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giuros01154bc1c2019-03-26 17:44:40 +00001/*
Sang-Hoon Park68dd25f2020-10-19 16:00:11 +01002 * Copyright (c) 2019-2020 Arm Limited.
giuros01154bc1c2019-03-26 17:44:40 +00003 *
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 */
24#include "arm_compute/runtime/NEON/functions/NEFFTConvolutionLayer.h"
25
26#include "arm_compute/core/ITensor.h"
27#include "arm_compute/core/Utils.h"
28#include "arm_compute/core/Validate.h"
giuros01154bc1c2019-03-26 17:44:40 +000029#include "arm_compute/core/utils/misc/ShapeCalculator.h"
Michalis Spyrouebcebf12020-10-21 00:04:14 +010030#include "src/core/NEON/kernels/NECopyKernel.h"
31#include "src/core/NEON/kernels/NEFFTDigitReverseKernel.h"
32#include "src/core/NEON/kernels/NEFFTRadixStageKernel.h"
33#include "src/core/NEON/kernels/NEFFTScaleKernel.h"
34#include "src/core/NEON/kernels/NEPadLayerKernel.h"
35#include "src/core/NEON/kernels/NEReductionOperationKernel.h"
Sang-Hoon Park68dd25f2020-10-19 16:00:11 +010036#include "src/core/helpers/AutoConfiguration.h"
37#include "src/core/utils/helpers/fft.h"
38
39#include "support/MemorySupport.h"
giuros01154bc1c2019-03-26 17:44:40 +000040
41namespace arm_compute
42{
43namespace
44{
45int pad_decomposable(int N)
46{
47 const auto supported_radix = NEFFTRadixStageKernel::supported_radix();
48
49 int pad = 0;
50 bool is_decomposed = false;
51 while(!is_decomposed)
52 {
53 const auto decomposed_vector = arm_compute::helpers::fft::decompose_stages(N++, supported_radix);
54 is_decomposed = !decomposed_vector.empty();
55 if(!is_decomposed)
56 {
57 ++pad;
58 }
59 }
60 return pad;
61}
62} // namespace
63
64NEFFTConvolutionLayer::NEFFTConvolutionLayer(std::shared_ptr<IMemoryManager> memory_manager)
65 : _memory_group(memory_manager),
66 _flip_weights_func(),
67 _permute_input_func(),
68 _permute_output_func(),
69 _permute_weights_func(),
70 _permute_bias_func(),
71 _pad_input_func(),
72 _pad_weights_func(),
73 _transform_input_func(memory_manager),
74 _transform_weights_func(),
75 _itransform_output_func(memory_manager),
76 _prod_func(),
77 _reduce_func(),
78 _extract_output_func(),
79 _bias_add_func(),
80 _activation_layer_func(),
81 _permuted_input(),
82 _permuted_weights(),
83 _permuted_bias(),
84 _permuted_output(),
85 _padded_input(),
86 _padded_weights(),
87 _flip_axis(),
88 _flipped_weights(),
89 _transformed_input(),
90 _transformed_weights(),
91 _input_weights_product(),
92 _output_product(),
93 _output_reduced(),
94 _itransformed_output(),
95 _reshaped_output(),
96 _bias_output(),
97 _original_weights(nullptr),
98 _original_bias(nullptr),
99 _is_activationlayer_enabled(false),
100 _needs_permute(false),
101 _has_bias(false),
102 _is_prepared(false)
103{
104}
Michalis Spyrouebcebf12020-10-21 00:04:14 +0100105NEFFTConvolutionLayer::~NEFFTConvolutionLayer() = default;
giuros01154bc1c2019-03-26 17:44:40 +0000106
107void NEFFTConvolutionLayer::configure(ITensor *input, const ITensor *weights, const ITensor *biases, ITensor *output, const PadStrideInfo &conv_info,
108 const ActivationLayerInfo &act_info)
109{
110 _original_weights = weights;
111 _original_bias = biases;
112
113 // Flat if bias addition is required
114 _has_bias = biases != nullptr;
115
116 // Get indices for the width and height
117 const size_t idx_width = get_data_layout_dimension_index(input->info()->data_layout(), DataLayoutDimension::WIDTH);
118 const size_t idx_height = get_data_layout_dimension_index(input->info()->data_layout(), DataLayoutDimension::HEIGHT);
119
120 // Input shape, kernel size and output tile
121 const Size2D input_dims = Size2D(input->info()->tensor_shape()[idx_width], input->info()->tensor_shape()[idx_height]);
122 const Size2D kernel_size = Size2D(weights->info()->tensor_shape()[idx_width], weights->info()->tensor_shape()[idx_height]);
123 const Size2D pad_valid = Size2D(pad_decomposable(input_dims.x() + kernel_size.x() - 1),
124 pad_decomposable(input_dims.y() + kernel_size.y() - 1));
125 // Tensors to use
126 ITensor *input_to_use = input;
127 const ITensor *weights_to_use = weights;
128 ITensor *output_to_use = _has_bias ? &_bias_output : output;
129
130 // Permute bias
Georgios Pinitas68c6a792019-05-15 13:24:00 +0100131 if(biases != nullptr)
132 {
133 _permute_bias_func.configure(biases, &_permuted_bias, PermutationVector(1U, 2U, 0U));
134 _permuted_bias.info()->set_data_layout(DataLayout::NCHW);
135 }
giuros01154bc1c2019-03-26 17:44:40 +0000136
137 // Permute input if needed
138 _needs_permute = input->info()->data_layout() == DataLayout::NHWC;
139 if(_needs_permute)
140 {
141 _memory_group.manage(&_permuted_input);
142 // Configure the function to transform the input tensor from NHWC -> NCHW
143 _permute_input_func.configure(input, &_permuted_input, PermutationVector(1U, 2U, 0U));
144 _permuted_input.info()->set_data_layout(DataLayout::NCHW);
145
146 // Configure the function to transform the weights tensor from HWI -> IHW
147 _permute_weights_func.configure(weights, &_permuted_weights, PermutationVector(1U, 2U, 0U));
148 _permuted_weights.info()->set_data_layout(DataLayout::NCHW);
149
150 input_to_use = &_permuted_input;
151 weights_to_use = &_permuted_weights;
152 }
153
154 // Flip weights
155 _flipped_weights.allocator()->init(weights_to_use->info()->clone()->set_is_resizable(true).reset_padding());
156 _flip_axis.allocator()->init(TensorInfo(TensorShape(2U), 1, DataType::U32));
157 _flip_weights_func.configure(weights_to_use, &_flipped_weights, &_flip_axis);
158
159 // Pad weights
160 const PaddingList padding_w = { { 0, input_dims.x() + pad_valid.x() - 1 }, { 0, input_dims.y() + pad_valid.y() - 1 } };
161 _pad_weights_func.configure(&_flipped_weights, &_padded_weights, padding_w);
162
163 // Transform weights
164 _transform_weights_func = support::cpp14::make_unique<NEFFT2D>();
165 _transform_weights_func->configure(&_padded_weights, &_transformed_weights, FFT2DInfo());
166
167 // Pad input
168 const PaddingList padding_in = { { 0, kernel_size.x() + pad_valid.x() - 1 }, { 0, kernel_size.y() + pad_valid.y() - 1 } };
169 _memory_group.manage(&_padded_input);
170 _pad_input_func.configure(input_to_use, &_padded_input, padding_in);
171 if(_needs_permute)
172 {
173 _permuted_input.allocator()->allocate();
174 }
175
176 // Transform input
177 _memory_group.manage(&_transformed_input);
178 _transform_input_func.configure(&_padded_input, &_transformed_input, FFT2DInfo());
179 _padded_input.allocator()->allocate();
180
181 // Perform product
182 _memory_group.manage(&_output_product);
183 _prod_func.configure(&_transformed_input, &_transformed_weights, &_output_product);
184 _transformed_input.allocator()->allocate();
185
186 // Perform reduction
187 _memory_group.manage(&_output_reduced);
188 _reduce_func.configure(&_output_product, &_output_reduced, 2, ReductionOperation::SUM);
189 _output_product.allocator()->allocate();
190
191 // Transform output
192 _memory_group.manage(&_itransformed_output);
193 FFT2DInfo itranform_info;
194 itranform_info.direction = FFTDirection::Inverse;
195 _itransformed_output.allocator()->init(_output_reduced.info()->clone()->set_is_resizable(true).set_num_channels(1).reset_padding());
196 _itransform_output_func.configure(&_output_reduced, &_itransformed_output, itranform_info);
197 _output_reduced.allocator()->allocate();
198
199 // Reshape output
200 TensorShape reshaped_shape = _itransformed_output.info()->tensor_shape();
201 reshaped_shape.remove_dimension(2);
202 _reshaped_output.allocator()->init(_itransformed_output.info()->clone()->set_tensor_shape(reshaped_shape));
203
204 // Extract correct region
205 const int start_left = kernel_size.x() - conv_info.pad_left() - 1;
206 const int start_top = kernel_size.y() - conv_info.pad_top() - 1;
207 const int end_right = _reshaped_output.info()->tensor_shape().x() - (kernel_size.x() - conv_info.pad_right() - 1) - pad_valid.x();
208 const int end_botton = _reshaped_output.info()->tensor_shape().y() - (kernel_size.y() - conv_info.pad_bottom() - 1) - pad_valid.y();
209 if(_has_bias)
210 {
211 _memory_group.manage(&_bias_output);
212 }
213 else if(_needs_permute)
214 {
215 output_to_use = &_permuted_output;
216 _memory_group.manage(&_permuted_output);
217 }
218 _extract_output_func.configure(&_reshaped_output, output_to_use, Coordinates(start_left, start_top), Coordinates(end_right, end_botton));
219 _reshaped_output.allocator()->allocate();
220 _itransformed_output.allocator()->allocate();
221
222 // Add bias
223 if(biases != nullptr)
224 {
225 output_to_use = output;
226 if(_needs_permute)
227 {
228 output_to_use = &_permuted_output;
229 _memory_group.manage(&_permuted_output);
230 }
231 auto_init_if_empty(*output_to_use->info(), *_bias_output.info());
232 _bias_add_func.configure(&_bias_output, &_permuted_bias, output_to_use, ConvertPolicy::WRAP);
233 _bias_output.allocator()->allocate();
234 }
235
236 // Permute output
237 if(_needs_permute)
238 {
239 // Configure the function to transform the convoluted output to ACL's native ordering format NCHW
240 _permuted_output.info()->set_data_layout(DataLayout::NCHW);
241 _permute_output_func.configure(&_permuted_output, output, PermutationVector(2U, 0U, 1U));
242
243 // Allocate tensors
244 _permuted_output.allocator()->allocate();
245 }
246
247 // Configure Activation Layer
248 _is_activationlayer_enabled = act_info.enabled();
249 if(_is_activationlayer_enabled)
250 {
251 _activation_layer_func.configure(output, nullptr, act_info);
252 }
253
254 // Setup flip axis data
255 _flip_axis.allocator()->allocate();
256
257 auto axis_data = reinterpret_cast<uint32_t *>(_flip_axis.buffer());
258 axis_data[0] = 0;
259 axis_data[1] = 1;
260}
261
262Status NEFFTConvolutionLayer::validate(const ITensorInfo *input, const ITensorInfo *weights, const ITensorInfo *biases, const ITensorInfo *output, const PadStrideInfo &conv_info,
263 const ActivationLayerInfo &act_info)
264{
265 ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(input, 1, DataType::F32);
266 ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input, weights);
267
268 // Get indices for the width and height
269 const size_t idx_width = get_data_layout_dimension_index(input->data_layout(), DataLayoutDimension::WIDTH);
270 const size_t idx_height = get_data_layout_dimension_index(input->data_layout(), DataLayoutDimension::HEIGHT);
271
272 // Input shape, kernel size and output tile
273 const Size2D kernel_size = Size2D(weights->tensor_shape()[idx_width], weights->tensor_shape()[idx_height]);
274
275 // Strides
276 const auto strides = conv_info.stride();
277 ARM_COMPUTE_RETURN_ERROR_ON(strides.first != strides.second && strides.first != 1);
278 ARM_COMPUTE_RETURN_ERROR_ON(kernel_size.x() != kernel_size.y());
279 ARM_COMPUTE_RETURN_ERROR_ON(conv_info.pad_left() != (kernel_size.x() / 2) || conv_info.pad_right() != (kernel_size.x() / 2));
280 ARM_COMPUTE_RETURN_ERROR_ON(conv_info.pad_top() != (kernel_size.y() / 2) || conv_info.pad_bottom() != (kernel_size.y() / 2));
281
282 // Validate biases
283 if(biases != nullptr)
284 {
285 const size_t idx_channels = get_data_layout_dimension_index(input->data_layout(), DataLayoutDimension::CHANNEL);
286 ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input, biases);
287 ARM_COMPUTE_RETURN_ERROR_ON(input->tensor_shape()[idx_channels] != biases->tensor_shape().x());
288 }
289
290 // Checks performed when output is configured
291 if((output != nullptr) && (output->total_size() != 0))
292 {
293 ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input, output);
294 ARM_COMPUTE_RETURN_ERROR_ON((input->tensor_shape()[idx_height] != output->tensor_shape()[idx_height]) || (input->tensor_shape()[idx_width] != output->tensor_shape()[idx_width]));
295
296 // Validate Activation Layer
297 if(act_info.enabled())
298 {
299 ARM_COMPUTE_RETURN_ON_ERROR(NEActivationLayer::validate(output, nullptr, act_info));
300 }
301 }
302
303 return Status{};
304}
305
306void NEFFTConvolutionLayer::run()
307{
308 prepare();
309
310 MemoryGroupResourceScope scope_mg(_memory_group);
311
312 // Transform input
313 if(_needs_permute)
314 {
315 _permute_input_func.run();
316 }
317 _pad_input_func.run();
318 _transform_input_func.run();
319
320 // Perform operations to frequency domain
321 _prod_func.run();
322
323 _reduce_func.run();
324
325 // Transform output
326 _itransform_output_func.run();
327 _reshaped_output.allocator()->import_memory(_itransformed_output.buffer());
328 _extract_output_func.run();
329
330 // Add bias
331 if(_has_bias)
332 {
333 _bias_add_func.run();
334 }
335 if(_needs_permute)
336 {
337 _permute_output_func.run();
338 }
339
340 // Run activation layer
341 if(_is_activationlayer_enabled)
342 {
343 _activation_layer_func.run();
344 }
345}
346
347void NEFFTConvolutionLayer::prepare()
348{
349 if(!_is_prepared)
350 {
351 // Permute bias to NCHW
352 if(_original_bias != nullptr)
353 {
354 _permuted_bias.allocator()->allocate();
355 _permute_bias_func.run();
356 _original_bias->mark_as_unused();
357 }
358
359 const ITensor *cur_weights = _original_weights;
360
361 // Permute weights
362 if(_needs_permute)
363 {
364 ARM_COMPUTE_ERROR_ON(!cur_weights->is_used());
365
366 _permuted_weights.allocator()->allocate();
367 _permute_weights_func.run();
368 cur_weights->mark_as_unused();
369 cur_weights = &_permuted_weights;
370 }
371
372 // Flip weights
373 _flipped_weights.allocator()->allocate();
374 _flip_weights_func.run();
375 cur_weights->mark_as_unused();
376
377 // Pad weights
378 _padded_weights.allocator()->allocate();
379 _pad_weights_func.run();
380 _flipped_weights.mark_as_unused();
381 _flipped_weights.allocator()->free();
382
383 // Transform weights to frequency domain
384 _transformed_weights.allocator()->allocate();
385 _transform_weights_func->run();
386 _transform_weights_func.reset();
387
388 _padded_weights.mark_as_unused();
389 _padded_weights.allocator()->free();
390
391 _is_prepared = true;
392 }
393}
394} // namespace arm_compute