# Boundary conditions for image transformations with meshgrid

I transformed an image using `meshgrid`, but the new coordinates are partially outside the range of the original image, causing the transformation to fail.

First I used clip

``````...
tX = numpy.clip(tX.astype(numpy.int),0,image.w)
tY = numpy.clip(tY.astype(numpy.int),0,image.h)
result image([tX,tY])
``````

which resulted in effect similar to the 'nearest' boundary condition.

I would like for all the outside pixels to be black. I thought I could achieve this by using a boolean array on the meshgrid, but I don't know how to apply the boolean array to the meshgrid correctly.

``````tXbool = numpy.abs(tX) < image.w
tXbool.shape
(850, 1280)
tX[tXbool].shape
(193180,)
``````
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You should always apply the inverse transformation to the pixels in the target image and use this to look up the (interpolated) colour/value in the source image. Otherwise you'll end up with holes and quantization problems. Here's a reference, or look up image transformations/warps in any image processing textbook: http://www.cs.clemson.edu/~dhouse/courses/405/notes/image-warps.pdf

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That is a very good point you made. It is very important to pay attention to that. – Framester May 18 '12 at 16:14

Okay, thats how I did it in the end:

``````tXbool = (0 < tX) & (tX  < image.w )
tybool = (0 < tY) & (tY  < image.h )
outliers = tXbool & tybool