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John Kesapidesfb68ca12019-01-21 14:13:27 +00001/*
2 * Copyright (c) 2019 ARM Limited.
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 */
24#include "arm_compute/graph.h"
25
26#include "support/ToolchainSupport.h"
27
28#include "tests/NEON/Accessor.h"
29#include "tests/validation/Validation.h"
30#include "tests/validation/reference/ConvolutionLayer.h"
31#include "tests/validation/reference/Permute.h"
32
33#include "utils/CommonGraphOptions.h"
34#include "utils/GraphUtils.h"
35#include "utils/Utils.h"
36
37#include "ValidateExample.h"
John Kesapides8d942692019-02-26 14:52:12 +000038#include "graph_validate_utils.h"
John Kesapidesfb68ca12019-01-21 14:13:27 +000039
40#include <utility>
41
42using namespace arm_compute::utils;
43using namespace arm_compute::graph::frontend;
44using namespace arm_compute::graph_utils;
45using namespace arm_compute::graph;
46using namespace arm_compute;
47using namespace arm_compute::test;
48using namespace arm_compute::test::validation;
John Kesapides8d942692019-02-26 14:52:12 +000049
John Kesapidesfb68ca12019-01-21 14:13:27 +000050namespace
51{
John Kesapidesfb68ca12019-01-21 14:13:27 +000052/** Convolution command line options used to configure the graph examples
53 *
54 * (Similar to common options)
55 * The options in this object get populated when "parse()" is called on the parser used to construct it.
56 * The expected workflow is:
57 *
58 * CommandLineParser parser;
59 * CommonOptions options( parser );
60 * parser.parse(argc, argv);
61 */
John Kesapides8d942692019-02-26 14:52:12 +000062class ConvolutionOptions final : public CommonGraphValidateOptions
John Kesapidesfb68ca12019-01-21 14:13:27 +000063{
64public:
65 explicit ConvolutionOptions(CommandLineParser &parser) noexcept
John Kesapides8d942692019-02-26 14:52:12 +000066 : CommonGraphValidateOptions(parser),
67 width(parser.add_option<SimpleOption<int>>("width", 9)),
John Kesapidesfb68ca12019-01-21 14:13:27 +000068 height(parser.add_option<SimpleOption<int>>("height", 9)),
69 channels(parser.add_option<SimpleOption<int>>("channels", 1)),
70 batch(parser.add_option<SimpleOption<int>>("batch", 1)),
71 weights_width(parser.add_option<SimpleOption<int>>("weights_width", 3)),
72 weights_height(parser.add_option<SimpleOption<int>>("weights_height", 3)),
73 OFM(parser.add_option<SimpleOption<int>>("OFM", 1)),
74 padding_top(parser.add_option<SimpleOption<int>>("padding_top", 0)),
75 padding_left(parser.add_option<SimpleOption<int>>("padding_left", 0)),
76 padding_bottom(parser.add_option<SimpleOption<int>>("padding_bottom", 0)),
77 padding_right(parser.add_option<SimpleOption<int>>("padding_right", 0)),
78 stride_x(parser.add_option<SimpleOption<int>>("stride_x", 1)),
79 stride_y(parser.add_option<SimpleOption<int>>("stride_y", 1)),
John Kesapidesfb68ca12019-01-21 14:13:27 +000080 padding_mode(),
81 conv_mode(),
82 data_layout(),
John Kesapidesfb68ca12019-01-21 14:13:27 +000083 scale(parser.add_option<SimpleOption<float>>("scale", 1.0f)),
84 offset(parser.add_option<SimpleOption<int>>("offset", 0)),
85 weights_scale(parser.add_option<SimpleOption<float>>("weights_scale", 1.0f)),
86 weights_offset(parser.add_option<SimpleOption<int>>("weights_offset", 0)),
87 output_scale(parser.add_option<SimpleOption<float>>("output_scale", 1.0f)),
88 output_offset(parser.add_option<SimpleOption<int>>("output_offset", 0)),
89 input_range_low(parser.add_option<SimpleOption<uint64_t>>("input_range_low")),
90 input_range_high(parser.add_option<SimpleOption<uint64_t>>("input_range_high")),
91 weights_range_low(parser.add_option<SimpleOption<uint64_t>>("weights_range_low")),
92 weights_range_high(parser.add_option<SimpleOption<uint64_t>>("weights_range_high")),
93 input_npy(parser.add_option<SimpleOption<std::string>>("input_image")),
94 output_npy(parser.add_option<SimpleOption<std::string>>("reference_image")),
95 weights_npy(parser.add_option<SimpleOption<std::string>>("weights_npy")),
96 bias_npy(parser.add_option<SimpleOption<std::string>>("bias_image"))
97 {
John Kesapides8d942692019-02-26 14:52:12 +000098 const std::set<ConvolutionPaddingMode> available_padding_modes
John Kesapidesfb68ca12019-01-21 14:13:27 +000099 {
John Kesapides8d942692019-02-26 14:52:12 +0000100 ConvolutionPaddingMode::Valid,
101 ConvolutionPaddingMode::Same
John Kesapidesfb68ca12019-01-21 14:13:27 +0000102 };
103
104 const std::set<arm_compute::graph::ConvolutionMethod> supported_convolution_methods
105 {
106 arm_compute::graph::ConvolutionMethod::Default,
107 arm_compute::graph::ConvolutionMethod::GEMM,
108 arm_compute::graph::ConvolutionMethod::Winograd,
109 arm_compute::graph::ConvolutionMethod::Direct
110 };
111
112 const std::set<DataLayout> supported_data_layouts
113 {
114 DataLayout::NHWC,
115 DataLayout::NCHW,
116 };
117
John Kesapides8d942692019-02-26 14:52:12 +0000118 padding_mode = parser.add_option<EnumOption<ConvolutionPaddingMode>>("padding_mode", available_padding_modes, ConvolutionPaddingMode::Valid);
John Kesapidesfb68ca12019-01-21 14:13:27 +0000119 conv_mode = parser.add_option<EnumOption<arm_compute::graph::ConvolutionMethod>>("convolution_method", supported_convolution_methods, arm_compute::graph::ConvolutionMethod::Default);
120 data_layout = parser.add_option<EnumOption<DataLayout>>("layout", supported_data_layouts, DataLayout::NHWC);
121
John Kesapidesfb68ca12019-01-21 14:13:27 +0000122 padding_mode->set_help("Set padding mode");
123 help->set_help("Show this help message");
124 width->set_help("Set Input dimension width");
125 height->set_help("Set Input dimension height");
126 channels->set_help("Set Input dimension channels");
127 batch->set_help("Set Input dimension batch");
128 weights_width->set_help("Set weights_dimensions width");
129 weights_height->set_help("Set weights_dimensions height");
130 OFM->set_help("Set OFM");
131 padding_top->set_help("Set padding top");
132 padding_bottom->set_help("Set padding bottom");
133 padding_left->set_help("Set padding left");
134 padding_right->set_help("Set padding right");
135 stride_x->set_help("Set padding stride x");
136 stride_y->set_help("Set padding stride y");
137 conv_mode->set_help("Set convolution method");
John Kesapidesfb68ca12019-01-21 14:13:27 +0000138 scale->set_help("Quantization scale from QASYMM8");
139 offset->set_help("Quantization offset from QASYMM8");
140 weights_scale->set_help("Quantization scale from QASYMM8");
141 weights_offset->set_help("Quantization offset from QASYMM8");
142 output_scale->set_help("Quantization scale from QASYMM8");
143 output_offset->set_help("Quantization offset from QASYMM8");
144 input_npy->set_help("Use input .npy instead");
145 output_npy->set_help("Use .npy as a reference");
146 input_range_low->set_help("Lower bound for input randomization range");
147 input_range_high->set_help("Lower bound for input randomization range");
148 weights_range_low->set_help("Lower bound for input randomization range");
149 weights_range_high->set_help("Lower bound for input randomization range");
150 }
151
John Kesapides8d942692019-02-26 14:52:12 +0000152 /** Fill out the supplied parameters with user supplied parameters
153 *
154 * @param[out] os Output stream.
155 * @param[in] common_params Example parameters to output
156 *
157 * @return None.
158 */
159 void consume_parameters(ExampleParams &common_params)
160 {
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100161 common_params.input.width = width->value();
162 common_params.input.height = height->value();
163 common_params.input.fm = channels->value();
164 common_params.input.batch = batch->value();
165 common_params.input.quant_info = QuantizationInfo(scale->value(), offset->value());
166 common_params.input.npy = input_npy->value();
167 common_params.input.range_low = input_range_low->value();
168 common_params.input.range_high = input_range_high->value();
John Kesapides8d942692019-02-26 14:52:12 +0000169
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100170 common_params.weights.width = weights_width->value();
171 common_params.weights.height = weights_height->value();
172 common_params.weights.fm = OFM->value();
173 common_params.weights.npy = weights_npy->value();
174 common_params.weights.quant_info = QuantizationInfo(weights_scale->value(), weights_offset->value());
175 common_params.weights.range_low = weights_range_low->value();
176 common_params.weights.range_high = weights_range_high->value();
John Kesapides8d942692019-02-26 14:52:12 +0000177
178 common_params.bias.npy = bias_npy->value();
179
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100180 common_params.output.quant_info = QuantizationInfo(output_scale->value(), output_offset->value());
181 common_params.output.npy = output_npy->value();
John Kesapides8d942692019-02-26 14:52:12 +0000182
183 common_params.convolution.padding_mode = padding_mode->value();
184 common_params.convolution.padding_top = padding_top->value();
185 common_params.convolution.padding_bottom = padding_bottom->value();
186 common_params.convolution.padding_left = padding_left->value();
187 common_params.convolution.padding_right = padding_right->value();
188 common_params.convolution.padding_stride_x = stride_x->value();
189 common_params.convolution.padding_stride_y = stride_y->value();
190
191 common_params.data_type = data_type->value();
192 common_params.data_layout = data_layout->value();
193 common_params.convolution_method = conv_mode->value();
194 }
195
196 void print_parameters(::std::ostream &os, const ExampleParams &common_params) override
197 {
198 os << "Threads : " << common_params.common_params.threads << std::endl;
199 os << "Target : " << common_params.common_params.target << std::endl;
200 os << "Data type : " << common_params.data_type << std::endl;
201 os << "Input dimensions(X,Y, Channels, Batch) : (" << common_params.input.width << "," << common_params.input.height << "," << common_params.input.fm << "," << common_params.input.batch << ")"
202 << std::endl;
203 os << "Weight dimensions(X,Y, Channels(same as input), OFM) : (" << common_params.weights.width << "," << common_params.weights.height << "," << common_params.input.fm << "," <<
204 common_params.weights.fm << ")" << std::endl;
205 os << "Padding(top, bottom, left, right) (stride x, stride y) : (" << common_params.convolution.padding_top << "," << common_params.convolution.padding_bottom << "," <<
206 common_params.convolution.padding_left << "," << common_params.convolution.padding_right << ") (" << common_params.convolution.padding_stride_x << "," << common_params.convolution.padding_stride_y <<
207 ")" << std::endl;
208 os << "Padding Mode: " << common_params.convolution.padding_mode << std::endl;
209 os << "Convolution Method: " << common_params.convolution_method << std::endl;
210 }
211
John Kesapidesfb68ca12019-01-21 14:13:27 +0000212 /** Prevent instances of this class from being copied (As this class contains pointers) */
213 ConvolutionOptions(const ConvolutionOptions &) = delete;
214 /** Prevent instances of this class from being copied (As this class contains pointers) */
215 ConvolutionOptions &operator=(const ConvolutionOptions &) = delete;
216 /** Allow instances of this class to be moved */
217 ConvolutionOptions(ConvolutionOptions &&) noexcept(true) = default;
218 /** Allow instances of this class to be moved */
219 ConvolutionOptions &operator=(ConvolutionOptions &&) noexcept(true) = default;
220 /** Default destructor */
John Kesapides8d942692019-02-26 14:52:12 +0000221 ~ConvolutionOptions() override = default;
John Kesapidesfb68ca12019-01-21 14:13:27 +0000222
Michalis Spyroubcfd09a2019-05-01 13:03:59 +0100223private:
John Kesapidesfb68ca12019-01-21 14:13:27 +0000224 SimpleOption<int> *width; /**< Input width */
225 SimpleOption<int> *height; /**< Input height */
226 SimpleOption<int> *channels; /**< Input channels */
227 SimpleOption<int> *batch; /**< Input batch */
228 SimpleOption<int> *weights_width; /**< weights width */
229 SimpleOption<int> *weights_height; /**< weights height */
230 SimpleOption<int> *OFM; /**< Output Feature Map */
231 SimpleOption<int> *padding_top; /**< Padding top */
232 SimpleOption<int> *padding_left; /**< Padding left */
233 SimpleOption<int> *padding_bottom; /**< Padding bottom */
234 SimpleOption<int> *padding_right; /**< Padding right */
235 SimpleOption<int> *stride_x; /**< Padding stride x */
236 SimpleOption<int> *stride_y; /**< Padding stride y */
John Kesapides8d942692019-02-26 14:52:12 +0000237 EnumOption<ConvolutionPaddingMode> *padding_mode; /**< Padding mode */
John Kesapidesfb68ca12019-01-21 14:13:27 +0000238 EnumOption<arm_compute::graph::ConvolutionMethod> *conv_mode; /**< Convolution method */
239 EnumOption<arm_compute::DataLayout> *data_layout; /**< Graph data layout */
John Kesapidesfb68ca12019-01-21 14:13:27 +0000240 SimpleOption<float> *scale; /**< Input Quantization scale from QASYMM8 */
241 SimpleOption<int> *offset; /**< Input Quantization offset from QASYMM8 */
242 SimpleOption<float> *weights_scale; /**< Weights Quantization scale from QASYMM8 */
243 SimpleOption<int> *weights_offset; /**< Weights Quantization offset from QASYMM8 */
244 SimpleOption<float> *output_scale; /**< Output Quantization scale from QASYMM8 */
245 SimpleOption<int> *output_offset; /**< Output Quantization offset from QASYMM8 */
246 SimpleOption<uint64_t> *input_range_low; /**< Lower bound for input randomization range */
247 SimpleOption<uint64_t> *input_range_high; /**< Upper bound for input randomization range */
248 SimpleOption<uint64_t> *weights_range_low; /**< Lower bound for weights randomization range */
249 SimpleOption<uint64_t> *weights_range_high; /**< Upper bound for weights randomization range */
250
251 SimpleOption<std::string> *input_npy; /**< Use input .npy image */
252 SimpleOption<std::string> *output_npy; /**< Use output .npy image to verify*/
253 SimpleOption<std::string> *weights_npy; /**< Use weights .npy image */
254 SimpleOption<std::string> *bias_npy; /**< Use bias .npy image */
255};
256
John Kesapidesfb68ca12019-01-21 14:13:27 +0000257/** ConvolutionLayer Graph example validation accessor class */
258template <typename D>
John Kesapides8d942692019-02-26 14:52:12 +0000259class ConvolutionVerifyAccessor final : public VerifyAccessor<D>
John Kesapidesfb68ca12019-01-21 14:13:27 +0000260{
John Kesapides8d942692019-02-26 14:52:12 +0000261 using BaseClassType = VerifyAccessor<D>;
262 using BaseClassType::BaseClassType;
263 using BaseClassType::_params;
John Kesapidesfb68ca12019-01-21 14:13:27 +0000264 using TBias = typename std::conditional<std::is_same<typename std::decay<D>::type, uint8_t>::value, int32_t, D>::type;
265
John Kesapides8d942692019-02-26 14:52:12 +0000266 SimpleTensor<D> reference(SimpleTensor<D> &src, SimpleTensor<D> &weights, SimpleTensor<TBias> &bias, const TensorShape &output_shape) override
John Kesapidesfb68ca12019-01-21 14:13:27 +0000267 {
John Kesapides8d942692019-02-26 14:52:12 +0000268 // Calculate padding information
269 const PadStrideInfo padding_info = calculate_convolution_padding(_params);
270
271 //Calculate reference
272 return reference::convolution_layer<D>(src, weights, bias, output_shape, padding_info, Size2D(1, 1),
273 1, _params.output.quant_info);
John Kesapidesfb68ca12019-01-21 14:13:27 +0000274 }
275
John Kesapides8d942692019-02-26 14:52:12 +0000276 float relative_tolerance() override
John Kesapidesfb68ca12019-01-21 14:13:27 +0000277 {
278 const std::map<arm_compute::graph::Target, const std::map<DataType, float>> relative_tolerance
279 {
280 {
281 arm_compute::graph::Target::CL,
282 { { DataType::F16, 0.2f },
283 { DataType::F32, 0.5f },
284 { DataType::QASYMM8, 1.0f }
285 }
286 },
287 {
288 arm_compute::graph::Target::NEON,
289 { { DataType::F16, 0.2f },
290 { DataType::F32, 0.01f },
291 { DataType::QASYMM8, 0.0f }
292 }
293 }
294 };
John Kesapidesfb68ca12019-01-21 14:13:27 +0000295
John Kesapides8d942692019-02-26 14:52:12 +0000296 if(_params.convolution_method == arm_compute::graph::ConvolutionMethod::Winograd
297 && _params.data_type == DataType::F32
298 && _params.common_params.target == arm_compute::graph::Target::NEON)
299 {
300 return 0.05f;
301 }
302 else
303 {
304 return relative_tolerance.at(_params.common_params.target).at(_params.data_type);
305 }
John Kesapidesfb68ca12019-01-21 14:13:27 +0000306 }
307
John Kesapides8d942692019-02-26 14:52:12 +0000308 float absolute_tolerance() override
John Kesapidesfb68ca12019-01-21 14:13:27 +0000309 {
310 const std::map<Target, const std::map<DataType, float>> absolute_tolerance
311 {
312 {
313 Target::CL,
314 { { DataType::F16, 0.0f },
315 { DataType::F32, 0.0001f },
316 { DataType::QASYMM8, 0.0f }
317 }
318 },
319 {
320 Target::NEON,
321 { { DataType::F16, 0.2f },
322 { DataType::F32, 0.002f },
323 { DataType::QASYMM8, 0.0f }
324 }
325 }
326 };
327
John Kesapides8d942692019-02-26 14:52:12 +0000328 return absolute_tolerance.at(_params.common_params.target).at(_params.data_type);
John Kesapidesfb68ca12019-01-21 14:13:27 +0000329 }
John Kesapides8d942692019-02-26 14:52:12 +0000330
331 float tolerance_number() override
John Kesapidesfb68ca12019-01-21 14:13:27 +0000332 {
333 const std::map<Target, const std::map<DataType, float>> absolute_tolerance
334 {
335 {
336 Target::CL,
337 { { DataType::F16, 0.07f },
338 { DataType::F32, 0.07f },
339 { DataType::QASYMM8, 0.0f }
340 }
341 },
342 {
343 Target::NEON,
344 { { DataType::F16, 0.07f },
345 { DataType::F32, 0.0f },
346 { DataType::QASYMM8, 0.0f }
347 }
348 }
349 };
350
John Kesapides8d942692019-02-26 14:52:12 +0000351 return absolute_tolerance.at(_params.common_params.target).at(_params.data_type);
John Kesapidesfb68ca12019-01-21 14:13:27 +0000352 }
John Kesapidesfb68ca12019-01-21 14:13:27 +0000353};
354
John Kesapidesfb68ca12019-01-21 14:13:27 +0000355} // namespace
356
John Kesapides8d942692019-02-26 14:52:12 +0000357class GraphConvolutionValidateExample final : public GraphValidateExample<ConvolutionLayer, ConvolutionOptions, ConvolutionVerifyAccessor>
John Kesapidesfb68ca12019-01-21 14:13:27 +0000358{
John Kesapides8d942692019-02-26 14:52:12 +0000359 using GraphValidateExample::graph;
360
John Kesapidesfb68ca12019-01-21 14:13:27 +0000361public:
362 GraphConvolutionValidateExample()
John Kesapides8d942692019-02-26 14:52:12 +0000363 : GraphValidateExample("Convolution Graph example")
John Kesapidesfb68ca12019-01-21 14:13:27 +0000364 {
365 }
John Kesapides8d942692019-02-26 14:52:12 +0000366
367 ConvolutionLayer GraphFunctionLayer(ExampleParams &params) override
John Kesapidesfb68ca12019-01-21 14:13:27 +0000368 {
John Kesapides8d942692019-02-26 14:52:12 +0000369 const PixelValue lower = PixelValue(params.input.range_low, params.data_type, params.input.quant_info);
370 const PixelValue upper = PixelValue(params.input.range_high, params.data_type, params.input.quant_info);
John Kesapidesfb68ca12019-01-21 14:13:27 +0000371
John Kesapides8d942692019-02-26 14:52:12 +0000372 const PixelValue weights_lower = PixelValue(params.weights.range_low, params.data_type, params.weights.quant_info);
373 const PixelValue weights_upper = PixelValue(params.weights.range_high, params.data_type, params.weights.quant_info);
John Kesapidesfb68ca12019-01-21 14:13:27 +0000374
375 // Calculate padding information
376 const PadStrideInfo padding_info = calculate_convolution_padding(params);
377
John Kesapides8d942692019-02-26 14:52:12 +0000378 return ConvolutionLayer(params.weights.width, params.weights.height, params.weights.fm,
379 get_accessor(params.weights, weights_lower, weights_upper, 1),
380 get_accessor(params.bias, lower, upper, 2),
381 padding_info, 1, params.weights.quant_info, params.output.quant_info);
John Kesapidesfb68ca12019-01-21 14:13:27 +0000382 }
John Kesapidesfb68ca12019-01-21 14:13:27 +0000383};
384
385/** Main program for Graph Convolution test
386 *
387 * @param[in] argc Number of arguments
388 * @param[in] argv Arguments ( Input dimensions [width, height, channels, batch]
389 * Weights dimensions [width, height, OFM]
390 * Padding [top,bottom,left,right, Stride x, Stride y, mode [Valid / Same / Manual] )
391 * Convolution Method[ Auto/GEMM/Winograd/Direct]
392 * Verification[tolerance_number,absolute_tolerance,relative_tolerance] )
393 *
394 */
395int main(int argc, char **argv)
396{
397 return arm_compute::utils::run_example<GraphConvolutionValidateExample>(argc, argv);
398}