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To index the middle points of a numpy array, you can do this:

x = np.arange(10)
middle = x[len(x)/4:len(x)*3/4]

Is there a shorthand for indexing the middle of the array? e.g., the n or 2n elements closes to len(x)/2? Is there a nice n-dimensional version of this?

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I don't think there is a better way other than what you have created. The most similar thing in the library is probably np.fft.fftshift which shifts the array to place the middle at index 0. –  Jaime Mar 6 '13 at 21:07
    
Yeah, that was the other option I had considered, but it's not a ton better: you'd need to do x = np.concatenate([np.fftshift[:n],np.fftshift[-n:]]) or similar. –  keflavich Mar 7 '13 at 0:32
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It seems like just making this a function (eg, mid = lambda x: x[len(x)/4:len(x)*3/4]) would be the simplest solution. –  cge Mar 7 '13 at 22:18
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You can use slice objects for the n-dimensional case: mid = lambda x: x[[slice(np.floor(d/4.),np.ceil(3*d/4.)) for d in x.shape]] –  ali_m Mar 28 '13 at 2:15
    
@cge Maybe you should post that as an answer. –  askewchan Apr 5 '13 at 17:45

1 Answer 1

up vote 0 down vote accepted

as cge said, the simplest way is by turning it into a lambda function, like so:

x = np.arange(10)
middle = lambda x: x[len(x)/4:len(x)*3/4]

or the n-dimensional way is:

middle = lambda x: x[[slice(np.floor(d/4.),np.ceil(3*d/4.)) for d in x.shape]]
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