I'm having some trouble getting my head around striding in numpy. I'm writing some code that does interpolation of multi-channel images. I define my images as 3 dimensional arrays of type `np.ndarray`

with shape `[HEIGHT x WIDTH x CHANNELS]`

. The C++ that I am writing must work in both Matlab AND Python. For single channel images, my code works fine, and for multi-channel images in Matlab, my code works fine.

In order to interpolate an image, I am writing a method whereby, given an `[M x N x P]`

array, you can provide a set of `X`

and `Y`

sub-pixel coordinates to be interpolated within the image. This is identical to the functionality of scipy's `ndimage.map_coordinates`

. Unfortunately, I require an interpolation method that yields identical results in both Matlab and Python and am thus rolling my own interpolation code.

My issue is that Matlab arranges it's 3-dimensional memory by stacking the concatenating the channels one after another. This means that, for a `[10, 10, 2]`

image, the first `100`

elements will be the first channel, and elements `[100, 200]`

elements will be the second channel. Therefore, to index in to the Matlab contiguous memory, I index as follows:

```
// i is the element of the indices array
// j is the current channel
// F is the image we are indexing
// F_MAX is M * N (the number of pixels per channel)
// N_ELEMS is the total number of elements in the indices array
// f_index is the index in the contiguous array equivalent to the x and y coordinate in the 2D image
for (size_t j = 0; j < N_CHANNELS; j++)
{
out[i + j * N_ELEMS] = F[f_index + j * F_MAX];
}
```

My issue is that numpy orders it's 3-dimensional arrays along the 3rd axis. That is to say, given a `[10, 10, 2]`

array, the first 2 elements are indices `[0, 0, 0]`

and `[0, 0, 1]`

. In Matlab they are indices `[0, 0, 0]`

and `[0, 1, 0]`

.

I think I can rectify my issue by using a stride in numpy. However, I am totally failing to come up with an appropriate stride pattern. **Therefore, for my example of a [10, 10, 2] array, how can I change the strides, from (assuming doubles):**

```
>>> np.ones([10,10,2], dtype=np.float64).strides
(160, 16, 8)
```

**to something that I can index into as I do for Matlab arrays?**

I should mention that I am aware of the column major/row major difference between Matlab and numpy respectively. As stated, my method works for single channel images but indexes wrong with more than 1 channel.