How to reduce an image size in image processing (scipy/numpy/python)

Hello I have an image ( 1024 x 1024) and I used "fromfile" command in numpy to put every pixel of that image into a matrix.

How can I reduce the size of the image ( ex. to 512 x 512) by modify that matrix a?

``````a = numpy.fromfile(( - path - ,'uint8').reshape((1024,1024))
``````

I have no idea how to modify the matrix a to reduce the size of the image. So if somebody has any idea, please share your knowledge and I will be appreciated. Thanks

EDIT:

When I look at the result, I found that the reader I got read the image and put it into a "matrix". So I changed the "array" to matrix.

Jose told me I can take only even column and even row and put it into a new matrix . That will reduce the image to half size. What command in scipy/numpy do I need to use to do that?

Thanks

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Is the question that you don't understand how to do it in Python, or you don't understand how to do image scaling, or both? –  talonmies May 22 '11 at 7:34
The long answer is that it depends on the type of image that you just read in. The short answer/question is "why can't you use a library?". Are you able to have PIL resize it and then you can call numpy.reshape()? –  Jordan May 22 '11 at 7:37
the image is in .dat file extention, and the reader I got can read the image and put it into a matrix. I made a mistake so I edited the post and change "array" to "matrix" since it is put as a matrix form. –  Hold_My_Anger May 22 '11 at 21:40
Now what I have problem is how to take only even row and even column from the matrix. Are there any function in scipy or numpy that can do this? –  Hold_My_Anger May 22 '11 at 21:42

I think the easyiest way is to take only some columns and some rows of the image. Makeing a sample of the array. Take for example, only those even rows and the even columns, put it in a new array and you would have a half size new image.

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What command do I need to use to do that? –  Hold_My_Anger May 22 '11 at 21:24
@LearnMore - It's as simple as `y = x[::2, ::2]` (or `::3` if you wanted every third row, etc). Just be aware that this will cause aliasing problems, as it's essentially just "nearest neighbor" interpolation (it's very, very fast, though). @tillsten's answer is a much better way in general, but will have more overhead. It all depends on exactly what you need to do. –  Joe Kington May 22 '11 at 21:28
@Joe Kington - thanks. y = x[::2, ::2] is the first "::2" means get every 2 ROWs and the second "::2" means get every 2 COLUMS? and is x the matrix the I have originally and y is the new matrix? –  Hold_My_Anger May 22 '11 at 21:46
Yes I tried it and originally the size is 2048 x 2048. Now it is 1024 x 1024. Thanks a lot –  Hold_My_Anger May 22 '11 at 22:18
The right way to do it is, however, described below. Use the zoom function. –  Bogdan Dec 1 '14 at 21:21

Use the zoom function from scipy:

http://docs.scipy.org/doc/scipy/reference/generated/scipy.ndimage.interpolation.zoom.html#scipy.ndimage.interpolation.zoom

``````from scipy.ndimage.interpolation import zoom
a=np.ones((1024,1024))
small_a=zoom(a,0.5)
``````
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