Image I'm working with:
I'm trying to find each of the boxes in this image. The results don't have to be 100% accurate, just as long as the boxes found are approximately correct in position/size. From playing with the example for square detection, I've managed to get contours, bounding boxes, corners and the centers of boxes.
There are a few issues I'm running into here:
- bounding rectangles are detected for both the inside and the outside of the drawn lines.
- some extraneous corners/centers are detected.
- I'm not sure how to match corners/centers with the related contours/bounding boxes, especially when taking nested boxes into account.
Image resulting from code:
Here's the code I'm using to generate the image above:
import numpy as np import cv2 from operator import itemgetter from glob import glob def angle_cos(p0, p1, p2): d1, d2 = (p0-p1).astype('float'), (p2-p1).astype('float') return abs( np.dot(d1, d2) / np.sqrt( np.dot(d1, d1)*np.dot(d2, d2) ) ) def makebin(gray): bin = cv2.adaptiveThreshold(gray, 255, cv2.ADAPTIVE_THRESH_MEAN_C, cv2.THRESH_BINARY, 5, 2) return cv2.bitwise_not(bin) def find_squares(img): img = cv2.GaussianBlur(img, (11, 11), 0) squares =  points = ` for gray in cv2.split(img): bin = makebin(gray) contours, hierarchy = cv2.findContours(bin, cv2.RETR_LIST, cv2.CHAIN_APPROX_SIMPLE) corners = cv2.goodFeaturesToTrack(gray,len(contours)*4,0.2,15) cv2.cornerSubPix(gray,corners,(6,6),(-1,-1),(cv2.TERM_CRITERIA_MAX_ITER | cv2.TERM_CRITERIA_EPS,10, 0.1)) for cnt in contours: cnt_len = cv2.arcLength(cnt, True) if len(cnt) >= 4 and cv2.contourArea(cnt) > 200: rect = cv2.boundingRect(cnt) if rect not in squares: squares.append(rect) return squares, corners, contours if __name__ == '__main__': for fn in glob('../1 (Small).jpg'): img = cv2.imread(fn) squares, corners, contours = find_squares(img) for p in corners: cv2.circle(img, (p,p), 3, (0,0,255),2) squares = sorted(squares,key=itemgetter(1,0,2,3)) areas =  moments =  centers =  for s in squares: areas.append(s*s) cv2.rectangle( img, (s,s),(s+s,s+s),(0,255,0),1) for c in contours: moments.append(cv2.moments(np.array(c))) for m in moments: centers.append((int(m["m10"] // m["m00"]), int(m["m01"] // m["m00"]))) for cent in centers: print cent cv2.circle(img, (cent,cent), 3, (0,255,0),2) cv2.imshow('squares', img) ch = 0xFF & cv2.waitKey() if ch == 27: break cv2.destroyAllWindows()