Well, i've been wondering what would be a good way to go about finding deformed subimages in a image/template. At this moment i'm using cv2.matchTemplate, and it works from time to time, it depends on the tolerance-level given, and the background "noise": Other objects might be similar, and therefore returned as a result if the tolerance is to high.
Current algo goes something like this (pseudo) / returns only one match (got a similar for multi match - which is the actual case in this question):
haystack = im.read("stack.bmp") image = Image.open("im.bmp") MATCH =  PIL_rotateImage for 0 to 360: # You get the point.. image = np.array(rotatedImage) result = cv2.matchTemplate(image, haystack, algorithm) #algorithm: CCOEFF_NORMED resultMax = result.max() y,x = np.unravel_index(result.argmax(), result.shape) MATCH.append([resultMax, (x,y)]) Best_match = sorted(MATCH, key=itemgetter(0)) if Best_match < minval: return False *.....*
Let's say you have a template containing an subimage which is deformed (partial, and/or rotated), it's the exact same image (to the human eye):
- The object can be rotated
- The object can be partial (but to a tolerated level - Eg: 60%)
- The colors are not always the same, but similar. (got an algo for comparing colors)
- The object is not always there...
- The object can be a little deformed: Some pixels can be "missplaced"
- Something might be forgot: but in general: DEFORMED.
I've also tried iterating over list, but this is obviously slow, and the way i did it was simply by checking if some of the first/last, or center pixels where the same.. <- Ofcourse not working for finding partial, or rotated objects.
A small images (example) to back my writing, to help your understanding: Only an example!
Q: Does anyone got any tips, pseudo-code, or acutal code on how to go about this? Something that can give me a start, as i'm constantly getting lost.