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I'm trying to use OpenCV 2.1 to combine two images into one, with the two images placed adjacent to each other. In Python, I'm doing:

import numpy as np, cv

img1 = cv.LoadImage(fn1, 0)
img2 = cv.LoadImage(fn2, 0)

h1, w1 = img1.height,img1.width
h2, w2 = img2.height,img2.width

# Create an array big enough to hold both images next to each other.
vis = np.zeros((max(h1, h2), w1+w2), np.float32)

mat1 = cv.CreateMat(img1.height,img1.width, cv.CV_32FC1)
cv.Convert( img1, mat1 )

mat2 = cv.CreateMat(img2.height, img2.width, cv.CV_32FC1)
cv.Convert( img2, mat2 )

# Copy both images into the composite image.
vis[:h1, :w1] = mat1
vis[:h2, w1:w1+w2] = mat2

h,w = vis.shape
vis2 = cv.CreateMat(h, w, cv.CV_32FC3)
vis0 = cv.fromarray(vis)
cv.CvtColor(vis0, vis2, cv.CV_GRAY2BGR)
cv.ShowImage('test', vis2)

The two input images are:

The resulting image is:

enter image description here

It may be hard to distinguish from the rest of the site, but most of the image is white, corresponding to where the individual images should be. The black area is where no image data was written.

Why is all my image data being converted to white?

share|improve this question
Have you seen sample from OpenCV 2.3.1? It looks exactly as what you are trying to do. – Andrey Kamaev Sep 28 '11 at 21:20
@Andrey, Yes, that's actually what I'm trying to convert to OpenCV 2.1. I don't have 2.3 and can't get it to compile, so I'm working with 2.1 for now. – Cerin Sep 28 '11 at 23:42
You can also create a question about your compilation problem. I think it is solvable. And please note that flann part of this sample can not be implemented with OpenCV 2.1 because python bindings for flann index were added only in 2.3.1. – Andrey Kamaev Sep 29 '11 at 5:16
up vote 12 down vote accepted

For cases where your images happen to be the same size (which is a common case for displaying image processing results), you can use numpy's concatenate to simplify your code.

To stack vertically (img1 over img2):

vis = np.concatenate((img1, img2), axis=0)

To stack horizontally (img1 to the left of img2):

vis = np.concatenate((img1, img2), axis=1)

To verify:

import cv2
import numpy as np
img = cv2.imread('img.png')
vis = np.concatenate((img1, img2), axis=1)
cv2.imwrite('out.png', vis)
share|improve this answer
The code is the same for both vertical and horizontal? – Dave Feb 11 '14 at 16:14
I fixed the copy-paste error. Horizontally is along axis 1. You can easily try this yourself. I added verification code to the response. – Matt Liberty Feb 11 '14 at 22:24
import numpy as np, cv2

img1 = cv2.imread(fn1, 0)
img2 = cv2.imread(fn2, 0)
h1, w1 = img1.shape[:2]
h2, w2 = img2.shape[:2]
vis = np.zeros((max(h1, h2), w1+w2), np.uint8)
vis[:h1, :w1] = img1
vis[:h2, w1:w1+w2] = img2
vis = cv2.cvtColor(vis, cv2.COLOR_GRAY2BGR)

cv2.imshow("test", vis)

or if you prefer legacy way:

import numpy as np, cv

img1 = cv.LoadImage(fn1, 0)
img2 = cv.LoadImage(fn2, 0)

h1, w1 = img1.height,img1.width
h2, w2 = img2.height,img2.width
vis = np.zeros((max(h1, h2), w1+w2), np.uint8)
vis[:h1, :w1] = cv.GetMat(img1)
vis[:h2, w1:w1+w2] = cv.GetMat(img2)
vis2 = cv.CreateMat(vis.shape[0], vis.shape[1], cv.CV_8UC3)
cv.CvtColor(cv.fromarray(vis), vis2, cv.CV_GRAY2BGR)

cv.ShowImage("test", vis2)
share|improve this answer
cv2.COLOR_GRAY2BGR seems to not exists in OpenCV 2.3. Further you read grayscale images and convert them afterwards back to RGB. So you result will be grayscaled isn't it? – Informant May 11 '12 at 12:15
Can we do this for color images?? – Krish Feb 9 '13 at 0:34

For those who are looking to combine 2 color images into one, this is a slight mod on Andrey's answer which worked for me :

img1 = cv2.imread(imageFile1)
img2 = cv2.imread(imageFile2)

h1, w1 = img1.shape[:2]
h2, w2 = img2.shape[:2]

#create empty matrix
vis = np.zeros((max(h1, h2), w1+w2,3), np.uint8)

#combine 2 images
vis[:h1, :w1,:3] = img1
vis[:h2, w1:w1+w2,:3] = img2
share|improve this answer

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