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

`(x==[2,3,4]).all(-1)`

or`np.where((x==[2,3,4]).all(-1))`

? – Divakar May 30 '17 at 19:27`cv2`

the expected one? – Divakar May 30 '17 at 19:32`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