What is the best way to convert a tensor from NHWC format to NCHW format, and vice versa?

Is there an op specifically that does this, or will I need to use some combination of the split/concat type operations?

up vote 33 down vote accepted

All you need to do is a permutation of the dimensions from NHWC to NCHW (or the contrary).

The meaning of each letter might help understand:

  • N: number of images in the batch
  • H: height of the image
  • W: width of the image
  • C: number of channels of the image (ex: 3 for RGB, 1 for grayscale...)

From NHWC to NCHW

The image shape is (N, H, W, C) and we want the output to have shape (N, C, H, W). Therefore we need to apply tf.transpose with a well chosen permutation perm.

The returned tensor's dimension i will correspond to the input dimension perm[i]

perm[0] = 0  # output dimension 0 will be 'N', which was dimension 0 in the input
perm[1] = 3  # output dimension 1 will be 'C', which was dimension 3 in the input
perm[2] = 1  # output dimension 2 will be 'H', which was dimension 1 in the input
perm[3] = 2  # output dimension 3 will be 'W', which was dimension 2 in the input

In practice:

images_nhwc = tf.placeholder(tf.float32, [None, 200, 300, 3])  # input batch
out = tf.transpose(x, [0, 3, 1, 2])
print(out.get_shape())  # the shape of out is [None, 3, 200, 300]

From NCHW to NHWC

The image shape is (N, C, H, W) and we want the output to have shape (N, H, W, C). Therefore we need to apply tf.transpose with a well chosen permutation perm.

The returned tensor's dimension i will correspond to the input dimension perm[i]

perm[0] = 0  # output dimension 0 will be 'N', which was dimension 0 in the input
perm[1] = 2  # output dimension 1 will be 'H', which was dimension 2 in the input
perm[2] = 3  # output dimension 2 will be 'W', which was dimension 3 in the input
perm[3] = 1  # output dimension 3 will be 'C', which was dimension 1 in the input

In practice:

images_nchw = tf.placeholder(tf.float32, [None, 3, 200, 300])  # input batch
out = tf.transpose(x, [0, 2, 3, 1])
print(out.get_shape())  # the shape of out is [None, 200, 300, 3]
  • For the sake of completeness: an explication why these commands are needed would be supportive – user3085931 Jan 26 at 8:40
  • 1
    @user3085931 : you got it – Olivier Moindrot Jan 26 at 9:08
  • Also, what is perm - or how is it defined? – nikk Jun 28 at 22:06
  • perm is the permutation of the dimensions of the image to go from (N, H, W, C) to (N, C, H, W) for instance. – Olivier Moindrot Jun 29 at 9:27
  • where did you use x and perm? – Ruthvik Vaila Dec 3 at 18:23

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