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I'm trying to update my code to use cv2.SURF() as opposed to cv2.FeatureDetector_create("SURF") and cv2.DescriptorExtractor_create("SURF"). However I'm having trouble getting the descriptors after detecting the keypoints. What's the correct way to call SURF.detect?

I tried following the OpenCV documentation, but I'm a little confused. This is what it says in the documentation.

Python: cv2.SURF.detect(img, mask) → keypoints¶
Python: cv2.SURF.detect(img, mask[, descriptors[, useProvidedKeypoints]]) → keypoints, descriptors

How do I pass the keypoints in when making the second call to SURF.detect?

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2 Answers 2

up vote 29 down vote accepted

I am not sure whether i understand your questions correctly. But if you are looking for a sample of matching SURF keypoints, a very simple and basic one is below, which is similar to template matching:

import cv2
import numpy as np

# Load the images
img =cv2.imread('messi4.jpg')

# Convert them to grayscale
imgg =cv2.cvtColor(img,cv2.COLOR_BGR2GRAY)

# SURF extraction
surf = cv2.SURF()
kp, descritors = surf.detect(imgg,None,useProvidedKeypoints = False)

# Setting up samples and responses for kNN
samples = np.array(descritors)
responses = np.arange(len(kp),dtype = np.float32)

# kNN training
knn = cv2.KNearest()

# Now loading a template image and searching for similar keypoints
template = cv2.imread('template.jpg')
templateg= cv2.cvtColor(template,cv2.COLOR_BGR2GRAY)
keys,desc = surf.detect(templateg,None,useProvidedKeypoints = False)

for h,des in enumerate(desc):
    des = np.array(des,np.float32).reshape((1,128))
    retval, results, neigh_resp, dists = knn.find_nearest(des,1)
    res,dist =  int(results[0][0]),dists[0][0]

    if dist<0.1: # draw matched keypoints in red color
        color = (0,0,255)
    else:  # draw unmatched in blue color
        print dist
        color = (255,0,0)

    #Draw matched key points on original image
    x,y = kp[res].pt
    center = (int(x),int(y))

    #Draw matched key points on template image
    x,y = keys[h].pt
    center = (int(x),int(y))


Below are the results I got (copy pasted template image on original image using paint):

enter image description here

enter image description here

As you can see, there are some small mistakes. But for a startup, hope it is OK.

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Thanks for the detailed response! I've actually got a full implementation of SURF matching, however it was done with an older version of OpenCV. What I was looking for was this: surf.detect(imgg,None,useProvidedKeypoints = False). Thank you very much! A great help. –  Kkov Jun 11 '12 at 21:14
Amazing answer. Helped me a lot! –  Froyo Sep 8 '12 at 15:28
using your code with my images i get: OpenCV Error: Sizes of input arguments do not match (Response array must contain as many elements as the total number of samples) in cvPreprocessOrderedResponses –  user601836 Sep 27 '12 at 12:18
I got the same error as the above with OpenCV 2.3.1 : The call to knn.train(samples,responses) raises an OpenCV Error: "Sizes of input arguments do not match (Response array must contain as many elements as the total number of samples)". –  Moshe Mar 1 '13 at 16:08

An improvement of the above algorithm is:

import cv2
import numpy

opencv_haystack =cv2.imread('haystack.jpg')
opencv_needle =cv2.imread('needle.jpg')

ngrey = cv2.cvtColor(opencv_needle, cv2.COLOR_BGR2GRAY)
hgrey = cv2.cvtColor(opencv_haystack, cv2.COLOR_BGR2GRAY)

# build feature detector and descriptor extractor
hessian_threshold = 85
detector = cv2.SURF(hessian_threshold)
(hkeypoints, hdescriptors) = detector.detect(hgrey, None, useProvidedKeypoints = False)
(nkeypoints, ndescriptors) = detector.detect(ngrey, None, useProvidedKeypoints = False)

# extract vectors of size 64 from raw descriptors numpy arrays
rowsize = len(hdescriptors) / len(hkeypoints)
if rowsize > 1:
    hrows = numpy.array(hdescriptors, dtype = numpy.float32).reshape((-1, rowsize))
    nrows = numpy.array(ndescriptors, dtype = numpy.float32).reshape((-1, rowsize))
    #print hrows.shape, nrows.shape
    hrows = numpy.array(hdescriptors, dtype = numpy.float32)
    nrows = numpy.array(ndescriptors, dtype = numpy.float32)
    rowsize = len(hrows[0])

# kNN training - learn mapping from hrow to hkeypoints index
samples = hrows
responses = numpy.arange(len(hkeypoints), dtype = numpy.float32)
#print len(samples), len(responses)
knn = cv2.KNearest()

# retrieve index and value through enumeration
for i, descriptor in enumerate(nrows):
    descriptor = numpy.array(descriptor, dtype = numpy.float32).reshape((1, rowsize))
    #print i, descriptor.shape, samples[0].shape
    retval, results, neigh_resp, dists = knn.find_nearest(descriptor, 1)
    res, dist =  int(results[0][0]), dists[0][0]
    #print res, dist

    if dist < 0.1:
        # draw matched keypoints in red color
        color = (0, 0, 255)
        # draw unmatched in blue color
        color = (255, 0, 0)
    # draw matched key points on haystack image
    x,y = hkeypoints[res].pt
    center = (int(x),int(y))
    # draw matched key points on needle image
    x,y = nkeypoints[i].pt
    center = (int(x),int(y))


You can uncomment the print statements to get a better idea about the data structures used.

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Your code looks very interesting but it doesn't work for me. The python interpreter says there is an error on line 27: knn.train(samples, responses). error (-209) Response array must contain as man elements as the total number of samples in function cvPreprocessOrderedResponses. Any idea on how to fix it? Thanks! –  Albert Vonpupp Feb 13 '13 at 2:17
Can you try it now? I made improvements to work with more kinds of feature extractors. –  pevogam Feb 14 '13 at 13:13
It doesn't give any error but I don't see any output either. I'm sorry but I'm a total newbie to opencv... Could you explain what would be the expected output? (a file, console, a window). Thanks a lot! –  Albert Vonpupp Feb 15 '13 at 2:02
Hey not a problem. You could just replace the original code which was shown by Abid Rahman K with this code. Now I added the last 4 lines from there so just copy the entire snippet again. –  pevogam Feb 16 '13 at 10:31

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