I have an image of a circle, I want to find the circle but not using hough circles.
I found a way, linked here.
But I can\'t find the transition coordinates fro
One possible approach is to first threshold the image to get rid of some of the noise around the circle. Then you can extract the edge of the circle using Canny edge detection. Finally, findNonZero to get a list of pixel coordinates.
I first did a quick prototype with Python:
import cv2
import numpy as np
img = cv2.imread('circle.png', 0)
mask = cv2.threshold(img, 127, 255, cv2.THRESH_BINARY)[1]
edges = cv2.Canny(mask, 20, 100)
points = np.array([p[0] for p in cv2.findNonZero(edges)])
And then ported it to C++, adding some extra code to save all the intermediate images and plot the found pixels.
#include <opencv2/opencv.hpp>
int main()
{
cv::Mat img(cv::imread("circle.png", 0));
cv::Mat mask;
cv::threshold(img, mask, 127, 255, cv::THRESH_BINARY);
cv::imwrite("circle_1.png", mask);
cv::Mat edges;
cv::Canny(mask, edges, 20, 100);
cv::imwrite("circle_2.png", edges);
std::vector<cv::Point2i> points;
cv::findNonZero(edges, points);
cv::Mat output(cv::Mat::zeros(edges.size(), CV_8UC3));
for (auto const& p : points) {
output.at<cv::Vec3b>(p) = cv::Vec3b(127, 255, 127);
}
cv::imwrite("circle_3.png", output);
}
Output of threshold
:
Output of Canny
:
Re-plotted pixels:
Another approach (that is useful for more than just circles) would be to find the image contours and do image moment analysis on the circle to find it's centre of mass:
I recommend learning them if you'e going to move forward with image processing. They're pretty helpful approaches that transform images into more useful structures.