169 lines
5.1 KiB
C++
169 lines
5.1 KiB
C++
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/**
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* @brief Sample code showing how to segment overlapping objects using Laplacian filtering, in addition to Watershed and Distance Transformation
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* @author OpenCV Team
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*/
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#include <opencv2/core.hpp>
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#include <opencv2/imgproc.hpp>
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#include <opencv2/highgui.hpp>
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#include <iostream>
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using namespace std;
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using namespace cv;
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int main(int argc, char *argv[])
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{
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//! [load_image]
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// Load the image
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CommandLineParser parser( argc, argv, "{@input | cards.png | input image}" );
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Mat src = imread( samples::findFile( parser.get<String>( "@input" ) ) );
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if( src.empty() )
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{
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cout << "Could not open or find the image!\n" << endl;
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cout << "Usage: " << argv[0] << " <Input image>" << endl;
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return -1;
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}
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// Show the source image
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imshow("Source Image", src);
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//! [load_image]
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//! [black_bg]
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// Change the background from white to black, since that will help later to extract
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// better results during the use of Distance Transform
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Mat mask;
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inRange(src, Scalar(255, 255, 255), Scalar(255, 255, 255), mask);
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src.setTo(Scalar(0, 0, 0), mask);
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// Show output image
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imshow("Black Background Image", src);
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//! [black_bg]
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//! [sharp]
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// Create a kernel that we will use to sharpen our image
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Mat kernel = (Mat_<float>(3,3) <<
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1, 1, 1,
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1, -8, 1,
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1, 1, 1); // an approximation of second derivative, a quite strong kernel
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// do the laplacian filtering as it is
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// well, we need to convert everything in something more deeper then CV_8U
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// because the kernel has some negative values,
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// and we can expect in general to have a Laplacian image with negative values
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// BUT a 8bits unsigned int (the one we are working with) can contain values from 0 to 255
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// so the possible negative number will be truncated
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Mat imgLaplacian;
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filter2D(src, imgLaplacian, CV_32F, kernel);
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Mat sharp;
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src.convertTo(sharp, CV_32F);
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Mat imgResult = sharp - imgLaplacian;
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// convert back to 8bits gray scale
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imgResult.convertTo(imgResult, CV_8UC3);
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imgLaplacian.convertTo(imgLaplacian, CV_8UC3);
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// imshow( "Laplace Filtered Image", imgLaplacian );
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imshow( "New Sharped Image", imgResult );
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//! [sharp]
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//! [bin]
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// Create binary image from source image
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Mat bw;
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cvtColor(imgResult, bw, COLOR_BGR2GRAY);
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threshold(bw, bw, 40, 255, THRESH_BINARY | THRESH_OTSU);
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imshow("Binary Image", bw);
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//! [bin]
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//! [dist]
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// Perform the distance transform algorithm
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Mat dist;
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distanceTransform(bw, dist, DIST_L2, 3);
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// Normalize the distance image for range = {0.0, 1.0}
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// so we can visualize and threshold it
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normalize(dist, dist, 0, 1.0, NORM_MINMAX);
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imshow("Distance Transform Image", dist);
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//! [dist]
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//! [peaks]
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// Threshold to obtain the peaks
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// This will be the markers for the foreground objects
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threshold(dist, dist, 0.4, 1.0, THRESH_BINARY);
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// Dilate a bit the dist image
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Mat kernel1 = Mat::ones(3, 3, CV_8U);
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dilate(dist, dist, kernel1);
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imshow("Peaks", dist);
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//! [peaks]
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//! [seeds]
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// Create the CV_8U version of the distance image
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// It is needed for findContours()
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Mat dist_8u;
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dist.convertTo(dist_8u, CV_8U);
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// Find total markers
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vector<vector<Point> > contours;
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findContours(dist_8u, contours, RETR_EXTERNAL, CHAIN_APPROX_SIMPLE);
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// Create the marker image for the watershed algorithm
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Mat markers = Mat::zeros(dist.size(), CV_32S);
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// Draw the foreground markers
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for (size_t i = 0; i < contours.size(); i++)
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{
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drawContours(markers, contours, static_cast<int>(i), Scalar(static_cast<int>(i)+1), -1);
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}
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// Draw the background marker
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circle(markers, Point(5,5), 3, Scalar(255), -1);
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Mat markers8u;
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markers.convertTo(markers8u, CV_8U, 10);
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imshow("Markers", markers8u);
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//! [seeds]
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//! [watershed]
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// Perform the watershed algorithm
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watershed(imgResult, markers);
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Mat mark;
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markers.convertTo(mark, CV_8U);
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bitwise_not(mark, mark);
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// imshow("Markers_v2", mark); // uncomment this if you want to see how the mark
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// image looks like at that point
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// Generate random colors
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vector<Vec3b> colors;
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for (size_t i = 0; i < contours.size(); i++)
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{
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int b = theRNG().uniform(0, 256);
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int g = theRNG().uniform(0, 256);
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int r = theRNG().uniform(0, 256);
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colors.push_back(Vec3b((uchar)b, (uchar)g, (uchar)r));
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}
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// Create the result image
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Mat dst = Mat::zeros(markers.size(), CV_8UC3);
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// Fill labeled objects with random colors
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for (int i = 0; i < markers.rows; i++)
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{
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for (int j = 0; j < markers.cols; j++)
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{
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int index = markers.at<int>(i,j);
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if (index > 0 && index <= static_cast<int>(contours.size()))
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{
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dst.at<Vec3b>(i,j) = colors[index-1];
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}
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}
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}
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// Visualize the final image
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imshow("Final Result", dst);
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//! [watershed]
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waitKey();
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return 0;
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}
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