I do not understand why the channel dimension is not included in the output dimension of a conv2D layer in Keras.

I have the following model

def create_model():
    image = Input(shape=(128,128,3))

    x = Conv2D(24, kernel_size=(8,8), strides=(2,2), activation='relu', name='conv_1')(image)
    x = Conv2D(24, kernel_size=(8,8), strides=(2,2), activation='relu', name='conv_2')(x)
    x = Conv2D(24, kernel_size=(8,8), strides=(2,2), activation='relu', name='conv_3')(x)
    flatten = Flatten(name='flatten')(x)

    output = Dense(1, activation='relu', name='output')(flatten)
    model = Model(input=image, output=output)
    return model

model = create_model()

The model summary is given the figure at the end of my question. The input layer takes RGB images with width = 128 and height = 128. The first conv2D layer tells me the output dimension is (None, 61, 61, 24). I have used the kernel size of (8, 8), a stride of (2, 2) no padding. The values 61 = floor( (128 - 8 + 2 * 0)/2 + 1) and 24 (number of kernels/filters) makes sense. But why isn't the dimension for the different channels included in the dimension? As far as I can see the parameters for the 24 filters on each of the channels is included in the number of the parameters. So I would expect the output dimension to be (None, 61, 61, 24, 3) or (None, 61, 61, 24 * 3). Is this just a strange notation in Keras or am I confused about something else?

enter image description here

  • You are confused about something else, a Conv2D layer outputs n feature maps, which is the number of kernels or filters, and the channels dimension is always equal to the number of output feature maps. – Dr. Snoopy Mar 31 '19 at 19:05
  • @MatiasValdenegro: But I thought that the convolution is scanning over each channel of the image so I would assume that there is an additional dimension. The convolution should give (61, 61, 24) as output but for each of the layers. Is this implicitly implied? – MachineLearner Mar 31 '19 at 19:15
  • No, convolution doesn't work like that. – Dr. Snoopy Mar 31 '19 at 19:16
  • @MatiasValdenegro: Does the convolution scan all three channels at the same time? – MachineLearner Mar 31 '19 at 19:18
  • 1
    @MachineLearner Yes, therefore I wrote explicity (in_channels, k, k) – Vlad Mar 31 '19 at 19:35

This question is asked in various forms all over the internet and has a simple answer which is often missed or confused:

SIMPLE ANSWER: The Keras Conv2D layer, given a multi-channel input (e.g. a color image), will apply the filter across ALL the color channels and sum the results, producing the equivalent of a monochrome convolved output image.

An example, from the keras.io website cifar CNN example:

(1) You're training with the CIFAR image dataset, which is made up of 32x32 color images, i.e. each image is shape (32,32,3) (RGB = 3 channels)

(2) Your first layer of your network is a Conv2D Layer with 32 filters, each specified as 3x3, so:

Conv2D(32, (3,3), padding='same', input_shape=(32,32,3))

(3) Counter-intuitively, Keras will configure each filter as (3,3,3), i.e. a 3D volume covering the 3x3 pixels PLUS all the color channels. As a minor detail each filter has an additional weight for a BIAS value, as per normal neural network layer arithmetic.

(4) Convolution proceeds absolutely as normal, except a 3x3x3 VOLUME from the input image is convolved at each step with the 3x3x3 filter, and a single (monochrome) output value (i.e. like a pixel) is produced at each step.

(5) The result is a Keras Conv2D convolution of a specified (3,3) filter on a (32,32,3) image produces a (32,32) result because the actual filter used is (3,3,3).

(6) In this example, we have also specified 32 filters in the Conv2D layer, so the actual output is (32,32,32) for each input image (i.e. you might think of this as 32 images, one for each filter, each 32x32 monochrome pixels).

As a check, you can look at the count of weights (Param #) for the layer produced by model.summary():

Layer (type)         Output shape       Param#
conv2d_1 (Conv2D)   (None, 32, 32, 32)  896

There are 32 filters, each 3x3x3 (i.e. 27 weights) plus 1 for the bias (i.e. total 28 weights each). And 32 filters x 28 weights each = 896 Parameters.

| improve this answer | |

Each of the convolutional filters (8 x 8) is connected to a (8 x 8) receptive field for all the channels of the image. That is why we have (61, 61, 24) as the output of the second layer. The different channels are encoded implicitly into the weights of the 24 filters. This means, that each filter does not have 8 x 8 = 64 weights but instead 8 x 8 x Number of channels = 8 x 8 x 3 = 192 weights.

See this quote from CS231 enter image description here

Left: An example input volume in red (e.g. a 32x32x3 CIFAR-10 image), and an example volume of neurons in the first Convolutional layer. Each neuron in the convolutional layer is connected only to a local region in the input volume spatially, but to the full depth (i.e. all color channels). Note, there are multiple neurons (5 in this example) along the depth, all looking at the same region in the input - see discussion of depth columns in the text below. Right: The neurons from the Neural Network chapter remains unchanged: They still compute a dot product of their weights with the input followed by a non-linearity, but their connectivity is now restricted to be local spatially.

| improve this answer | |

My guess is that you're misunderstanding how convolutional layers defined.

My notation for the shape of the convolutional layer is (out_channels, in_channels, k, k) where k is a the size of the kernel. The out_channels is the number of filters (i.e. convolutional neurons). Consider following image:

Convolution illustration

The 3d convolutional kernel weights in the picture slide across different data windows of A_{i-1}(i.e. input image). Patches of 3D data of that image of shape (in_channels, k, k) are paired with individual 3d convolutional kernels of matching dimensionality. How many such 3d kernels are there? As the number of output channels out_channels. The depth dimension that kernel adopts is the in_channels of A_{i-1}. Therefore, the dimension in_channels of A_{i-1} is contracted away by the depth-wise dot product that builds up the output tensor with out_channels channels. The precise way in which the sliding windows are constructed is defined by the sampling tuple (kernel_size, stride, padding) and results in output tensor with spatial dimensions determined by the formula that you're correctly applied.

If you want to understand more, including backpropagation and implementation take a look at this paper.

| improve this answer | |
  • Thank you for your answer. But this doesn't really help me. – MachineLearner Mar 31 '19 at 19:18
  • @MachineLearner Ok. Anyway, I really suggest you to read the paper I mentioned. – Vlad Mar 31 '19 at 19:23

The formula you're using is correct. It may be little confusing because many popular tutorial use number of filters equal to number of channels in the image. TensorFlow/Keras implementation produces its output by computing num_input_channels * num_output_channels intermediate feature maps of size (kernel_size[0], kernel_size[1]). So for each input channel it produces num_output_channels feature maps which then get multiplied and concatenated together to create output shape of (kernel_size[0], kernel_size[1], num_output_channels) Hope this clarifies Vlad's detailed answer

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