# Downsampling a 2d numpy array in python

I'm self learning python and have found a problem which requires down sampling a feature vector. I need some help understanding how down-sampling a array. in the array each row represents an image by being number from `0` to `255`. I was wonder how you apply down-sampling to the array? I don't want to `scikit-learn` because I want to understand how to apply down-sampling. If you could explain down-sampling too that would be amazing thanks.

the feature vector is 400x250

If with downsampling you mean something like this, you can simply slice the array. For a 1D example:

``````import numpy as np
a = np.arange(1,11,1)
print(a)
print(a[::3])
``````

The last line is equivalent to:

``````print(a[0:a.size:3])
``````

with the slicing notation as `start:stop:step`

Result:

[ 1 2 3 4 5 6 7 8 9 10]

[ 1 4 7 10]

For a 2D array the idea is the same:

``````b = np.arange(0,100)
c = b.reshape([10,10])
print(c[::3,::3])
``````

This gives you, in both dimensions, every third item from the original array.

Or, if you only want to down sample a single dimension:

``````d = np.zeros((400,250))
print(d.shape)
e = d[::10,:]
print(e.shape)
``````

(400, 250)

(40, 250)

The are lots of other examples in the Numpy manual

• but how do you do this for a 2d array – Neo Streets Dec 11 '15 at 21:03
• I updated the answer. But I'm not sure to what size you want to downsample your original 400x250 array? – Bart Dec 11 '15 at 21:07
• Saying "this doesn't work" isn't very helpful. What doesn't work? Or even better: could you provide a simple example of exactly how the down sampling should work (e.g., from a 2D array `[[0,1,..,9],[10,11,..,19]`, the down sampled array should contain elements `[[1,3,..],[11,13,..]]`)? Which items should be kept? Or you mention that you don't want to use `scikit-learn`, but which routine should it reproduce? – Bart Dec 11 '15 at 22:08

I assume that you want to remove every other rows and columns of matrix. Here is simple example with a 2-D numpy array:

``````import numpy as np
a=np.arange(0,16).reshape(4,4)
dc=a[:,range(0,a.shape,2)]
drdc=dc[range(0,a.shape,2),:]
print(a)
print(drdc)
``````

The output is:

``````[[ 0  1  2  3]
[ 4  5  6  7]
[ 8  9 10 11]
[12 13 14 15]]
[[ 0  2]
[ 8 10]]
``````