# Convert between NHWC and NCHW in TensorFlow

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?

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(images_nhwc, [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(images_nchw, [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 Jan 26, 2018 at 8:40
• @user3085931 : you got it Jan 26, 2018 at 9:08
• Also, what is `perm` - or how is it defined?
– nikk
Jun 28, 2018 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. Jun 29, 2018 at 9:27
• where did you use `x` and `perm`? Dec 3, 2018 at 18:23

To convert 'NCHW' to 'NHWC'

``````from keras import backend
backend.set_image_data_format('channels_last') #channels_first for NCHW
``````
• This does not do any conversion, it only changes how Keras interprets data. Nov 9, 2021 at 4:57
• Idd, deceptive answer of Rishi. This parameter pertains for example to `tensorflow.keras.preprocessing.image.load_img`. When you have a 128x128 RGB image, then `load_img` returns an array of shape (3,128,128) with `'channels_first'`. `load_img` returns an array of shape (128,128,3) with `'channels_last'`.
– Bart
Aug 29, 2022 at 9:33

For the latest TF2 models, we have a functionality in tf2onnx package. tf2onnx.convert.from_keras(input_as_nchw = [List]) is the latest function update which can be used while converting the model from .pb format to .onnx also it successfully converts the NHWC to NCHW. https://github.com/onnx/tensorflow-onnx/blob/e896723e410a59a600d1a73657f9965a3cbf2c3b/tf2onnx/convert.py#L408