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I have a matrix X of dimensions (30x8100) and another one Y of dimensions (1x8100). I want to generate an array containing the difference between them (X[1]-Y, X[2]-Y,..., X[30]-Y) Can anyone help?

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4 Answers 4

up vote 3 down vote accepted

All you need for that is

X - Y

Since several people have offered answers that seem to try to make the shapes match manually, I should explain:
Numpy will automatically expand Y's shape so that it matches with that of X. This is called broadcasting, and it usually does a very good job of guessing what should be done. In ambiguous cases, an axis keyword can be applied to tell it which direction to do things. Here, since Y has a dimension of length 1, that is the axis that is expanded to be length 30 to match with X's shape.

For example,

In [87]: import numpy as np

In [88]: n, m = 3, 5

In [89]: x = np.arange(n*m).reshape(n,m)

In [90]: y = np.arange(m)[None,...]

In [91]: x.shape
Out[91]: (3, 5)

In [92]: y.shape
Out[92]: (1, 5)

In [93]: (x-y).shape
Out[93]: (3, 5)

In [106]: x
array([[ 0,  1,  2,  3,  4],
       [ 5,  6,  7,  8,  9],
       [10, 11, 12, 13, 14]])

In [107]: y
Out[107]: array([[0, 1, 2, 3, 4]])

In [108]: x-y
array([[ 0,  0,  0,  0,  0],
       [ 5,  5,  5,  5,  5],
       [10, 10, 10, 10, 10]])

But this is not really a euclidean distance, as your title seems to suggest you want:

df = np.asarray(x - y)                # the difference between the images
dst = np.sqrt(np.sum(df**2, axis=1))  # their euclidean distances
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I am getting ValueError: input must be a square array – user2229953 Apr 17 '13 at 19:20
@user2229953 Oh, because your x and y have type matrix, use np.asarray so that the squaring will be element-wise, see my edit. – askewchan Apr 17 '13 at 19:21
Thank you ! But the results are wired ! dst [ 11368.09117391 7238.28732897 5975.85568237 6516.33956578 4690.22604361 4727.27377993 5210.6757694 4917.37040654 4315.19124481 4351.23160123 4219.13923247 4003.55476258 4175.54212706 4102.91009999 4330.4599796 4184.70386037 4134.89623796 4162.12512307 3828.49532333 3930.67847956 3766.93023507 3666.34224248 4040.05576148 3848.65880709 3845.35577393 3869.77351631 3836.28039808 3801.06876888 3799.32736535 3646.77473834] – user2229953 Apr 17 '13 at 19:48
@user2229953 Did you have something else in mind? It makes sense that the shape of dst is (30,), because it's how different each image is from the base image. The units of that 'distance' is basically pixel brightness (assuming grayscale image). Then, dst[i] says how different is the brightness of image images[i] from the base (input?) image. Finding imin = argmin(dst) will say images[imin] is the most similar image to the input image. – askewchan Apr 17 '13 at 19:51
Well, similar to our eyes (and possibly for your application) is not necessarily the same thing as closest in the euclidean distance. Euclidean distance compares each pixel at a given location, as in, image1[i,j] is compared to image2[i,j]. The 'closest' image in euclidean distance is the one for which all these comparisons, in total, are the least. Note that the same image, rotated by a bit, might be very 'far' in this sense from itself. – askewchan Apr 17 '13 at 20:14

use array and use numpy broadcasting in order to subtract it from Y

init the matrix:

>>> from numpy import *
>>> a = array([[1,2,3],[4,5,6]])

Accessing the second row in a:

>>> a[1]
array([4, 5, 6])

Subtract array from Y

>>> Y = array([3,9,0])
>>> a - Y

array([[-2, -7,  3],
       [ 1, -4,  6]])
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The looping is done automatically by numpy broadcasting. – askewchan Apr 17 '13 at 19:24
@askewchan Thanks, I updated the answer – 0x90 Apr 17 '13 at 19:27

Just iterate rows from your numpy array and you can actually just subtract them and numpy will make a new array with the differences!

import numpy as np
final_array = []
#X is a numpy array that is 30X8100 and Y is a numpy array that is 1X8100
for row in X:
    output = row - Y

output will be your resulting array of X[0] - Y, X[1] - Y etc. Now your final_array will be an array with 30 arrays inside, each that have the values of the X-Y that you need! Simple as that. Just make sure you convert your matrices to a numpy arrays first

Edit: Since numpy broadcasting will do the iteration, all you need is one line once you have your two arrays:

final_array = X - Y

And then that is your array with the differences!

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The looping is done automatically by numpy broadcasting. – askewchan Apr 17 '13 at 19:39
@askewchan Oh, didn't know that...then it's incredibly simple, I made the edits! – Ryan Saxe Apr 17 '13 at 19:46
a1 = numpy.array(X) #make sure you have a numpy array like [[1,2,3],[4,5,6],...]
a2 = numpy.array(Y) #make sure you have a 1d numpy array like [1,2,3,...]
a2 = [a2] * len(a1[0]) #make a2 as wide as a1
a2 = numpy.array(zip(*a2)) #transpose it (a2 is now same shape as a1)

print a1-a2 #idiomatic difference between a1 and a2 (or X and Y)
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This a2 = [a2] * len(a1[0]) #make a2 as wide as a1 is done automatically by numpy broadcasting. – askewchan Apr 17 '13 at 19:27
thanks :) I dont work enough with numpy :) – Joran Beasley Apr 17 '13 at 21:01
It's a magical place! – askewchan Apr 17 '13 at 21:02

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