |
| 1514 | { |
| 1515 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1516 | |
| 1517 | // Extract IO and info |
| 1518 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1519 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1520 | const float beta = node.beta(); |
| 1521 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1522 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1523 | |
| 1524 | // Create and configure function |
| 1525 | auto func = support::cpp14::make_unique<SoftmaxLayerFunction>(get_memory_manager(ctx, TargetInfo::TargetType)); |
| 1526 | func->configure(input, output, beta); |
| 1527 | |
| 1528 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1529 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1530 | << node.name() |
| 1531 | << " Type: " << node.type() |
| 1532 | << " Target: " << TargetInfo::TargetType |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1533 | << " Data Type: " << input->info()->data_type() |
| 1534 | << " Input shape: " << input->info()->tensor_shape() |
| 1535 | << " Output shape: " << output->info()->tensor_shape() |
| 1536 | << std::endl); |
| 1537 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1538 | return RETURN_UNIQUE_PTR(func); |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1539 | } |
Michele Di Giorgio | ec69975 | 2019-03-22 15:25:32 +0000 | [diff] [blame] | 1540 | |
| 1541 | /** Create a backend layer stack function |
| 1542 | * |
| 1543 | * @tparam StackLayerFunction Backend stack function |
| 1544 | * @tparam TargetInfo Target-specific information |
| 1545 | * |
| 1546 | * @param[in] node Node to create the backend function for |
| 1547 | * |
| 1548 | * @return Backend stack layer function |
| 1549 | */ |
| 1550 | template <typename StackLayerFunction, typename TargetInfo> |
| 1551 | std::unique_ptr<arm_compute::IFunction> create_stack_layer(StackLayerNode &node) |
| 1552 | { |
| 1553 | ARM_COMPUTE_LOG_GRAPH_VERBOSE("Creating Stack node with ID : " << node.id() << " and Name: " << node.name() << std::endl); |
| 1554 | ARM_COMPUTE_ERROR_ON(node.num_outputs() != 1); |
| 1555 | |
| 1556 | // Extract IO and info |
| 1557 | std::vector<typename TargetInfo::TensorType *> inputs; |
| 1558 | for(unsigned int i = 0; i < node.num_inputs(); ++i) |
| 1559 | { |
| 1560 | inputs.push_back(get_backing_tensor<TargetInfo>(node.input(i))); |
| 1561 | } |
| 1562 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1563 | const int axis = node.axis(); |
| 1564 | |
| 1565 | // Create and configure function |
| 1566 | auto func = support::cpp14::make_unique<StackLayerFunction>(); |
| 1567 | func->configure(inputs, axis, output); |
| 1568 | |
| 1569 | // Log info |
| 1570 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1571 | << node.name() |
| 1572 | << " Type: " << node.type() |
| 1573 | << " Target: " << TargetInfo::TargetType |
| 1574 | << " Data Type: " << output->info()->data_type() |
| 1575 | << " Inputs shape: " << inputs[0]->info()->tensor_shape() |
| 1576 | << " Output shape: " << output->info()->tensor_shape() |
| 1577 | << " Num Inputs: " << inputs.size() |
| 1578 | << " Axis: " << axis |
| 1579 | << std::endl); |
| 1580 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1581 | return RETURN_UNIQUE_PTR(func); |
Michele Di Giorgio | ec69975 | 2019-03-22 15:25:32 +0000 | [diff] [blame] | 1582 | } |
Michalis Spyrou | 4e1c3f3 | 2018-09-20 17:14:03 +0100 | [diff] [blame] | 1583 | /** Create a backend Upsample layer function |
| 1584 | * |
| 1585 | * @tparam UpsampleLayerFunction Backend Upsample function |
| 1586 | * @tparam TargetInfo Target-specific information |
| 1587 | * |
| 1588 | * @param[in] node Node to create the backend function for |
| 1589 | * @param[in] ctx Graph context |
| 1590 | * |
| 1591 | * @return Backend Upsample layer function |
| 1592 | */ |
| 1593 | template <typename UpsampleLayerFunction, typename TargetInfo> |
| 1594 | std::unique_ptr<IFunction> create_upsample_layer(UpsampleLayerNode &node, GraphContext &ctx) |
| 1595 | { |
Michalis Spyrou | 6bff195 | 2019-10-02 17:22:11 +0100 | [diff] [blame] | 1596 | ARM_COMPUTE_UNUSED(ctx); |
Michalis Spyrou | 4e1c3f3 | 2018-09-20 17:14:03 +0100 | [diff] [blame] | 1597 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1598 | |
| 1599 | // Extract IO and info |
| 1600 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1601 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1602 | const Size2D info = node.info(); |
| 1603 | const InterpolationPolicy upsampling_policy = node.upsampling_policy(); |
| 1604 | ARM_COMPUTE_ERROR_ON(upsampling_policy != InterpolationPolicy::NEAREST_NEIGHBOR); |
| 1605 | ARM_COMPUTE_ERROR_ON(info.x() != 2 || info.y() != 2); |
| 1606 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1607 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1608 | |
| 1609 | // Create and configure function |
| 1610 | auto func = support::cpp14::make_unique<UpsampleLayerFunction>(); |
| 1611 | func->configure(input, output, info, upsampling_policy); |
| 1612 | |
| 1613 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1614 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1615 | << node.name() |
| 1616 | << " Type: " << node.type() |
| 1617 | << " Target: " << TargetInfo::TargetType |
Michalis Spyrou | 4e1c3f3 | 2018-09-20 17:14:03 +0100 | [diff] [blame] | 1618 | << " Data Type: " << input->info()->data_type() |
| 1619 | << " Input shape: " << input->info()->tensor_shape() |
| 1620 | << " Output shape: " << output->info()->tensor_shape() |
| 1621 | << " Strides: " << info |
| 1622 | << " Upsampling policy: " << upsampling_policy |
| 1623 | << std::endl); |
| 1624 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1625 | return RETURN_UNIQUE_PTR(func); |
Michalis Spyrou | 4e1c3f3 | 2018-09-20 17:14:03 +0100 | [diff] [blame] | 1626 | } |
Michalis Spyrou | 96f6769 | 2018-09-13 11:39:28 +0100 | [diff] [blame] | 1627 | /** Create a backend YOLO layer function |
| 1628 | * |
| 1629 | * @tparam YoloLayerFunction Backend YOLO function |
| 1630 | * @tparam TargetInfo Target-specific information |
| 1631 | * |
| 1632 | * @param[in] node Node to create the backend function for |
| 1633 | * @param[in] ctx Graph context |
| 1634 | * |
| 1635 | * @return Backend YOLO layer function |
| 1636 | */ |
| 1637 | template <typename YOLOlayerFunction, typename TargetInfo> |
| 1638 | std::unique_ptr<IFunction> create_yolo_layer(YOLOLayerNode &node, GraphContext &ctx) |
| 1639 | { |
Michalis Spyrou | 6bff195 | 2019-10-02 17:22:11 +0100 | [diff] [blame] | 1640 | ARM_COMPUTE_UNUSED(ctx); |
Michalis Spyrou | 96f6769 | 2018-09-13 11:39:28 +0100 | [diff] [blame] | 1641 | validate_node<TargetInfo>(node, 1 /* expected inputs */, 1 /* expected outputs */); |
| 1642 | |
| 1643 | // Extract IO and info |
| 1644 | typename TargetInfo::TensorType *input = get_backing_tensor<TargetInfo>(node.input(0)); |
| 1645 | typename TargetInfo::TensorType *output = get_backing_tensor<TargetInfo>(node.output(0)); |
| 1646 | const ActivationLayerInfo act_info = node.activation_info(); |
| 1647 | const int32_t num_classes = node.num_classes(); |
| 1648 | ARM_COMPUTE_ERROR_ON(num_classes <= 0); |
| 1649 | ARM_COMPUTE_ERROR_ON(input == nullptr); |
| 1650 | ARM_COMPUTE_ERROR_ON(output == nullptr); |
| 1651 | |
| 1652 | // Create and configure function |
| 1653 | auto func = support::cpp14::make_unique<YOLOlayerFunction>(); |
| 1654 | func->configure(input, output, act_info, num_classes); |
| 1655 | |
| 1656 | // Log info |
Pablo Tello | 3252143 | 2018-11-15 14:43:10 +0000 | [diff] [blame] | 1657 | ARM_COMPUTE_LOG_GRAPH_INFO("Instantiated " |
| 1658 | << node.name() |
| 1659 | << " Type: " << node.type() |
| 1660 | << " Target: " << TargetInfo::TargetType |
Michalis Spyrou | 96f6769 | 2018-09-13 11:39:28 +0100 | [diff] [blame] | 1661 | << " Data Type: " << input->info()->data_type() |
| 1662 | << " Input shape: " << input->info()->tensor_shape() |
| 1663 | << " Output shape: " << output->info()->tensor_shape() |
| 1664 | << " Activation function: " << act_info.activation() |
| 1665 | << " Num classes: " << num_classes |
| 1666 | << std::endl); |
| 1667 | |
Georgios Pinitas | 0b192e8 | 2020-02-20 17:09:28 +0000 | [diff] [blame] | 1668 | return RETURN_UNIQUE_PTR(func); |
Michalis Spyrou | 96f6769 | 2018-09-13 11:39:28 +0100 | [diff] [blame] | 1669 | } |
Georgios Pinitas | da2491f | 2018-06-01 17:49:09 +0100 | [diff] [blame] | 1670 | } // namespace detail |
| 1671 | } // namespace backends |
| 1672 | } // namespace graph |
| 1673 | } // namespace arm_compute |
| 1674 | |
Michalis Spyrou | f464337 | 2019-11-29 16:17:13 +0000 | [diff] [blame] | 1675 | #endif /* ARM_COMPUTE_GRAPH_BACKENDS_DETAIL_FUNCTION_HELPERS_H */ |