/* * Copyright (c) 2019-2020 Arm Limited. * * SPDX-License-Identifier: MIT * * Permission is hereby granted, free of charge, to any person obtaining a copy * of this software and associated documentation files (the "Software"), to * deal in the Software without restriction, including without limitation the * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or * sell copies of the Software, and to permit persons to whom the Software is * furnished to do so, subject to the following conditions: * * The above copyright notice and this permission notice shall be included in all * copies or substantial portions of the Software. * * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE * SOFTWARE. */ #include "arm_compute/graph.h" #include "tests/NEON/Accessor.h" #include "tests/validation/Validation.h" #include "tests/validation/reference/FullyConnectedLayer.h" #include "tests/validation/reference/Permute.h" #include "utils/CommonGraphOptions.h" #include "utils/GraphUtils.h" #include "utils/Utils.h" #include "ValidateExample.h" #include "graph_validate_utils.h" #include using namespace arm_compute::utils; using namespace arm_compute::graph::frontend; using namespace arm_compute::graph_utils; using namespace arm_compute::graph; using namespace arm_compute; using namespace arm_compute::test; using namespace arm_compute::test::validation; namespace { /** Fully connected command line options used to configure the graph examples * * (Similar to common options) * The options in this object get populated when "parse()" is called on the parser used to construct it. * The expected workflow is: * * CommandLineParser parser; * CommonOptions options( parser ); * parser.parse(argc, argv); */ class FullyConnectedOptions final : public CommonGraphValidateOptions { public: explicit FullyConnectedOptions(CommandLineParser &parser) noexcept : CommonGraphValidateOptions(parser), width(parser.add_option>("width", 3)), batch(parser.add_option>("batch", 1)), input_scale(parser.add_option>("input_scale", 1.0f)), input_offset(parser.add_option>("input_offset", 0)), weights_scale(parser.add_option>("weights_scale", 1.0f)), weights_offset(parser.add_option>("weights_offset", 0)), output_scale(parser.add_option>("output_scale", 1.0f)), output_offset(parser.add_option>("output_offset", 0)), num_outputs(parser.add_option>("num_outputs", 1)), input_range_low(parser.add_option>("input_range_low")), input_range_high(parser.add_option>("input_range_high")), weights_range_low(parser.add_option>("weights_range_low")), weights_range_high(parser.add_option>("weights_range_high")) { width->set_help("Set Input dimension width"); batch->set_help("Set Input dimension batch"); input_scale->set_help("Quantization scale from QASYMM8"); input_offset->set_help("Quantization offset from QASYMM8"); weights_scale->set_help("Quantization scale from QASYMM8"); weights_offset->set_help("Quantization offset from QASYMM8"); output_scale->set_help("Quantization scale from QASYMM8"); output_offset->set_help("Quantization offset from QASYMM8"); num_outputs->set_help("Number of outputs."); input_range_low->set_help("Lower bound for input randomization range"); input_range_high->set_help("Lower bound for input randomization range"); weights_range_low->set_help("Lower bound for input randomization range"); weights_range_high->set_help("Lower bound for input randomization range"); } /** Fill out the supplied parameters with user supplied parameters * * @param[out] os Output stream. * @param[in] common_params Example parameters to output * * @return None. */ void consume_parameters(ExampleParams &common_params) { common_params.input.width = width->value(); common_params.input.batch = batch->value(); common_params.input.quant_info = QuantizationInfo(input_scale->value(), input_offset->value()); common_params.input.range_low = input_range_low->value(); common_params.input.range_high = input_range_high->value(); common_params.weights.quant_info = QuantizationInfo(weights_scale->value(), weights_offset->value()); common_params.weights.range_low = weights_range_low->value(); common_params.weights.range_high = weights_range_high->value(); common_params.output.quant_info = QuantizationInfo(output_scale->value(), output_offset->value()); common_params.data_type = data_type->value(); common_params.fully_connected.num_outputs = num_outputs->value(); } void print_parameters(::std::ostream &os, const ExampleParams &common_params) override { os << "Threads : " << common_params.common_params.threads << std::endl; os << "Target : " << common_params.common_params.target << std::endl; os << "Data type : " << common_params.data_type << std::endl; os << "Input dimensions(X,Y, Channels, Batch) : (" << common_params.input.width << "," << common_params.input.height << "," << common_params.input.fm << "," << common_params.input.batch << ")" << std::endl; os << "Number of outputs : " << common_params.fully_connected.num_outputs << std::endl; } /** Prevent instances of this class from being copied (As this class contains pointers) */ FullyConnectedOptions(const FullyConnectedOptions &) = delete; /** Prevent instances of this class from being copied (As this class contains pointers) */ FullyConnectedOptions &operator=(const FullyConnectedOptions &) = delete; /** Allow instances of this class to be moved */ FullyConnectedOptions(FullyConnectedOptions &&) noexcept(true) = default; /** Allow instances of this class to be moved */ FullyConnectedOptions &operator=(FullyConnectedOptions &&) noexcept(true) = default; /** Default destructor */ ~FullyConnectedOptions() override = default; private: SimpleOption *width; /**< Input width */ SimpleOption *batch; /**< Input batch */ SimpleOption *input_scale; /**< Input Quantization scale from QASSYMM8 */ SimpleOption *input_offset; /**< Input Quantization offset from QASSYMM8 */ SimpleOption *weights_scale; /**< Weights Quantization scale from QASSYMM8 */ SimpleOption *weights_offset; /**< Weights Quantization offset from QASSYMM8 */ SimpleOption *output_scale; /**< Output Quantization scale from QASSYMM8 */ SimpleOption *output_offset; /**< Output Quantization offset from QASSYMM8 */ SimpleOption *num_outputs; /**< Number of outputs. */ SimpleOption *input_range_low; /**< Lower bound for input randomization range */ SimpleOption *input_range_high; /**< Upper bound for input randomization range */ SimpleOption *weights_range_low; /**< Lower bound for weights randomization range */ SimpleOption *weights_range_high; /**< Upper bound for weights randomization range */ }; /** Fully Connected Layer Graph example validation accessor class */ template class FullyConnectedVerifyAccessor final : public VerifyAccessor { using BaseClassType = VerifyAccessor; using BaseClassType::BaseClassType; using BaseClassType::_params; using TBias = typename std::conditional::type, uint8_t>::value, int32_t, D>::type; // Inherited methods overriden: void create_tensors(arm_compute::test::SimpleTensor &src, arm_compute::test::SimpleTensor &weights, arm_compute::test::SimpleTensor &bias, ITensor &tensor) override { // Calculate Tensor shapes for verification const TensorShape input_shape = TensorShape(_params.input.width, _params.input.height, _params.input.fm, _params.input.batch); const TensorDescriptor input_descriptor = TensorDescriptor(input_shape, _params.data_type, _params.input.quant_info); const TensorDescriptor weights_descriptor = FullyConnectedLayerNode::compute_weights_descriptor(input_descriptor, _params.fully_connected.num_outputs, _params.fully_connected.info, _params.weights.quant_info); const TensorDescriptor output_desciptor = FullyConnectedLayerNode::compute_output_descriptor(input_descriptor, _params.fully_connected.num_outputs, _params.output.quant_info); //Create Input tensors src = SimpleTensor { input_descriptor.shape, _params.data_type, 1, input_descriptor.quant_info }; weights = SimpleTensor { weights_descriptor.shape, _params.data_type, 1, weights_descriptor.quant_info }; bias = SimpleTensor { TensorShape(tensor.info()->tensor_shape().x()), _params.data_type, 1, _params.input.quant_info }; } TensorShape output_shape(ITensor &tensor) override { ARM_COMPUTE_UNUSED(tensor); const TensorShape input_shape = TensorShape(_params.input.width, _params.input.height, _params.input.fm, _params.input.batch); const TensorDescriptor input_descriptor = TensorDescriptor(input_shape, _params.data_type, _params.input.quant_info); const TensorDescriptor output_desciptor = FullyConnectedLayerNode::compute_output_descriptor(input_descriptor, _params.fully_connected.num_outputs, _params.output.quant_info); return output_desciptor.shape; } arm_compute::test::SimpleTensor reference(arm_compute::test::SimpleTensor &src, arm_compute::test::SimpleTensor &weights, arm_compute::test::SimpleTensor &bias, const arm_compute::TensorShape &output_shape) override { return reference::fully_connected_layer(src, weights, bias, output_shape, _params.output.quant_info); } float relative_tolerance() override { const std::map> relative_tolerance { { arm_compute::graph::Target::CL, { { DataType::F16, 0.2f }, { DataType::F32, 0.05f }, { DataType::QASYMM8, 1.0f } } }, { arm_compute::graph::Target::NEON, { { DataType::F16, 0.2f }, { DataType::F32, 0.01f }, { DataType::QASYMM8, 1.0f } } } }; return relative_tolerance.at(_params.common_params.target).at(_params.data_type); } float absolute_tolerance() override { const std::map> absolute_tolerance { { Target::CL, { { DataType::F16, 0.0f }, { DataType::F32, 0.0001f }, { DataType::QASYMM8, 1.0f } } }, { Target::NEON, { { DataType::F16, 0.3f }, { DataType::F32, 0.1f }, { DataType::QASYMM8, 1.0f } } } }; return absolute_tolerance.at(_params.common_params.target).at(_params.data_type); } float tolerance_number() override { const std::map> absolute_tolerance { { Target::CL, { { DataType::F16, 0.07f }, { DataType::F32, 0.07f }, { DataType::QASYMM8, 0.0f } } }, { Target::NEON, { { DataType::F16, 0.07f }, { DataType::F32, 0.0f }, { DataType::QASYMM8, 0.0f } } } }; return absolute_tolerance.at(_params.common_params.target).at(_params.data_type); } }; } // namespace class GraphFullyConnectedValidateExample final : public GraphValidateExample { using GraphValidateExample::graph; public: GraphFullyConnectedValidateExample() : GraphValidateExample("Fully_connected Graph example") { } FullyConnectedLayer GraphFunctionLayer(ExampleParams ¶ms) override { const PixelValue lower = PixelValue(params.input.range_low, params.data_type, params.input.quant_info); const PixelValue upper = PixelValue(params.input.range_high, params.data_type, params.input.quant_info); const PixelValue weights_lower = PixelValue(params.weights.range_low, params.data_type, params.weights.quant_info); const PixelValue weights_upper = PixelValue(params.weights.range_high, params.data_type, params.weights.quant_info); return FullyConnectedLayer(params.fully_connected.num_outputs, get_random_accessor(weights_lower, weights_upper, 1), get_random_accessor(lower, upper, 2), params.fully_connected.info, params.weights.quant_info, params.output.quant_info); } }; /** Main program for Graph fully_connected test * * @param[in] argc Number of arguments * @param[in] argv Arguments ( Input dimensions [width, batch] * Fully connected [num_outputs,type] * Verification[tolerance_number,absolute_tolerance,relative_tolerance] ) * */ int main(int argc, char **argv) { return arm_compute::utils::run_example(argc, argv); }