You can detect the shape of a given image by applying the Hough Transform technique using the method HoughLines() of the Imgproc class. Following is the syntax of this method.
HoughLines(image, lines, rho, theta, threshold)
This method accepts the following parameters −
image − An object of the class Mat representing the source (input) image.
lines − An object of the class Mat that stores the vector that stores the parameters (r, Φ) of the lines.
rho − A variable of the type double representing the resolution of the parameter r in pixels.
theta − A variable of the type double representing the resolution of the parameter Φ in radians.
threshold − A variable of the type integer representing the minimum number of intersections to “detect” a line.
The following program demonstrates how to detect Hough lines in a given image.
import org.opencv.core.Core; import org.opencv.core.Mat; import org.opencv.core.Point; import org.opencv.core.Scalar; import org.opencv.imgcodecs.Imgcodecs; import org.opencv.imgproc.Imgproc; public class HoughlinesTest { public static void main(String args[]) throws Exception { // Loading the OpenCV core library System.loadLibrary( Core.NATIVE_LIBRARY_NAME ); // Reading the Image from the file and storing it in to a Matrix object String file = "E:/OpenCV/chap21/hough_input.jpg"; // Reading the image Mat src = Imgcodecs.imread(file,0); // Detecting edges of it Mat canny = new Mat(); Imgproc.Canny(src, canny, 50, 200, 3, false); // Changing the color of the canny Mat cannyColor = new Mat(); Imgproc.cvtColor(canny, cannyColor, Imgproc.COLOR_GRAY2BGR); // Detecting the hough lines from (canny) Mat lines = new Mat(); Imgproc.HoughLines(canny, lines, 1, Math.PI/180, 100); System.out.println(lines.rows()); System.out.println(lines.cols()); // Drawing lines on the image double[] data; double rho, theta; Point pt1 = new Point(); Point pt2 = new Point(); double a, b; double x0, y0; for (int i = 0; i < lines.cols(); i++) { data = lines.get(0, i); rho = data[0]; theta = data[1]; a = Math.cos(theta); b = Math.sin(theta); x0 = a*rho; y0 = b*rho; pt1.x = Math.round(x0 + 1000*(-b)); pt1.y = Math.round(y0 + 1000*(a)); pt2.x = Math.round(x0 - 1000*(-b)); pt2.y = Math.round(y0 - 1000 *(a)); Imgproc.line(cannyColor, pt1, pt2, new Scalar(0, 0, 255), 6); } // Writing the image Imgcodecs.imwrite("E:/OpenCV/chap21/hough_output.jpg", cannyColor); System.out.println("Image Processed"); } }
Assume that following is the input image hough_input.jpg specified in the above program.
On executing the program, you will get the following output −
143 1 Image Processed
If you open the specified path, you can observe the output image as follows −