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I wanted to use numpy to find the array elements of a given value e.g. [2,3,4] (eg. these could be pixel vals). Should be simple but its thrown me for long enough that I turn to you o oracle.

I tried np.where and boolean but am comfustulated by the results :

In [4]: x=np.array([[[2,3,4],[4,5,6]],[[5,6,7],[6,7,8]]])

In [5]: x.shape
Out[5]: (2, 2, 3)

In [6]: np.where(x==[2,3,4])
Out[6]: (array([0, 0, 0]), array([0, 0, 0]), array([0, 1, 2]))

In [7]: [x==[2,3,4]]
Out[7]: 
[array([[[ True,  True,  True],
         [False, False, False]],

        [[False, False, False],
         [False, False, False]]], dtype=bool)]

i know i can do this

In [14]: import cv2

In [15]: cv2.inRange(x,np.array([2,3,4]),np.array([2,3,4]))
Out[15]: 
array([[255,   0],
       [  0,   0]], dtype=uint8)

but i was kind of wanting to avoid using a cv2 cannon for a numpy mosquito

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    (x==[2,3,4]).all(-1) or np.where((x==[2,3,4]).all(-1))? – Divakar May 30 '17 at 19:27
  • the first works, tho second doesnt and i am not sure what numpy is returning here , even in np.where(x==[2,3,4]), what is that answer? – jeremy_rutman May 30 '17 at 19:31
  • The second one returns the row, col indices for the matches along the height and width of the image respectively. You didn't specify the expected output there in the question. Is the one from cv2 the expected one? – Divakar May 30 '17 at 19:32
  • yes i was after a boolean array of one less dimension , usable as mask . how does the second one work - what is the (array([0, 0, 0]), array([0, 0, 0]), array([0, 1, 2])) answer to np.where(x==[2,3,4]) ? – jeremy_rutman May 30 '17 at 20:44
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    np.where gives us the indices of matches along each axis. So, for np.where(x==[2,3,4]), it gives indices along all three axes. all(-1) is basically .all(axis=-1) i.e. ALL reduction along last axis. – Divakar May 31 '17 at 3:46

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