mirror of https://github.com/opencv/opencv.git
parent
af64ecdf25
commit
02fe93a399
3 changed files with 390 additions and 1 deletions
@ -0,0 +1,37 @@ |
||||
SET(OPENCV_VISUALISATION_DEPS opencv_core opencv_highgui opencv_imgproc opencv_videoio opencv_imgcodecs) |
||||
ocv_check_dependencies(${OPENCV_VISUALISATION_DEPS}) |
||||
|
||||
if(NOT OCV_DEPENDENCIES_FOUND) |
||||
return() |
||||
endif() |
||||
|
||||
project(visualisation) |
||||
set(the_target opencv_visualisation) |
||||
|
||||
ocv_target_include_directories(${the_target} PRIVATE "${CMAKE_CURRENT_SOURCE_DIR}" "${OpenCV_SOURCE_DIR}/include/opencv") |
||||
ocv_target_include_modules_recurse(${the_target} ${OPENCV_VISUALISATION_DEPS}) |
||||
|
||||
file(GLOB SRCS *.cpp) |
||||
|
||||
set(visualisation_files ${SRCS}) |
||||
ocv_add_executable(${the_target} ${visualisation_files}) |
||||
ocv_target_link_libraries(${the_target} ${OPENCV_VISUALISATION_DEPS}) |
||||
|
||||
set_target_properties(${the_target} PROPERTIES |
||||
DEBUG_POSTFIX "${OPENCV_DEBUG_POSTFIX}" |
||||
ARCHIVE_OUTPUT_DIRECTORY ${LIBRARY_OUTPUT_PATH} |
||||
RUNTIME_OUTPUT_DIRECTORY ${EXECUTABLE_OUTPUT_PATH} |
||||
INSTALL_NAME_DIR lib |
||||
OUTPUT_NAME "opencv_visualisation") |
||||
|
||||
if(ENABLE_SOLUTION_FOLDERS) |
||||
set_target_properties(${the_target} PROPERTIES FOLDER "applications") |
||||
endif() |
||||
|
||||
if(INSTALL_CREATE_DISTRIB) |
||||
if(BUILD_SHARED_LIBS) |
||||
install(TARGETS ${the_target} RUNTIME DESTINATION ${OPENCV_BIN_INSTALL_PATH} CONFIGURATIONS Release COMPONENT dev) |
||||
endif() |
||||
else() |
||||
install(TARGETS ${the_target} RUNTIME DESTINATION ${OPENCV_BIN_INSTALL_PATH} COMPONENT dev) |
||||
endif() |
@ -0,0 +1,352 @@ |
||||
////////////////////////////////////////////////////////////////////////////////////////
|
||||
//
|
||||
// IMPORTANT: READ BEFORE DOWNLOADING, COPYING, INSTALLING OR USING.
|
||||
//
|
||||
// By downloading, copying, installing or using the software you agree to this license.
|
||||
// If you do not agree to this license, do not download, install,
|
||||
// copy or use the software.
|
||||
//
|
||||
//
|
||||
// License Agreement
|
||||
// For Open Source Computer Vision Library
|
||||
//
|
||||
// Copyright (C) 2000-2008, Intel Corporation, all rights reserved.
|
||||
// Copyright (C) 2009, Willow Garage Inc., all rights reserved.
|
||||
// Copyright (C) 2013, OpenCV Foundation, all rights reserved.
|
||||
// Third party copyrights are property of their respective owners.
|
||||
//
|
||||
// Redistribution and use in source and binary forms, with or without modification,
|
||||
// are permitted provided that the following conditions are met:
|
||||
//
|
||||
// * Redistribution's of source code must retain the above copyright notice,
|
||||
// this list of conditions and the following disclaimer.
|
||||
//
|
||||
// * Redistribution's in binary form must reproduce the above copyright notice,
|
||||
// this list of conditions and the following disclaimer in the documentation
|
||||
// and/or other materials provided with the distribution.
|
||||
//
|
||||
// * The name of the copyright holders may not be used to endorse or promote products
|
||||
// derived from this software without specific prior written permission.
|
||||
//
|
||||
// This software is provided by the copyright holders and contributors "as is" and
|
||||
// any express or implied warranties, including, but not limited to, the implied
|
||||
// warranties of merchantability and fitness for a particular purpose are disclaimed.
|
||||
// In no event shall the Intel Corporation or contributors be liable for any direct,
|
||||
// indirect, incidental, special, exemplary, or consequential damages
|
||||
// (including, but not limited to, procurement of substitute goods or services;
|
||||
// loss of use, data, or profits; or business interruption) however caused
|
||||
// and on any theory of liability, whether in contract, strict liability,
|
||||
// or tort (including negligence or otherwise) arising in any way out of
|
||||
// the use of this software, even if advised of the possibility of such damage.
|
||||
//
|
||||
////////////////////////////////////////////////////////////////////////////////////////
|
||||
|
||||
/*****************************************************************************************************
|
||||
|
||||
Software for visualising cascade classifier models trained by OpenCV and to get a better |
||||
understanding of the used features. |
||||
|
||||
USAGE: |
||||
./visualise_models -model <model.xml> -image <ref.png> -data <output folder> |
||||
|
||||
LIMITS |
||||
- Use an absolute path for the output folder to ensure the tool works |
||||
- Only handles cascade classifier models |
||||
- Handles stumps only for the moment |
||||
- Needs a valid training/test sample window with the original model dimensions, passed as `ref.png` |
||||
- Can handle HAAR and LBP features |
||||
|
||||
Created by: Puttemans Steven - April 2016 |
||||
*****************************************************************************************************/ |
||||
|
||||
#include <opencv2/core.hpp> |
||||
#include <opencv2/highgui.hpp> |
||||
#include <opencv2/imgproc.hpp> |
||||
#include <opencv2/imgcodecs.hpp> |
||||
#include <opencv2/videoio.hpp> |
||||
|
||||
#include <fstream> |
||||
#include <iostream> |
||||
|
||||
using namespace std; |
||||
using namespace cv; |
||||
|
||||
struct rect_data{ |
||||
int x; |
||||
int y; |
||||
int w; |
||||
int h; |
||||
float weight; |
||||
}; |
||||
|
||||
int main( int argc, const char** argv ) |
||||
{ |
||||
// Read in the input arguments
|
||||
string model = ""; |
||||
string output_folder = ""; |
||||
string image_ref = ""; |
||||
for(int i = 1; i < argc; ++i ) |
||||
{ |
||||
if( !strcmp( argv[i], "-model" ) ) |
||||
{ |
||||
model = argv[++i]; |
||||
}else if( !strcmp( argv[i], "-image" ) ){ |
||||
image_ref = argv[++i]; |
||||
}else if( !strcmp( argv[i], "-data" ) ){ |
||||
output_folder = argv[++i]; |
||||
} |
||||
} |
||||
|
||||
// Value for timing
|
||||
// You can increase this to have a better visualisation during the generation
|
||||
int timing = 1; |
||||
|
||||
// Value for cols of storing elements
|
||||
int cols_prefered = 5; |
||||
|
||||
// Open the XML model
|
||||
FileStorage fs; |
||||
fs.open(model, FileStorage::READ); |
||||
|
||||
// Get a the required information
|
||||
// First decide which feature type we are using
|
||||
FileNode cascade = fs["cascade"]; |
||||
string feature_type = cascade["featureType"]; |
||||
bool haar = false, lbp = false; |
||||
if (feature_type.compare("HAAR") == 0){ |
||||
haar = true; |
||||
} |
||||
if (feature_type.compare("LBP") == 0){ |
||||
lbp = true; |
||||
} |
||||
if ( feature_type.compare("HAAR") != 0 && feature_type.compare("LBP")){ |
||||
cerr << "The model is not an HAAR or LBP feature based model!" << endl; |
||||
cerr << "Please select a model that can be visualized by the software." << endl; |
||||
return -1; |
||||
} |
||||
|
||||
// We make a visualisation mask - which increases the window to make it at least a bit more visible
|
||||
int resize_factor = 10; |
||||
int resize_storage_factor = 10; |
||||
Mat reference_image = imread(image_ref, IMREAD_GRAYSCALE ); |
||||
Mat visualization; |
||||
resize(reference_image, visualization, Size(reference_image.cols * resize_factor, reference_image.rows * resize_factor)); |
||||
|
||||
// First recover for each stage the number of weak features and their index
|
||||
// Important since it is NOT sequential when using LBP features
|
||||
vector< vector<int> > stage_features; |
||||
FileNode stages = cascade["stages"]; |
||||
FileNodeIterator it_stages = stages.begin(), it_stages_end = stages.end(); |
||||
int idx = 0; |
||||
for( ; it_stages != it_stages_end; it_stages++, idx++ ){ |
||||
vector<int> current_feature_indexes; |
||||
FileNode weak_classifiers = (*it_stages)["weakClassifiers"]; |
||||
FileNodeIterator it_weak = weak_classifiers.begin(), it_weak_end = weak_classifiers.end(); |
||||
vector<int> values; |
||||
for(int idy = 0; it_weak != it_weak_end; it_weak++, idy++ ){ |
||||
(*it_weak)["internalNodes"] >> values; |
||||
current_feature_indexes.push_back( (int)values[2] ); |
||||
} |
||||
stage_features.push_back(current_feature_indexes); |
||||
} |
||||
|
||||
// If the output option has been chosen than we will store a combined image plane for
|
||||
// each stage, containing all weak classifiers for that stage.
|
||||
bool draw_planes = false; |
||||
stringstream output_video; |
||||
output_video << output_folder << "model_visualization.avi"; |
||||
VideoWriter result_video; |
||||
if( output_folder.compare("") != 0 ){ |
||||
draw_planes = true; |
||||
result_video.open(output_video.str(), VideoWriter::fourcc('X','V','I','D'), 15, Size(reference_image.cols * resize_factor, reference_image.rows * resize_factor), false); |
||||
} |
||||
|
||||
if(haar){ |
||||
// Grab the corresponding features dimensions and weights
|
||||
FileNode features = cascade["features"]; |
||||
vector< vector< rect_data > > feature_data; |
||||
FileNodeIterator it_features = features.begin(), it_features_end = features.end(); |
||||
for(int idf = 0; it_features != it_features_end; it_features++, idf++ ){ |
||||
vector< rect_data > current_feature_rectangles; |
||||
FileNode rectangles = (*it_features)["rects"]; |
||||
int nrects = (int)rectangles.size(); |
||||
for(int k = 0; k < nrects; k++){ |
||||
rect_data current_data; |
||||
FileNode single_rect = rectangles[k]; |
||||
current_data.x = (int)single_rect[0]; |
||||
current_data.y = (int)single_rect[1]; |
||||
current_data.w = (int)single_rect[2]; |
||||
current_data.h = (int)single_rect[3]; |
||||
current_data.weight = (float)single_rect[4]; |
||||
current_feature_rectangles.push_back(current_data); |
||||
} |
||||
feature_data.push_back(current_feature_rectangles); |
||||
} |
||||
|
||||
// Loop over each possible feature on its index, visualise on the mask and wait a bit,
|
||||
// then continue to the next feature.
|
||||
// If visualisations should be stored then do the in between calculations
|
||||
Mat image_plane; |
||||
Mat metadata = Mat::zeros(150, 1000, CV_8UC1); |
||||
vector< rect_data > current_rects; |
||||
for(int sid = 0; sid < (int)stage_features.size(); sid ++){ |
||||
if(draw_planes){ |
||||
int features_nmbr = (int)stage_features[sid].size(); |
||||
int cols = cols_prefered; |
||||
int rows = features_nmbr / cols; |
||||
if( (features_nmbr % cols) > 0){ |
||||
rows++; |
||||
} |
||||
image_plane = Mat::zeros(reference_image.rows * resize_storage_factor * rows, reference_image.cols * resize_storage_factor * cols, CV_8UC1); |
||||
} |
||||
for(int fid = 0; fid < (int)stage_features[sid].size(); fid++){ |
||||
stringstream meta1, meta2; |
||||
meta1 << "Stage " << sid << " / Feature " << fid; |
||||
meta2 << "Rectangles: "; |
||||
Mat temp_window = visualization.clone(); |
||||
Mat temp_metadata = metadata.clone(); |
||||
int current_feature_index = stage_features[sid][fid]; |
||||
current_rects = feature_data[current_feature_index]; |
||||
Mat single_feature = reference_image.clone(); |
||||
resize(single_feature, single_feature, Size(), resize_storage_factor, resize_storage_factor); |
||||
for(int i = 0; i < (int)current_rects.size(); i++){ |
||||
rect_data local = current_rects[i]; |
||||
if(draw_planes){ |
||||
if(local.weight >= 0){ |
||||
rectangle(single_feature, Rect(local.x * resize_storage_factor, local.y * resize_storage_factor, local.w * resize_storage_factor, local.h * resize_storage_factor), Scalar(0), FILLED); |
||||
}else{ |
||||
rectangle(single_feature, Rect(local.x * resize_storage_factor, local.y * resize_storage_factor, local.w * resize_storage_factor, local.h * resize_storage_factor), Scalar(255), FILLED); |
||||
} |
||||
} |
||||
Rect part(local.x * resize_factor, local.y * resize_factor, local.w * resize_factor, local.h * resize_factor); |
||||
meta2 << part << " (w " << local.weight << ") "; |
||||
if(local.weight >= 0){ |
||||
rectangle(temp_window, part, Scalar(0), FILLED); |
||||
}else{ |
||||
rectangle(temp_window, part, Scalar(255), FILLED); |
||||
} |
||||
} |
||||
imshow("features", temp_window); |
||||
putText(temp_window, meta1.str(), Point(15,15), FONT_HERSHEY_SIMPLEX, 0.5, Scalar(255)); |
||||
result_video.write(temp_window); |
||||
// Copy the feature image if needed
|
||||
if(draw_planes){ |
||||
single_feature.copyTo(image_plane(Rect(0 + (fid%cols_prefered)*single_feature.cols, 0 + (fid/cols_prefered) * single_feature.rows, single_feature.cols, single_feature.rows))); |
||||
} |
||||
putText(temp_metadata, meta1.str(), Point(15,15), FONT_HERSHEY_SIMPLEX, 0.5, Scalar(255)); |
||||
putText(temp_metadata, meta2.str(), Point(15,40), FONT_HERSHEY_SIMPLEX, 0.5, Scalar(255)); |
||||
imshow("metadata", temp_metadata); |
||||
waitKey(timing); |
||||
} |
||||
//Store the stage image if needed
|
||||
if(draw_planes){ |
||||
stringstream save_location; |
||||
save_location << output_folder << "stage_" << sid << ".png"; |
||||
imwrite(save_location.str(), image_plane); |
||||
} |
||||
} |
||||
} |
||||
|
||||
if(lbp){ |
||||
// Grab the corresponding features dimensions and weights
|
||||
FileNode features = cascade["features"]; |
||||
vector<Rect> feature_data; |
||||
FileNodeIterator it_features = features.begin(), it_features_end = features.end(); |
||||
for(int idf = 0; it_features != it_features_end; it_features++, idf++ ){ |
||||
FileNode rectangle = (*it_features)["rect"]; |
||||
Rect current_feature ((int)rectangle[0], (int)rectangle[1], (int)rectangle[2], (int)rectangle[3]); |
||||
feature_data.push_back(current_feature); |
||||
} |
||||
|
||||
// Loop over each possible feature on its index, visualise on the mask and wait a bit,
|
||||
// then continue to the next feature.
|
||||
Mat image_plane; |
||||
Mat metadata = Mat::zeros(150, 1000, CV_8UC1); |
||||
for(int sid = 0; sid < (int)stage_features.size(); sid ++){ |
||||
if(draw_planes){ |
||||
int features_nmbr = (int)stage_features[sid].size(); |
||||
int cols = cols_prefered; |
||||
int rows = features_nmbr / cols; |
||||
if( (features_nmbr % cols) > 0){ |
||||
rows++; |
||||
} |
||||
image_plane = Mat::zeros(reference_image.rows * resize_storage_factor * rows, reference_image.cols * resize_storage_factor * cols, CV_8UC1); |
||||
} |
||||
for(int fid = 0; fid < (int)stage_features[sid].size(); fid++){ |
||||
stringstream meta1, meta2; |
||||
meta1 << "Stage " << sid << " / Feature " << fid; |
||||
meta2 << "Rectangle: "; |
||||
Mat temp_window = visualization.clone(); |
||||
Mat temp_metadata = metadata.clone(); |
||||
int current_feature_index = stage_features[sid][fid]; |
||||
Rect current_rect = feature_data[current_feature_index]; |
||||
Mat single_feature = reference_image.clone(); |
||||
resize(single_feature, single_feature, Size(), resize_storage_factor, resize_storage_factor); |
||||
|
||||
// VISUALISATION
|
||||
// The rectangle is the top left one of a 3x3 block LBP constructor
|
||||
Rect resized(current_rect.x * resize_factor, current_rect.y * resize_factor, current_rect.width * resize_factor, current_rect.height * resize_factor); |
||||
meta2 << resized; |
||||
// Top left
|
||||
rectangle(temp_window, resized, Scalar(255), 1); |
||||
// Top middle
|
||||
rectangle(temp_window, Rect(resized.x + resized.width, resized.y, resized.width, resized.height), Scalar(255), 1); |
||||
// Top right
|
||||
rectangle(temp_window, Rect(resized.x + 2*resized.width, resized.y, resized.width, resized.height), Scalar(255), 1); |
||||
// Middle left
|
||||
rectangle(temp_window, Rect(resized.x, resized.y + resized.height, resized.width, resized.height), Scalar(255), 1); |
||||
// Middle middle
|
||||
rectangle(temp_window, Rect(resized.x + resized.width, resized.y + resized.height, resized.width, resized.height), Scalar(255), FILLED); |
||||
// Middle right
|
||||
rectangle(temp_window, Rect(resized.x + 2*resized.width, resized.y + resized.height, resized.width, resized.height), Scalar(255), 1); |
||||
// Bottom left
|
||||
rectangle(temp_window, Rect(resized.x, resized.y + 2*resized.height, resized.width, resized.height), Scalar(255), 1); |
||||
// Bottom middle
|
||||
rectangle(temp_window, Rect(resized.x + resized.width, resized.y + 2*resized.height, resized.width, resized.height), Scalar(255), 1); |
||||
// Bottom right
|
||||
rectangle(temp_window, Rect(resized.x + 2*resized.width, resized.y + 2*resized.height, resized.width, resized.height), Scalar(255), 1); |
||||
|
||||
if(draw_planes){ |
||||
Rect resized_inner(current_rect.x * resize_storage_factor, current_rect.y * resize_storage_factor, current_rect.width * resize_storage_factor, current_rect.height * resize_storage_factor); |
||||
// Top left
|
||||
rectangle(single_feature, resized_inner, Scalar(255), 1); |
||||
// Top middle
|
||||
rectangle(single_feature, Rect(resized_inner.x + resized_inner.width, resized_inner.y, resized_inner.width, resized_inner.height), Scalar(255), 1); |
||||
// Top right
|
||||
rectangle(single_feature, Rect(resized_inner.x + 2*resized_inner.width, resized_inner.y, resized_inner.width, resized_inner.height), Scalar(255), 1); |
||||
// Middle left
|
||||
rectangle(single_feature, Rect(resized_inner.x, resized_inner.y + resized_inner.height, resized_inner.width, resized_inner.height), Scalar(255), 1); |
||||
// Middle middle
|
||||
rectangle(single_feature, Rect(resized_inner.x + resized_inner.width, resized_inner.y + resized_inner.height, resized_inner.width, resized_inner.height), Scalar(255), FILLED); |
||||
// Middle right
|
||||
rectangle(single_feature, Rect(resized_inner.x + 2*resized_inner.width, resized_inner.y + resized_inner.height, resized_inner.width, resized_inner.height), Scalar(255), 1); |
||||
// Bottom left
|
||||
rectangle(single_feature, Rect(resized_inner.x, resized_inner.y + 2*resized_inner.height, resized_inner.width, resized_inner.height), Scalar(255), 1); |
||||
// Bottom middle
|
||||
rectangle(single_feature, Rect(resized_inner.x + resized_inner.width, resized_inner.y + 2*resized_inner.height, resized_inner.width, resized_inner.height), Scalar(255), 1); |
||||
// Bottom right
|
||||
rectangle(single_feature, Rect(resized_inner.x + 2*resized_inner.width, resized_inner.y + 2*resized_inner.height, resized_inner.width, resized_inner.height), Scalar(255), 1); |
||||
|
||||
single_feature.copyTo(image_plane(Rect(0 + (fid%cols_prefered)*single_feature.cols, 0 + (fid/cols_prefered) * single_feature.rows, single_feature.cols, single_feature.rows))); |
||||
} |
||||
|
||||
putText(temp_metadata, meta1.str(), Point(15,15), FONT_HERSHEY_SIMPLEX, 0.5, Scalar(255)); |
||||
putText(temp_metadata, meta2.str(), Point(15,40), FONT_HERSHEY_SIMPLEX, 0.5, Scalar(255)); |
||||
imshow("metadata", temp_metadata); |
||||
imshow("features", temp_window); |
||||
putText(temp_window, meta1.str(), Point(15,15), FONT_HERSHEY_SIMPLEX, 0.5, Scalar(255)); |
||||
result_video.write(temp_window); |
||||
|
||||
waitKey(timing); |
||||
} |
||||
|
||||
//Store the stage image if needed
|
||||
if(draw_planes){ |
||||
stringstream save_location; |
||||
save_location << output_folder << "stage_" << sid << ".png"; |
||||
imwrite(save_location.str(), image_plane); |
||||
} |
||||
} |
||||
} |
||||
return 0; |
||||
} |
Loading…
Reference in new issue