A few days back, I started using new OpenCV-Python interface, cv2.

My question is regarding the comparison of cv and cv2 interface.

Regarding the ease of use, new cv2 interface has improved far greater, and it is really easy and fun to work with cv2.

But what about speed?

I made two small code snipplets, one in cv and another in cv2, to check the performances. Both does the same function, access pixels of an image, test it, make some modifications, etc.

Below is the code:

cv2 interface:

import time
import numpy as np
import cv2

gray = cv2.imread('sir.jpg',0)
width = gray.shape[0]
height = gray.shape[1]
h = np.empty([width,height,3])
t = time.time()
for i in xrange(width):
    for j in xrange(height):
        if gray[i,j]==127:
        elif gray[i,j]>127:
t2 = time.time()-t
print "time taken = ",t2


And result is:

time taken = 14.4029130936


cv interface:

import cv,time

gray = cv.LoadImage('sir.jpg',0)
h = cv.CreateImage(cv.GetSize(gray),8,3)


for i in xrange(gray.width):
    for j in xrange(gray.height):
        k = cv.Get2D(gray,j,i)[0]
        if k==127:
        elif k>127:

t2 = time.time()-t
print "time taken = ",t2


The result is:

time taken = 1.16368889809


See, here old cv is about 12 times faster than cv2. And resulting images are same. (input image is of size 720x540)

Why does this happen?

Is cv2 slower compared to cv?

Or am I making any mistake here? Is there a faster method in cv2 for the above code?


The image returned by cv2.imread() is an array object of NumPy. So you can use NumPy's functions to speedup calculation.

The following program shows how to speedup your origin for loop version by using item(), itemset() method of ndarray object.

import time
import numpy as np
import cv2

gray = cv2.imread('lena_full.jpg',0)
height, width = gray.shape
h = np.empty((height,width,3), np.uint8)

t = time.time()
for i in xrange(height):
    for j in xrange(width):
        k = gray.item(i, j)
        if k == 127:
            h.itemset(i, j, 0, 255)
            h.itemset(i, j, 1, 255)
            h.itemset(i, j, 2, 255)
        elif k > 127:
            h.itemset(i, j, 0, 0)
            h.itemset(i, j, 1, 0)
            h.itemset(i, j, 2, 255-k)
            h.itemset(i, j, 0, k)
            h.itemset(i, j, 1, 0)
            h.itemset(i, j, 2, 0)
print time.time()-t

And the following program show how to create the palette first, and use NumPy's array index to get the result:

t = time.time()
palette = []
for i in xrange(256):
    if i == 127:
        palette.append((255, 255, 255))
    elif i > 127:
        palette.append((i, 0, 0))
palette = np.array(palette, np.uint8)

h2 = palette[gray]

print time.time() - t

print np.all(h==h2)

The output is:


The cv version output is :


Note: the length of axis 0 is the height of the image, the length of axis 1 is the width of the image

  • Thanks for the answer. Can you add a few more details? Do you know a better way for the above procedure, any faster numpy functions etc? – Abid Rahman K Feb 20 '12 at 8:12
  • @arkiaz, I modified your cv2 for loop version, and now it's the same speed as cv version. And I added a numpy version to speedup more. – HYRY Feb 20 '12 at 8:29
  • Thanks, your first method gives comparable speed with cv, although code become little big. Result obtained with my image t=1.127. But your second method gives a very good result of t=0.054, but gives a large black screen( ie wrong output). Why is it? – Abid Rahman K Feb 20 '12 at 11:50
  • @arkiaz, Please change the line "palette = np.array(palette)" to "palette = np.array(palette, np.uint8)", this will solve the problem. – HYRY Feb 20 '12 at 12:03
  • well, palette=np.array(palette,np.uint8) solved the problem, and it is pretty fast, t=0.503. Thanks. – Abid Rahman K Feb 20 '12 at 12:07

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