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segnet.cpp
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segnet.cpp
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/*
* Copyright (c) 2020, NVIDIA CORPORATION. All rights reserved.
*
* 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 "videoSource.h"
#include "videoOutput.h"
#include "cudaOverlay.h"
#include "cudaMappedMemory.h"
#include "segNet.h"
#include <signal.h>
#ifdef HEADLESS
#define IS_HEADLESS() "headless" // run without display
#define DEFAULT_VISUALIZATION "overlay" // output overlay only
#else
#define IS_HEADLESS() (const char*)NULL // use display (if attached)
#define DEFAULT_VISUALIZATION "overlay|mask" // output overlay + mask
#endif
bool signal_recieved = false;
void sig_handler(int signo)
{
if( signo == SIGINT )
{
LogVerbose("received SIGINT\n");
signal_recieved = true;
}
}
int usage()
{
printf("usage: segnet [--help] [--network NETWORK] ...\n");
printf(" input_URI [output_URI]\n\n");
printf("Segment and classify a video/image stream using a semantic segmentation DNN.\n");
printf("See below for additional arguments that may not be shown above.\n\n");
printf("positional arguments:\n");
printf(" input_URI resource URI of input stream (see videoSource below)\n");
printf(" output_URI resource URI of output stream (see videoOutput below)\n\n");
printf("%s\n", segNet::Usage());
printf("%s\n", videoSource::Usage());
printf("%s\n", videoOutput::Usage());
printf("%s\n", Log::Usage());
return 0;
}
//
// segmentation buffers
//
typedef uchar3 pixelType; // this can be uchar3, uchar4, float3, float4
pixelType* imgMask = NULL; // color of each segmentation class
pixelType* imgOverlay = NULL; // input + alpha-blended mask
pixelType* imgComposite = NULL; // overlay with mask next to it
pixelType* imgOutput = NULL; // reference to one of the above three
int2 maskSize;
int2 overlaySize;
int2 compositeSize;
int2 outputSize;
// allocate mask/overlay output buffers
bool allocBuffers( int width, int height, uint32_t flags )
{
// check if the buffers were already allocated for this size
if( imgOverlay != NULL && width == overlaySize.x && height == overlaySize.y )
return true;
// free previous buffers if they exit
CUDA_FREE_HOST(imgMask);
CUDA_FREE_HOST(imgOverlay);
CUDA_FREE_HOST(imgComposite);
// allocate overlay image
overlaySize = make_int2(width, height);
if( flags & segNet::VISUALIZE_OVERLAY )
{
if( !cudaAllocMapped(&imgOverlay, overlaySize) )
{
LogError("segnet: failed to allocate CUDA memory for overlay image (%ux%u)\n", width, height);
return false;
}
imgOutput = imgOverlay;
outputSize = overlaySize;
}
// allocate mask image (half the size, unless it's the only output)
if( flags & segNet::VISUALIZE_MASK )
{
maskSize = (flags & segNet::VISUALIZE_OVERLAY) ? make_int2(width/2, height/2) : overlaySize;
if( !cudaAllocMapped(&imgMask, maskSize) )
{
LogError("segnet: failed to allocate CUDA memory for mask image\n");
return false;
}
imgOutput = imgMask;
outputSize = maskSize;
}
// allocate composite image if both overlay and mask are used
if( (flags & segNet::VISUALIZE_OVERLAY) && (flags & segNet::VISUALIZE_MASK) )
{
compositeSize = make_int2(overlaySize.x + maskSize.x, overlaySize.y);
if( !cudaAllocMapped(&imgComposite, compositeSize) )
{
LogError("segnet: failed to allocate CUDA memory for composite image\n");
return false;
}
imgOutput = imgComposite;
outputSize = compositeSize;
}
return true;
}
int main( int argc, char** argv )
{
/*
* parse command line
*/
commandLine cmdLine(argc, argv, IS_HEADLESS());
if( cmdLine.GetFlag("help") )
return usage();
/*
* attach signal handler
*/
if( signal(SIGINT, sig_handler) == SIG_ERR )
LogError("can't catch SIGINT\n");
/*
* create input stream
*/
videoSource* input = videoSource::Create(cmdLine, ARG_POSITION(0));
if( !input )
{
LogError("segnet: failed to create input stream\n");
return 0;
}
/*
* create output stream
*/
videoOutput* output = videoOutput::Create(cmdLine, ARG_POSITION(1));
if( !output )
LogError("segnet: failed to create output stream\n");
/*
* create segmentation network
*/
segNet* net = segNet::Create(cmdLine);
if( !net )
{
LogError("segnet: failed to initialize segNet\n");
return 0;
}
// set alpha blending value for classes that don't explicitly already have an alpha
net->SetOverlayAlpha(cmdLine.GetFloat("alpha", 180.0f));
// get the desired overlay/mask filtering mode
const segNet::FilterMode filterMode = segNet::FilterModeFromStr(cmdLine.GetString("filter-mode", "linear"));
// get the visualization flags
const uint32_t visualizationFlags = segNet::VisualizationFlagsFromStr(cmdLine.GetString("visualize", DEFAULT_VISUALIZATION));
// get the object class to ignore (if any)
const char* ignoreClass = cmdLine.GetString("ignore-class", "void");
/*
* processing loop
*/
while( !signal_recieved )
{
// capture next image image
pixelType* imgInput = NULL;
if( !input->Capture(&imgInput, 1000) )
{
LogError("segnet: failed to capture video frame\n");
continue;
}
// allocate buffers for this size frame
if( !allocBuffers(input->GetWidth(), input->GetHeight(), visualizationFlags) )
{
LogError("segnet: failed to allocate buffers\n");
continue;
}
// process the segmentation network
if( !net->Process(imgInput, input->GetWidth(), input->GetHeight(), ignoreClass) )
{
LogError("segnet: failed to process segmentation\n");
continue;
}
// generate overlay
if( visualizationFlags & segNet::VISUALIZE_OVERLAY )
{
if( !net->Overlay(imgOverlay, overlaySize.x, overlaySize.y, filterMode) )
{
LogError("segnet: failed to process segmentation overlay.\n");
continue;
}
}
// generate mask
if( visualizationFlags & segNet::VISUALIZE_MASK )
{
if( !net->Mask(imgMask, maskSize.x, maskSize.y, filterMode) )
{
LogError("segnet:-console: failed to process segmentation mask.\n");
continue;
}
}
// generate composite
if( (visualizationFlags & segNet::VISUALIZE_OVERLAY) && (visualizationFlags & segNet::VISUALIZE_MASK) )
{
CUDA(cudaOverlay(imgOverlay, overlaySize, imgComposite, compositeSize, 0, 0));
CUDA(cudaOverlay(imgMask, maskSize, imgComposite, compositeSize, overlaySize.x, 0));
}
// render outputs
if( output != NULL )
{
output->Render(imgOutput, outputSize.x, outputSize.y);
// update the status bar
char str[256];
sprintf(str, "TensorRT %i.%i.%i | %s | Network %.0f FPS", NV_TENSORRT_MAJOR, NV_TENSORRT_MINOR, NV_TENSORRT_PATCH, net->GetNetworkName(), net->GetNetworkFPS());
output->SetStatus(str);
// check if the user quit
if( !output->IsStreaming() )
signal_recieved = true;
}
// check for EOS
if( !input->IsStreaming() )
signal_recieved = true;
// wait for the GPU to finish
CUDA(cudaDeviceSynchronize());
// print out timing info
net->PrintProfilerTimes();
}
/*
* destroy resources
*/
LogVerbose("segnet: shutting down...\n");
SAFE_DELETE(input);
SAFE_DELETE(output);
SAFE_DELETE(net);
CUDA_FREE_HOST(imgMask);
CUDA_FREE_HOST(imgOverlay);
CUDA_FREE_HOST(imgComposite);
LogVerbose("segnet: shutdown complete.\n");
return 0;
}