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Georgios Pinitas108ab0b2018-09-14 18:35:11 +01001/*
Gian Marco Iodicea74923c2019-01-31 17:06:54 +00002 * Copyright (c) 2018-2019 ARM Limited.
Georgios Pinitas108ab0b2018-09-14 18:35:11 +01003 *
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/graph.h"
25#include "support/ToolchainSupport.h"
26#include "utils/CommonGraphOptions.h"
27#include "utils/GraphUtils.h"
28#include "utils/Utils.h"
29
30using namespace arm_compute::utils;
31using namespace arm_compute::graph::frontend;
32using namespace arm_compute::graph_utils;
33
34/** Example demonstrating how to implement ShuffleNet network using the Compute Library's graph API */
35class ShuffleNetExample : public Example
36{
37public:
38 ShuffleNetExample()
39 : cmd_parser(), common_opts(cmd_parser), common_params(), graph(0, "ShuffleNet")
40 {
41 }
42 bool do_setup(int argc, char **argv) override
43 {
44 // Parse arguments
45 cmd_parser.parse(argc, argv);
Georgios Pinitascd60a5f2019-08-21 17:06:54 +010046 cmd_parser.validate();
Georgios Pinitas108ab0b2018-09-14 18:35:11 +010047
48 // Consume common parameters
49 common_params = consume_common_graph_parameters(common_opts);
50
51 // Return when help menu is requested
52 if(common_params.help)
53 {
54 cmd_parser.print_help(argv[0]);
55 return false;
56 }
57
58 // Set default layout if needed (Single kernel grouped convolution not yet supported int NHWC)
59 if(!common_opts.data_layout->is_set())
60 {
Gian Marco Iodicea74923c2019-01-31 17:06:54 +000061 common_params.data_layout = DataLayout::NHWC;
Georgios Pinitas108ab0b2018-09-14 18:35:11 +010062 }
63
64 // Checks
65 ARM_COMPUTE_EXIT_ON_MSG(arm_compute::is_data_type_quantized_asymmetric(common_params.data_type), "QASYMM8 not supported for this graph");
Georgios Pinitas108ab0b2018-09-14 18:35:11 +010066
67 // Print parameter values
68 std::cout << common_params << std::endl;
69 std::cout << "Model: Shufflenet_1_g4" << std::endl;
70
71 // Create model path
72 std::string model_path = "/cnn_data/shufflenet_model/";
73
74 // Get trainable parameters data path
75 std::string data_path = common_params.data_path;
76
77 // Add model path to data path
78 if(!data_path.empty())
79 {
80 data_path += model_path;
81 }
82
83 // Create input descriptor
84 const TensorShape tensor_shape = permute_shape(TensorShape(224U, 224U, 3U, 1U), DataLayout::NCHW, common_params.data_layout);
85 TensorDescriptor input_descriptor = TensorDescriptor(tensor_shape, common_params.data_type).set_layout(common_params.data_layout);
86
87 // Set weights trained layout
88 const DataLayout weights_layout = DataLayout::NCHW;
89
90 // Create preprocessor
91 std::unique_ptr<IPreprocessor> preprocessor = arm_compute::support::cpp14::make_unique<TFPreproccessor>(0);
92
93 graph << common_params.target
94 << common_params.fast_math_hint
95 << InputLayer(input_descriptor, get_input_accessor(common_params, std::move(preprocessor), false /* Do not convert to BGR */))
96 << ConvolutionLayer(
97 3U, 3U, 24U,
98 get_weights_accessor(data_path, "conv3_0_w_0.npy", weights_layout),
99 get_weights_accessor(data_path, "conv3_0_b_0.npy", weights_layout),
100 PadStrideInfo(2, 2, 1, 1))
101 .set_name("Conv1/convolution")
102 << BatchNormalizationLayer(
103 get_weights_accessor(data_path, "conv3_0_bn_rm_0.npy"),
104 get_weights_accessor(data_path, "conv3_0_bn_riv_0.npy"),
105 get_weights_accessor(data_path, "conv3_0_bn_s_0.npy"),
106 get_weights_accessor(data_path, "conv3_0_bn_b_0.npy"),
107 1e-5f)
108 .set_name("Conv1/BatchNorm")
109 << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)).set_name("Conv1/Relu")
110 << PoolingLayer(PoolingLayerInfo(PoolingType::MAX, 3, PadStrideInfo(2, 2, 1, 1))).set_name("pool1/MaxPool");
111
112 // Stage 2
113 add_residual_block(data_path, DataLayout::NCHW, 0U /* unit */, 112U /* depth */, 2U /* stride */);
114 add_residual_block(data_path, DataLayout::NCHW, 1U /* unit */, 136U /* depth */, 1U /* stride */);
115 add_residual_block(data_path, DataLayout::NCHW, 2U /* unit */, 136U /* depth */, 1U /* stride */);
116 add_residual_block(data_path, DataLayout::NCHW, 3U /* unit */, 136U /* depth */, 1U /* stride */);
117
118 // Stage 3
119 add_residual_block(data_path, DataLayout::NCHW, 4U /* unit */, 136U /* depth */, 2U /* stride */);
120 add_residual_block(data_path, DataLayout::NCHW, 5U /* unit */, 272U /* depth */, 1U /* stride */);
121 add_residual_block(data_path, DataLayout::NCHW, 6U /* unit */, 272U /* depth */, 1U /* stride */);
122 add_residual_block(data_path, DataLayout::NCHW, 7U /* unit */, 272U /* depth */, 1U /* stride */);
123 add_residual_block(data_path, DataLayout::NCHW, 8U /* unit */, 272U /* depth */, 1U /* stride */);
124 add_residual_block(data_path, DataLayout::NCHW, 9U /* unit */, 272U /* depth */, 1U /* stride */);
125 add_residual_block(data_path, DataLayout::NCHW, 10U /* unit */, 272U /* depth */, 1U /* stride */);
126 add_residual_block(data_path, DataLayout::NCHW, 11U /* unit */, 272U /* depth */, 1U /* stride */);
127
128 // Stage 4
129 add_residual_block(data_path, DataLayout::NCHW, 12U /* unit */, 272U /* depth */, 2U /* stride */);
130 add_residual_block(data_path, DataLayout::NCHW, 13U /* unit */, 544U /* depth */, 1U /* stride */);
131 add_residual_block(data_path, DataLayout::NCHW, 14U /* unit */, 544U /* depth */, 1U /* stride */);
132 add_residual_block(data_path, DataLayout::NCHW, 15U /* unit */, 544U /* depth */, 1U /* stride */);
133
134 graph << PoolingLayer(PoolingLayerInfo(PoolingType::AVG)).set_name("predictions/AvgPool")
135 << FlattenLayer().set_name("predictions/Reshape")
136 << FullyConnectedLayer(
137 1000U,
138 get_weights_accessor(data_path, "pred_w_0.npy", weights_layout),
139 get_weights_accessor(data_path, "pred_b_0.npy"))
140 .set_name("predictions/FC")
141 << SoftmaxLayer().set_name("predictions/Softmax")
142 << OutputLayer(get_output_accessor(common_params, 5));
143
144 // Finalize graph
145 GraphConfig config;
146 config.num_threads = common_params.threads;
147 config.use_tuner = common_params.enable_tuner;
Vidhya Sudhan Loganathan050471e2019-04-25 09:27:24 +0100148 config.tuner_mode = common_params.tuner_mode;
Georgios Pinitas108ab0b2018-09-14 18:35:11 +0100149 config.tuner_file = common_params.tuner_file;
150
151 graph.finalize(common_params.target, config);
152
153 return true;
154 }
155
156 void do_run() override
157 {
158 // Run graph
159 graph.run();
160 }
161
162private:
163 CommandLineParser cmd_parser;
164 CommonGraphOptions common_opts;
165 CommonGraphParams common_params;
166 Stream graph;
167
168 void add_residual_block(const std::string &data_path, DataLayout weights_layout,
169 unsigned int unit, unsigned int depth, unsigned int stride)
170 {
171 PadStrideInfo dwc_info = PadStrideInfo(1, 1, 1, 1);
172 const unsigned int gconv_id = unit * 2;
173 const unsigned int num_groups = 4;
174 const std::string unit_id_name = arm_compute::support::cpp11::to_string(unit);
175 const std::string gconv_id_name = arm_compute::support::cpp11::to_string(gconv_id);
176 const std::string gconv_id_1_name = arm_compute::support::cpp11::to_string(gconv_id + 1);
177 const std::string unit_name = "unit" + unit_id_name;
178
179 SubStream left_ss(graph);
180 SubStream right_ss(graph);
181
182 if(stride == 2)
183 {
184 right_ss << PoolingLayer(PoolingLayerInfo(PoolingType::AVG, 3, PadStrideInfo(2, 2, 1, 1))).set_name(unit_name + "/pool_1/AveragePool");
185 dwc_info = PadStrideInfo(2, 2, 1, 1);
186 }
187
188 left_ss << ConvolutionLayer(
189 1U, 1U, depth,
190 get_weights_accessor(data_path, "gconv1_" + gconv_id_name + "_w_0.npy", weights_layout),
191 std::unique_ptr<arm_compute::graph::ITensorAccessor>(nullptr),
192 PadStrideInfo(1, 1, 0, 0), num_groups)
193 .set_name(unit_name + "/gconv1_" + gconv_id_name + "/convolution")
194 << BatchNormalizationLayer(
195 get_weights_accessor(data_path, "gconv1_" + gconv_id_name + "_bn_rm_0.npy"),
196 get_weights_accessor(data_path, "gconv1_" + gconv_id_name + "_bn_riv_0.npy"),
197 get_weights_accessor(data_path, "gconv1_" + gconv_id_name + "_bn_s_0.npy"),
198 get_weights_accessor(data_path, "gconv1_" + gconv_id_name + "_bn_b_0.npy"),
199 1e-5f)
200 .set_name(unit_name + "/gconv1_" + gconv_id_name + "/BatchNorm")
201 << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)).set_name(unit_name + "/gconv1_" + gconv_id_name + "/Relu")
202 << ChannelShuffleLayer(num_groups).set_name(unit_name + "/shuffle_0/ChannelShufle")
203 << DepthwiseConvolutionLayer(
204 3U, 3U,
205 get_weights_accessor(data_path, "gconv3_" + unit_id_name + "_w_0.npy", weights_layout),
206 std::unique_ptr<arm_compute::graph::ITensorAccessor>(nullptr),
207 dwc_info)
208 .set_name(unit_name + "/gconv3_" + unit_id_name + "/depthwise")
209 << BatchNormalizationLayer(
210 get_weights_accessor(data_path, "gconv3_" + unit_id_name + "_bn_rm_0.npy"),
211 get_weights_accessor(data_path, "gconv3_" + unit_id_name + "_bn_riv_0.npy"),
212 get_weights_accessor(data_path, "gconv3_" + unit_id_name + "_bn_s_0.npy"),
213 get_weights_accessor(data_path, "gconv3_" + unit_id_name + "_bn_b_0.npy"),
214 1e-5f)
215 .set_name(unit_name + "/gconv3_" + unit_id_name + "/BatchNorm")
216 << ConvolutionLayer(
217 1U, 1U, depth,
218 get_weights_accessor(data_path, "gconv1_" + gconv_id_1_name + "_w_0.npy", weights_layout),
219 std::unique_ptr<arm_compute::graph::ITensorAccessor>(nullptr),
220 PadStrideInfo(1, 1, 0, 0), num_groups)
221 .set_name(unit_name + "/gconv1_" + gconv_id_1_name + "/convolution")
222 << BatchNormalizationLayer(
223 get_weights_accessor(data_path, "gconv1_" + gconv_id_1_name + "_bn_rm_0.npy"),
224 get_weights_accessor(data_path, "gconv1_" + gconv_id_1_name + "_bn_riv_0.npy"),
225 get_weights_accessor(data_path, "gconv1_" + gconv_id_1_name + "_bn_s_0.npy"),
226 get_weights_accessor(data_path, "gconv1_" + gconv_id_1_name + "_bn_b_0.npy"),
227 1e-5f)
228 .set_name(unit_name + "/gconv1_" + gconv_id_1_name + "/BatchNorm");
229
230 if(stride == 2)
231 {
232 graph << ConcatLayer(std::move(left_ss), std::move(right_ss)).set_name(unit_name + "/Concat");
233 }
234 else
235 {
236 graph << EltwiseLayer(std::move(left_ss), std::move(right_ss), EltwiseOperation::Add).set_name(unit_name + "/Add");
237 }
238 graph << ActivationLayer(ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::RELU)).set_name(unit_name + "/Relu");
239 }
240};
241
242/** Main program for ShuffleNet
243 *
Georgios Pinitasbdbbbe82018-11-07 16:06:47 +0000244 * Model is based on:
245 * https://arxiv.org/abs/1707.01083
246 * "ShuffleNet: An Extremely Efficient Convolutional Neural Network for Mobile Devices"
247 * Xiangyu Zhang, Xinyu Zhou, Mengxiao Lin, Jian Sun
248 *
Georgios Pinitas588ebc52018-12-21 13:39:07 +0000249 * Provenance: https://s3.amazonaws.com/download.onnx/models/opset_9/shufflenet.tar.gz
250 *
Georgios Pinitas108ab0b2018-09-14 18:35:11 +0100251 * @note To list all the possible arguments execute the binary appended with the --help option
252 *
253 * @param[in] argc Number of arguments
254 * @param[in] argv Arguments
255 */
256int main(int argc, char **argv)
257{
258 return arm_compute::utils::run_example<ShuffleNetExample>(argc, argv);
259}