/* * SPDX-FileCopyrightText: Copyright 2021 Arm Limited and/or its affiliates * SPDX-License-Identifier: Apache-2.0 * * Licensed under the Apache License, Version 2.0 (the "License"); * you may not use this file except in compliance with the License. * You may obtain a copy of the License at * * http://www.apache.org/licenses/LICENSE-2.0 * * Unless required by applicable law or agreed to in writing, software * distributed under the License is distributed on an "AS IS" BASIS, * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. * See the License for the specific language governing permissions and * limitations under the License. */ #include "BufAttributes.hpp" #include "RNNoiseModel.hpp" #include "TensorFlowLiteMicro.hpp" #include "TestData_noise_reduction.hpp" #include #include namespace arm { namespace app { static uint8_t tensorArena[ACTIVATION_BUF_SZ] ACTIVATION_BUF_ATTRIBUTE; namespace rnn { extern uint8_t* GetModelPointer(); extern size_t GetModelLen(); } /* namespace rnn */ } /* namespace app */ } /* namespace arm */ namespace test { namespace noise_reduction { bool RunInference(arm::app::Model& model, const std::vector> inData) { for (size_t i = 0; i < model.GetNumInputs(); ++i) { TfLiteTensor* inputTensor = model.GetInputTensor(i); REQUIRE(inputTensor); memcpy(inputTensor->data.data, inData[i].data(), inData[i].size()); } return model.RunInference(); } bool RunInferenceRandom(arm::app::Model& model) { std::random_device rndDevice; std::mt19937 mersenneGen{rndDevice()}; std::uniform_int_distribution dist{-128, 127}; auto gen = [&dist, &mersenneGen]() { return dist(mersenneGen); }; std::vector> randomInput{NUMBER_OF_IFM_FILES}; for (size_t i = 0; i < model.GetNumInputs(); ++i) { TfLiteTensor* inputTensor = model.GetInputTensor(i); REQUIRE(inputTensor); randomInput[i].resize(inputTensor->bytes); std::generate(std::begin(randomInput[i]), std::end(randomInput[i]), gen); } REQUIRE(RunInference(model, randomInput)); return true; } TEST_CASE("Running random inference with Tflu and RNNoise Int8", "[RNNoise]") { arm::app::RNNoiseModel model{}; REQUIRE_FALSE(model.IsInited()); REQUIRE(model.Init(arm::app::tensorArena, sizeof(arm::app::tensorArena), arm::app::rnn::GetModelPointer(), arm::app::rnn::GetModelLen())); REQUIRE(model.IsInited()); REQUIRE(RunInferenceRandom(model)); } template void TestInference(const std::vector> input_goldenFV, const std::vector> output_goldenFV, arm::app::Model& model) { for (size_t i = 0; i < model.GetNumInputs(); ++i) { TfLiteTensor* inputTensor = model.GetInputTensor(i); REQUIRE(inputTensor); } REQUIRE(RunInference(model, input_goldenFV)); for (size_t i = 0; i < model.GetNumOutputs(); ++i) { TfLiteTensor* outputTensor = model.GetOutputTensor(i); REQUIRE(outputTensor); auto tensorData = tflite::GetTensorData(outputTensor); REQUIRE(tensorData); for (size_t j = 0; j < outputTensor->bytes; j++) { REQUIRE(static_cast(tensorData[j]) == static_cast((output_goldenFV[i][j]))); } } } TEST_CASE("Running inference with Tflu and RNNoise Int8", "[RNNoise]") { std::vector> goldenInputFV{NUMBER_OF_IFM_FILES}; std::vector> goldenOutputFV{NUMBER_OF_OFM_FILES}; std::array inputSizes = { IFM_0_DATA_SIZE, IFM_1_DATA_SIZE, IFM_2_DATA_SIZE, IFM_3_DATA_SIZE}; std::array outputSizes = { OFM_0_DATA_SIZE, OFM_1_DATA_SIZE, OFM_2_DATA_SIZE, OFM_3_DATA_SIZE, OFM_4_DATA_SIZE}; for (uint32_t i = 0; i < NUMBER_OF_IFM_FILES; ++i) { goldenInputFV[i].resize(inputSizes[i]); std::memcpy(goldenInputFV[i].data(), GetIfmDataArray(i), inputSizes[i]); } for (uint32_t i = 0; i < NUMBER_OF_OFM_FILES; ++i) { goldenOutputFV[i].resize(outputSizes[i]); std::memcpy(goldenOutputFV[i].data(), GetOfmDataArray(i), outputSizes[i]); } DYNAMIC_SECTION("Executing inference with re-init") { arm::app::RNNoiseModel model{}; REQUIRE_FALSE(model.IsInited()); REQUIRE(model.Init(arm::app::tensorArena, sizeof(arm::app::tensorArena), arm::app::rnn::GetModelPointer(), arm::app::rnn::GetModelLen())); REQUIRE(model.IsInited()); TestInference(goldenInputFV, goldenOutputFV, model); } } } /* namespace noise_reduction */ } /* namespace test */