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I am trying to compute the Canny Edges in an image (ndarray) using opencv in python. For some reason I get a type error

slice1 = slices[15,:,:]
slice1 = slice1[40:80,60:100]
print slice1.shape
print slice1.dtype
slicecanny = cv2.Canny(slice1,1,100)

Output:

(40, 40)
float64
...
error: /Users/jmerkow/code/opencv-2.4.6.1/modules/imgproc/src/canny.cpp:49: 
error: (-215) src.depth() == CV_8U in function Canny
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you may need to convert the data type to float (CV_32F) since canny do gaussian filtering which (if OpenCV use Filter2D) requires float data input. –  jgmao Sep 30 '13 at 21:21
    
I tried converting to float32 and integers, not luck. I also tried: slice2 = cv2.GaussianBlur(slice1,(5,5),1) slicecanny = cv2.Canny(slice2,1,100) –  jmerkow Sep 30 '13 at 21:55
    
In your error output: error: (-215) src.depth() == CV_8U in function Canny. May be I was complete in wrong direction. Have you try to convert to CV_8U as the input (not integer, since integer is not UInt8). –  jgmao Oct 1 '13 at 19:18
    
Yes, I just tried that, same error. The function works when I read an image from file, i.e. slice1 = cv.imread('../images/3.jpg',0). Could it have something to do with obtaining the 'slice' from a 3D voxel set? Maybe some memory/pointer thing in python? –  jmerkow Oct 1 '13 at 22:24

2 Answers 2

Slice1 will need to be casted or created as a uint8. CV_8U is just an alias for the datatype uint8.

import numpy as np
slice1Copy = np.uint8(slice1)
slicecanny = cv2.Canny(slice1Copy,1,100)
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Welcome to StackOverflow Ross. Please visit help center. –  afzalex Sep 1 '14 at 20:39
    
Thanks. This worked for me. –  Dilawar Nov 27 '14 at 19:08

You can work around this error by saving slice1 to a file and then reading it

from scipy import ndimage, misc
misc.imsave('fileName.jpg', slice1)
image = ndimage.imread('fileName.jpg',0)
slicecanny = cv2.Canny(image,1,100)

This is not the most elegant solution, but it solved the problem for me

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