I have a problem of translating elements in a numpy array according to a translation table given. Say I have a 2D translation table trTab, e.g.

```
import numpy as np
trTab = np.array([[0, 1, 2, 3 ,4, 5,
[5, 2, 3, 1, 0, 4]])
```

where `trTab[0, :]`

holds all possible ids (integers), while `trTab[1, :]`

their translations that will be used later. The ids in both rows of `trTab`

are unique. Then I need to translate all ids in the first column of a frame numpy array, say

```
frame = np.array([[0, ...],
[3, ...],
[5, ...],
[1, ...]])
```

so that it would now be equal to `[[5, ...], [1, ...], [4, ...], [2, ...]]`

, i.e. `0->5`

, `3->1`

, `5->4`

, and `1->2`

.

`frame`

can be of different number of rows, in fact I'll need to translate a long sequence of frames. The ids in `frame`

0'th column do not have to be in order, and not all possible ids need to be used.

Is there any simple and fast method of translating each such frame array according to the given `trTab`

not by simple looping over all `fr[:, 0]`

values? Looping takes much too much time in case of few thousand frames to be processed.