blob: f1c3719363a5a9c3a287a058b80cfb4bc9bec1f1 [file] [log] [blame]
/*
* SPDX-FileCopyrightText: Copyright 2022 Arm Limited and/or its affiliates <open-source-office@arm.com>
* 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 "log_macros.h"
#include "ImageUtils.hpp"
#include "YoloFastestModel.hpp"
#include "TensorFlowLiteMicro.hpp"
#include "DetectorPostProcessing.hpp"
#include "InputFiles.hpp"
#include "BufAttributes.hpp"
namespace arm {
namespace app {
static uint8_t tensorArena[ACTIVATION_BUF_SZ] ACTIVATION_BUF_ATTRIBUTE;
namespace object_detection {
extern uint8_t* GetModelPointer();
extern size_t GetModelLen();
} /* namespace object_detection */
} /* namespace app */
} /* namespace arm */
#include <catch.hpp>
void GetExpectedResults(std::vector<std::vector<arm::app::object_detection::DetectionResult>> &expected_results)
{
/* Img1
0) (0.999246) -> Detection box: {x=89,y=17,w=41,h=56}
1) (0.995367) -> Detection box: {x=27,y=81,w=48,h=53}
*/
expected_results.push_back({
arm::app::object_detection::DetectionResult(0.99,89,17,41,56),
arm::app::object_detection::DetectionResult(0.99,27,81,48,53)
});
/* Img2
0) (0.998107) -> Detection box: {x=87,y=35,w=53,h=64}
*/
expected_results.push_back({
arm::app::object_detection::DetectionResult(0.99,87,35,53,64)
});
/* Img3
0) (0.999244) -> Detection box: {x=105,y=73,w=58,h=66}
1) (0.985984) -> Detection box: {x=34,y=40,w=70,h=95}
*/
expected_results.push_back({
arm::app::object_detection::DetectionResult(0.99,105,73,58,66),
arm::app::object_detection::DetectionResult(0.98,34,40,70,95)
});
/* Img4
0) (0.993294) -> Detection box: {x=22,y=43,w=39,h=53}
1) (0.992021) -> Detection box: {x=63,y=60,w=38,h=45}
*/
expected_results.push_back({
arm::app::object_detection::DetectionResult(0.99,22,43,39,53),
arm::app::object_detection::DetectionResult(0.99,63,60,38,45)
});
}
bool RunInference(arm::app::Model& model, const uint8_t imageData[])
{
TfLiteTensor* inputTensor = model.GetInputTensor(0);
REQUIRE(inputTensor);
const size_t copySz = inputTensor->bytes < IMAGE_DATA_SIZE ?
inputTensor->bytes : IMAGE_DATA_SIZE;
arm::app::image::RgbToGrayscale(imageData,inputTensor->data.uint8,copySz);
if(model.IsDataSigned()){
arm::app::image::ConvertImgToInt8(inputTensor->data.data, copySz);
}
return model.RunInference();
}
template<typename T>
void TestInferenceDetectionResults(int imageIdx, arm::app::Model& model, T tolerance) {
std::vector<arm::app::object_detection::DetectionResult> results;
auto image = get_img_array(imageIdx);
TfLiteIntArray* inputShape = model.GetInputShape(0);
auto nCols = inputShape->data[arm::app::YoloFastestModel::ms_inputColsIdx];
auto nRows = inputShape->data[arm::app::YoloFastestModel::ms_inputRowsIdx];
REQUIRE(RunInference(model, image));
std::vector<TfLiteTensor*> output_arr{model.GetOutputTensor(0), model.GetOutputTensor(1)};
for (size_t i =0; i < output_arr.size(); i++) {
REQUIRE(output_arr[i]);
REQUIRE(tflite::GetTensorData<T>(output_arr[i]));
}
const arm::app::object_detection::PostProcessParams postProcessParams {
nRows, nCols, arm::app::object_detection::originalImageSize,
arm::app::object_detection::anchor1, arm::app::object_detection::anchor2
};
arm::app::DetectorPostProcess postp{output_arr[0], output_arr[1], results, postProcessParams};
postp.DoPostProcess();
std::vector<std::vector<arm::app::object_detection::DetectionResult>> expected_results;
GetExpectedResults(expected_results);
/* Validate got the same number of boxes */
REQUIRE(results.size() == expected_results[imageIdx].size());
for (int i=0; i < (int)results.size(); i++) {
/* Validate confidence and box dimensions */
REQUIRE(std::abs(results[i].m_normalisedVal - expected_results[imageIdx][i].m_normalisedVal) < 0.1);
REQUIRE(static_cast<int>(results[i].m_x0) == Approx(static_cast<int>((T)expected_results[imageIdx][i].m_x0)).epsilon(tolerance));
REQUIRE(static_cast<int>(results[i].m_y0) == Approx(static_cast<int>((T)expected_results[imageIdx][i].m_y0)).epsilon(tolerance));
REQUIRE(static_cast<int>(results[i].m_w) == Approx(static_cast<int>((T)expected_results[imageIdx][i].m_w)).epsilon(tolerance));
REQUIRE(static_cast<int>(results[i].m_h) == Approx(static_cast<int>((T)expected_results[imageIdx][i].m_h)).epsilon(tolerance));
}
}
TEST_CASE("Running inference with TensorFlow Lite Micro and YoloFastest", "[YoloFastest]")
{
SECTION("Executing inferences sequentially")
{
arm::app::YoloFastestModel model{};
REQUIRE_FALSE(model.IsInited());
REQUIRE(model.Init(arm::app::tensorArena,
sizeof(arm::app::tensorArena),
arm::app::object_detection::GetModelPointer(),
arm::app::object_detection::GetModelLen()));
REQUIRE(model.IsInited());
for (uint32_t i = 0 ; i < NUMBER_OF_FILES; ++i) {
TestInferenceDetectionResults<uint8_t>(i, model, 1);
}
}
for (uint32_t i = 0 ; i < NUMBER_OF_FILES; ++i) {
DYNAMIC_SECTION("Executing inference with re-init")
{
arm::app::YoloFastestModel model{};
REQUIRE_FALSE(model.IsInited());
REQUIRE(model.Init(arm::app::tensorArena,
sizeof(arm::app::tensorArena),
arm::app::object_detection::GetModelPointer(),
arm::app::object_detection::GetModelLen()));
REQUIRE(model.IsInited());
TestInferenceDetectionResults<uint8_t>(i, model, 1);
}
}
}