I have a set of regions (bounding boxes) for some image, example python code:
im = Image.open("single.png") pix = np.array(im) gray = rgb2grey(pix) thresh = threshold_otsu(gray) bw = closing(gray > thresh, square(1)) cleared = bw.copy() clear_border(cleared) borders = np.logical_xor(bw, cleared) label_image = label(borders) for region in regionprops(label_image, ['Area', 'BoundingBox']): #now i have bounding boxes in hand
What I would like to do is to merge regions which overlap or the distance between bbox edges is less than
X. Naive approach would be checking distances between all regions, which has O(n2) complexity. I can write something smarter but I have impression that this kind of algorithm already exists and I don't want to reinvent the wheel. Any help is appreciated.