I am trying to execute the code from this URL. However, I started getting this error:

des = np.array(des,np.float32).reshape((1,128))
ValueError: total size of new array must be unchanged

I have not made any major changes though. But I will paste what I did:

import scipy as sp
import numpy as np
import cv2

# Load the images
img =cv2.imread("image1.png")

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

# SURF extraction
surf = cv2.FeatureDetector_create("SURF")
surfDescriptorExtractor = cv2.DescriptorExtractor_create("SURF")
kp = surf.detect(imgg)
kp, descritors = surfDescriptorExtractor.compute(imgg,kp)

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

# kNN training
knn = cv2.KNearest()

modelImages = ["image2.png"]

for modelImage in modelImages:

    # Now loading a template image and searching for similar keypoints
    template = cv2.imread(modelImage)
    templateg= cv2.cvtColor(template,cv2.COLOR_BGR2GRAY)
    keys = surf.detect(templateg)

    keys,desc = surfDescriptorExtractor.compute(templateg, keys)

    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))


Any help on this is greatly appreciated.

  • 2
    What's the shape of your array before this line ?
    – polku
    Oct 10, 2014 at 9:15
  • Can't you just do .reshape(128) ? Also ensure that np.array(des,np.float32) is 128 in total size.
    – a-Jays
    Oct 10, 2014 at 9:38
  • a-Jays: I tried that, that didn't help.
    – Dinakar
    Oct 10, 2014 at 10:00
  • polku: I am in learning process. So not sure when you ask about shape of array. I have the entire code pasted above, hope you can get information from that ? Sorry about that!
    – Dinakar
    Oct 10, 2014 at 10:06
  • 2
    The error message seems to indicate that you try to reshape in a size 128 array something that is more or less than 128. To see the current shape you can use print(des.shape) before reshape.
    – polku
    Oct 10, 2014 at 10:12

1 Answer 1


I had the same issue. I found that I changed the data length. A product of reshape arguments should be equal to a length of an array which you are changing. In your case:

des = np.array(des,np.float32).reshape(1, len(des))
  • dimensions of my array are (100,99) and I need to make it (100,100). How can this be done?
    – Aditya C
    Jan 27, 2017 at 17:03
  • You could use padding, reshape won't work as the product needs to be the same Jun 11, 2022 at 18:11

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