blob: 620ce6c6a43222f59a4fa312521239f6c6771b3e [file] [log] [blame]
/*
* Copyright (c) 2022 Arm Limited. All rights reserved.
* 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 "UseCaseHandler.hpp"
#include "InputFiles.hpp"
#include "YoloFastestModel.hpp"
#include "UseCaseCommonUtils.hpp"
#include "DetectorPostProcessing.hpp"
#include "hal.h"
#include "log_macros.h"
#include <cinttypes>
namespace arm {
namespace app {
/**
* @brief Presents inference results along using the data presentation
* object.
* @param[in] platform Reference to the hal platform object.
* @param[in] results Vector of detection results to be displayed.
* @return true if successful, false otherwise.
**/
static bool PresentInferenceResult(hal_platform& platform,
const std::vector<arm::app::object_detection::DetectionResult>& results);
/* Object detection classification handler. */
bool ObjectDetectionHandler(ApplicationContext& ctx, uint32_t imgIndex, bool runAll)
{
auto& platform = ctx.Get<hal_platform&>("platform");
auto& profiler = ctx.Get<Profiler&>("profiler");
constexpr uint32_t dataPsnImgDownscaleFactor = 1;
constexpr uint32_t dataPsnImgStartX = 10;
constexpr uint32_t dataPsnImgStartY = 35;
constexpr uint32_t dataPsnTxtInfStartX = 150;
constexpr uint32_t dataPsnTxtInfStartY = 40;
platform.data_psn->clear(COLOR_BLACK);
auto& model = ctx.Get<Model&>("model");
/* If the request has a valid size, set the image index. */
if (imgIndex < NUMBER_OF_FILES) {
if (!SetAppCtxIfmIdx(ctx, imgIndex, "imgIndex")) {
return false;
}
}
if (!model.IsInited()) {
printf_err("Model is not initialised! Terminating processing.\n");
return false;
}
auto curImIdx = ctx.Get<uint32_t>("imgIndex");
TfLiteTensor* inputTensor = model.GetInputTensor(0);
if (!inputTensor->dims) {
printf_err("Invalid input tensor dims\n");
return false;
} else if (inputTensor->dims->size < 3) {
printf_err("Input tensor dimension should be >= 3\n");
return false;
}
TfLiteIntArray* inputShape = model.GetInputShape(0);
const uint32_t nCols = inputShape->data[arm::app::YoloFastestModel::ms_inputColsIdx];
const uint32_t nRows = inputShape->data[arm::app::YoloFastestModel::ms_inputRowsIdx];
const uint32_t nPresentationChannels = channelsImageDisplayed;
/* Get pre/post-processing objects. */
auto& postp = ctx.Get<object_detection::DetectorPostprocessing&>("postprocess");
do {
/* Strings for presentation/logging. */
std::string str_inf{"Running inference... "};
const uint8_t* curr_image = get_img_array(ctx.Get<uint32_t>("imgIndex"));
/* Copy over the data and convert to grayscale */
auto* dstPtr = static_cast<uint8_t*>(inputTensor->data.uint8);
const size_t copySz = inputTensor->bytes < IMAGE_DATA_SIZE ?
inputTensor->bytes : IMAGE_DATA_SIZE;
/* Copy of the image used for presentation, original images are read-only */
std::vector<uint8_t> g_image_buffer(nCols*nRows*channelsImageDisplayed);
if (nPresentationChannels == 3) {
memcpy(g_image_buffer.data(),curr_image, nCols * nRows * channelsImageDisplayed);
} else {
image::RgbToGrayscale(curr_image, g_image_buffer.data(), nCols * nRows);
}
image::RgbToGrayscale(curr_image, dstPtr, copySz);
/* Display this image on the LCD. */
platform.data_psn->present_data_image(
g_image_buffer.data(),
nCols, nRows, nPresentationChannels,
dataPsnImgStartX, dataPsnImgStartY, dataPsnImgDownscaleFactor);
/* If the data is signed. */
if (model.IsDataSigned()) {
image::ConvertImgToInt8(inputTensor->data.data, inputTensor->bytes);
}
/* Display message on the LCD - inference running. */
platform.data_psn->present_data_text(str_inf.c_str(), str_inf.size(),
dataPsnTxtInfStartX, dataPsnTxtInfStartY, 0);
/* Run inference over this image. */
info("Running inference on image %" PRIu32 " => %s\n", ctx.Get<uint32_t>("imgIndex"),
get_filename(ctx.Get<uint32_t>("imgIndex")));
if (!RunInference(model, profiler)) {
return false;
}
/* Erase. */
str_inf = std::string(str_inf.size(), ' ');
platform.data_psn->present_data_text(str_inf.c_str(), str_inf.size(),
dataPsnTxtInfStartX, dataPsnTxtInfStartY, 0);
/* Detector post-processing*/
std::vector<object_detection::DetectionResult> results;
TfLiteTensor* modelOutput0 = model.GetOutputTensor(0);
TfLiteTensor* modelOutput1 = model.GetOutputTensor(1);
postp.RunPostProcessing(
g_image_buffer.data(),
nRows,
nCols,
modelOutput0,
modelOutput1,
results);
platform.data_psn->present_data_image(
g_image_buffer.data(),
nCols, nRows, nPresentationChannels,
dataPsnImgStartX, dataPsnImgStartY, dataPsnImgDownscaleFactor);
#if VERIFY_TEST_OUTPUT
arm::app::DumpTensor(modelOutput0);
arm::app::DumpTensor(modelOutput1);
#endif /* VERIFY_TEST_OUTPUT */
if (!PresentInferenceResult(platform, results)) {
return false;
}
profiler.PrintProfilingResult();
IncrementAppCtxIfmIdx(ctx,"imgIndex");
} while (runAll && ctx.Get<uint32_t>("imgIndex") != curImIdx);
return true;
}
static bool PresentInferenceResult(hal_platform& platform,
const std::vector<arm::app::object_detection::DetectionResult>& results)
{
platform.data_psn->set_text_color(COLOR_GREEN);
/* If profiling is enabled, and the time is valid. */
info("Final results:\n");
info("Total number of inferences: 1\n");
for (uint32_t i = 0; i < results.size(); ++i) {
info("%" PRIu32 ") (%f) -> %s {x=%d,y=%d,w=%d,h=%d}\n", i,
results[i].m_normalisedVal, "Detection box:",
results[i].m_x0, results[i].m_y0, results[i].m_w, results[i].m_h );
}
return true;
}
} /* namespace app */
} /* namespace arm */