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I'm using opencv v2.2 to do some template matching on ndarrays, and I had great trouble with memory leaks when using their wrapped method cv.fromarray(). Rather than plug the memory leaks I avoided the fromarray() function and used cv.SetData directly, like this:

assert foo_numpy.dtype == 'uint8'
assert foo_numpy.ndim == 3
h, w = foo_numpy.shape[:2]
foo_cv = cv.CreateMat(h, w, cv.CV_8UC3)
cv.SetData(foo_cv,, foo_numpy.strides[0])

This seems to solve the memory leaks and foo_cv seems to be deallocated properly when it goes out of scope. However, now I have the issue where if foo_numpy is just a slice/view on a bigger array, I'm not permitted (cannot get single-segment buffer for discontiguous array). At the moment I'm working around this by making foo_numpy.copy() if foo_numpy.base != None, which permits getting the buffer on the new copy. But I have the feeling this is unnecessary, the slice has the __array_struct__ and __array_interface__ so I should be able to just stride it with the appropriate stepsizes somehow? I'm not sure how to do it in a nice way, because the base of this one can also be a view on another larger array ad infinitum.

share|improve this question

I think the problem with what you were trying to do is that the array data you're interested in (ie. foo_np_view) is actually only stored in one place i.e., and the OpenCV SetData method doesn't provide any way to specify stride settings that would allow you to skip the bytes that are not part of foo_np_view.

You can, however, get around this problem using Numpy’s tostring() method, which turns an array (or views therein) into a byte string:

>>> import numpy as np
>>> import cv
>>> foo_np = np.array( 255 * np.random.rand( 200 , 300 , 3 ), dtype = 'uint8' )
>>> foo_np_view = foo_np [ 50:150:2 , 10:290:5 , : ]
>>> h,w,d = foo_np_view.shape
>>> foo_cv = cv.CreateMat( h , w , cv.CV_8UC3 )

Recreating the original problem:

>>> cv.SetData( foo_cv ,, foo_np_view.strides[0] )
Traceback (most recent call last):
  File "<stdin>", line 1, in <module>
AttributeError: cannot get single-segment buffer for discontiguous array

Using the tostring() method (see below for explanation of the stride setting):

>>> cv.SetData( foo_cv , foo_np_view.tostring() , w * d * foo_np_view.dtype.itemsize )
>>> np.array_equal( np.asarray( foo_cv ) , foo_np_view )

The value w * d * foo_np_view.dtype.itemsize gives us a stride value identical to that of foo_np_view.copy(), which is necessary as the string representations of the view and its copy are identical:

>>> foo_np_view.copy().tostring() == foo_np_view.tostring()
>>> foo_np_view.copy().strides[0] == w * d * foo_np_view.dtype.itemsize
share|improve this answer
thanks, that appears to work , but i don't think i can gain any performance over my current solution (making a copy of the array), because the tostring() method seems to return a copy anyway. correct me if i'm wrong.. – wim May 17 '11 at 7:20

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