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bd6994cc66
* Add new loss layer for binary loss per pixel
191 lines
7.3 KiB
C++
191 lines
7.3 KiB
C++
// The contents of this file are in the public domain. See LICENSE_FOR_EXAMPLE_PROGRAMS.txt
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/*
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This example shows how to do instance segmentation on an image using net pretrained
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on the PASCAL VOC2012 dataset. For an introduction to what instance segmentation is,
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see the accompanying header file dnn_instance_segmentation_ex.h.
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Instructions how to run the example:
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1. Download the PASCAL VOC2012 data, and untar it somewhere.
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http://host.robots.ox.ac.uk/pascal/VOC/voc2012/VOCtrainval_11-May-2012.tar
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2. Build the dnn_instance_segmentation_train_ex example program.
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3. Run:
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./dnn_instance_segmentation_train_ex /path/to/VOC2012
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4. Wait while the network is being trained.
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5. Build the dnn_instance_segmentation_ex example program.
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6. Run:
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./dnn_instance_segmentation_ex /path/to/VOC2012-or-other-images
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An alternative to steps 2-4 above is to download a pre-trained network
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from here: http://dlib.net/files/instance_segmentation_voc2012net_v2.dnn
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It would be a good idea to become familiar with dlib's DNN tooling before reading this
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example. So you should read dnn_introduction_ex.cpp and dnn_introduction2_ex.cpp
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before reading this example program.
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*/
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#include "dnn_instance_segmentation_ex.h"
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#include "pascal_voc_2012.h"
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#include <iostream>
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#include <dlib/data_io.h>
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#include <dlib/gui_widgets.h>
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using namespace std;
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using namespace dlib;
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// ----------------------------------------------------------------------------------------
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int main(int argc, char** argv) try
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{
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if (argc != 2)
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{
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cout << "You call this program like this: " << endl;
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cout << "./dnn_instance_segmentation_train_ex /path/to/images" << endl;
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cout << endl;
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cout << "You will also need a trained '" << instance_segmentation_net_filename << "' file." << endl;
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cout << "You can either train it yourself (see example program" << endl;
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cout << "dnn_instance_segmentation_train_ex), or download a" << endl;
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cout << "copy from here: http://dlib.net/files/" << instance_segmentation_net_filename << endl;
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return 1;
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}
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// Read the file containing the trained networks from the working directory.
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det_anet_type det_net;
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std::map<std::string, seg_bnet_type> seg_nets_by_class;
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deserialize(instance_segmentation_net_filename) >> det_net >> seg_nets_by_class;
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// Show inference results in a window.
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image_window win;
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matrix<rgb_pixel> input_image;
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// Find supported image files.
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const std::vector<file> files = dlib::get_files_in_directory_tree(argv[1],
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dlib::match_endings(".jpeg .jpg .png"));
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dlib::rand rnd;
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cout << "Found " << files.size() << " images, processing..." << endl;
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for (const file& file : files)
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{
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// Load the input image.
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load_image(input_image, file.full_name());
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// Find instances in the input image
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const auto instances = det_net(input_image);
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matrix<rgb_pixel> rgb_label_image;
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matrix<float> label_image_confidence;
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matrix<rgb_pixel> input_chip;
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rgb_label_image.set_size(input_image.nr(), input_image.nc());
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rgb_label_image = rgb_pixel(0, 0, 0);
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label_image_confidence.set_size(input_image.nr(), input_image.nc());
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label_image_confidence = 0.0;
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bool found_something = false;
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for (const auto& instance : instances)
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{
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if (!found_something)
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{
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cout << "Found ";
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found_something = true;
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}
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else
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{
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cout << ", ";
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}
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cout << instance.label;
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const auto cropping_rect = get_cropping_rect(instance.rect);
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const chip_details chip_details(cropping_rect, chip_dims(seg_dim, seg_dim));
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extract_image_chip(input_image, chip_details, input_chip, interpolate_bilinear());
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const auto i = seg_nets_by_class.find(instance.label);
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if (i == seg_nets_by_class.end())
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{
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// per-class segmentation net not found, so we must be using the same net for all classes
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// (see bool separate_seg_net_for_each_class in dnn_instance_segmentation_train_ex.cpp)
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DLIB_CASSERT(seg_nets_by_class.size() == 1);
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DLIB_CASSERT(seg_nets_by_class.begin()->first == "");
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}
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auto& seg_net = i != seg_nets_by_class.end()
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? i->second // use the segmentation net trained for this class
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: seg_nets_by_class.begin()->second; // use the same segmentation net for all classes
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const auto mask = seg_net(input_chip);
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const rgb_pixel random_color(
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rnd.get_random_8bit_number(),
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rnd.get_random_8bit_number(),
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rnd.get_random_8bit_number()
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);
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dlib::matrix<float> resized_mask(
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static_cast<int>(chip_details.rect.height()),
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static_cast<int>(chip_details.rect.width())
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);
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dlib::resize_image(mask, resized_mask);
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for (int r = 0; r < resized_mask.nr(); ++r)
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{
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for (int c = 0; c < resized_mask.nc(); ++c)
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{
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const auto new_confidence = resized_mask(r, c);
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if (new_confidence > 0)
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{
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const auto y = chip_details.rect.top() + r;
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const auto x = chip_details.rect.left() + c;
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if (y >= 0 && y < rgb_label_image.nr() && x >= 0 && x < rgb_label_image.nc())
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{
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auto& current_confidence = label_image_confidence(y, x);
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if (new_confidence > current_confidence)
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{
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auto rgb_label = random_color;
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const auto baseline_confidence = 5;
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if (new_confidence < baseline_confidence)
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{
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// Scale label intensity if confidence isn't high
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rgb_label.red *= new_confidence / baseline_confidence;
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rgb_label.green *= new_confidence / baseline_confidence;
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rgb_label.blue *= new_confidence / baseline_confidence;
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}
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rgb_label_image(y, x) = rgb_label;
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current_confidence = new_confidence;
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}
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}
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}
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}
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}
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const Voc2012class& voc2012_class = find_voc2012_class(
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[&instance](const Voc2012class& candidate) {
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return candidate.classlabel == instance.label;
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}
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);
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dlib::draw_rectangle(rgb_label_image, instance.rect, voc2012_class.rgb_label, 1);
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}
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// Show the input image on the left, and the predicted RGB labels on the right.
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win.set_image(join_rows(input_image, rgb_label_image));
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if (!instances.empty())
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{
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cout << " in " << file.name() << " - hit enter to process the next image";
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cin.get();
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}
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}
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}
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catch(std::exception& e)
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{
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cout << e.what() << endl;
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}
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