# Rotating images by 90 degrees for a multidimensional NumPy array

I have a numpy array of shape (7,4,100,100) which means that I have 7 images of 100x100 with depth 4. I want to rotate these images at 90 degrees. I have tried:

``````rotated= numpy.rot90(array, 1)
``````

but it changes the shape of the array to (4,7,100,100) which is not desired. Any solution for that?

• sorry it was rot90().. I have edited the question. Plus I have tried numpy.rot90(array,(2,3)) but it gives: TypeError: unsupported operand type(s) for %: 'tuple' and 'int' Commented May 9, 2017 at 8:43
– user2261062
Commented May 9, 2017 at 8:51
• @SembeiNorimaki Don't think OP has downvoted. OP's profile shows no votes cast. Commented May 9, 2017 at 8:53
• @SembeiNorimaki i did'nt downvote your answer mate! Commented May 9, 2017 at 8:54
• I asked for explanation to the downvoter and you said the answer was not working as a reply to my question.
– user2261062
Commented May 9, 2017 at 8:54

One solution without using `np.rot90` to rotate in clockwise direction would be to swap the last two axes and then flip the last one -

``````img.swapaxes(-2,-1)[...,::-1]
``````

For counter-clockwise rotation, flip the second last axis -

``````img.swapaxes(-2,-1)[...,::-1,:]
``````

With `np.rot90`, the counter-clockwise rotation would be -

``````np.rot90(img,axes=(-2,-1))
``````

Sample run -

``````In [39]: img = np.random.randint(0,255,(7,4,3,5))

In [40]: out_CW = img.swapaxes(-2,-1)[...,::-1] # Clockwise

In [41]: out_CCW = img.swapaxes(-2,-1)[...,::-1,:] # Counter-Clockwise

In [42]: img[0,0,:,:]
Out[42]:
array([[142, 181, 141,  81,  42],
[  1, 126, 145, 242, 118],
[112, 115, 128,   0, 151]])

In [43]: out_CW[0,0,:,:]
Out[43]:
array([[112,   1, 142],
[115, 126, 181],
[128, 145, 141],
[  0, 242,  81],
[151, 118,  42]])

In [44]: out_CCW[0,0,:,:]
Out[44]:
array([[ 42, 118, 151],
[ 81, 242,   0],
[141, 145, 128],
[181, 126, 115],
[142,   1, 112]])
``````

Runtime test

``````In [41]: img = np.random.randint(0,255,(800,600))

# @Manel Fornos's Scipy based rotate func
In [42]: %timeit rotate(img, 90)
10 loops, best of 3: 60.8 ms per loop

In [43]: %timeit np.rot90(img,axes=(-2,-1))
100000 loops, best of 3: 4.19 µs per loop

In [44]: %timeit img.swapaxes(-2,-1)[...,::-1,:]
1000000 loops, best of 3: 480 ns per loop
``````

Thus, for rotating by `90` degrees or multiples of it, `numpy.dot` or `swapping axes` based ones seem pretty good in terms of performance and also more importantly do not perform any interpolation that would change the values otherwise as done by Scipy's rotate based function.

• how can rotate at 180 degrees using swapaxes? Commented May 9, 2017 at 15:12
• @FJ_Abbasi Use `out = img[...,::-1,::-1]`. Commented May 9, 2017 at 18:05

# Another option

You could use `scipy.ndimage.rotate`, i think that it's more useful than `numpy.rot90`

For example,

``````from scipy.ndimage import rotate

rotate_img = rotate(img, 90)

imshow(rotate_img)
``````

# Updated (Beware with interpolation)

If you pay attention at the rotated image you will observe a black border on the left, this is because Scipy use interpolation. So, actually the image has been changed. However, if that is a problem for you there are many options able to remove the black borders.

See this post.

• Thanks man that works! solution to my problem: rotate_img= rotate(array, 90, axes=(2,3)) Commented May 9, 2017 at 9:18
• @FahadJahangir I am glad I was able to help :) Commented May 9, 2017 at 9:24
• @FahadJahangir Beware this does interpolation. So, the values would be changed and also there would be one black line on the left side. Try with `img = np.random.randint(0,255,(3,5))` and then `rot1 = rotate(img, 90)` and look at `img` and `rot1`. To Manel - This might be worth mentioning in the post for the benefit of OP and future readers. Commented May 9, 2017 at 9:26
• FYI, for 90/180/270 rotations and flips, this is much more computationally expensive Commented Jan 5, 2021 at 22:24

Rotate three times counter clockwise: np.rot90(image, 3).

It may be three times slower, may not be if the implementation is actually optimized and we are specifying the angle here in 90 increments, not a loop counter.