I got this error message when declaring the input layer in Keras.

ValueError: Negative dimension size caused by subtracting 3 from 1 for 'conv2d_2/convolution' (op: 'Conv2D') with input shapes: [?,1,28,28], [3,3,28,32].

My code is like this

model.add(Convolution2D(32, 3, 3, activation='relu', input_shape=(1,28,28)))

Sample application: https://github.com/IntellijSys/tensorflow/blob/master/Keras.ipynb

  • 2
    I think you want to use a 3x3 kernel. In this case you should write (3, 3) instead of 3, 3.
    – ml4294
    Aug 12, 2017 at 7:22

6 Answers 6


By default, Convolution2D (https://keras.io/layers/convolutional/) expects the input to be in the format (samples, rows, cols, channels), which is "channels-last". Your data seems to be in the format (samples, channels, rows, cols). You should be able to fix this using the optional keyword data_format = 'channels_first' when declaring the Convolution2D layer.

model.add(Convolution2D(32, (3, 3), activation='relu', input_shape=(1,28,28), data_format='channels_first'))
  • 4
    Note that it can be set globally in ~/.keras/keras.json: "image_data_format": "channels_first"
    – Shaohua Li
    Feb 18, 2018 at 15:17

I had the same problem, however the solution provided in this thread did not help me. In my case it was a different problem that caused this error:



classifier.add(Conv2D(64, (3, 3), input_shape = (imageSize, imageSize, 3), activation = 'relu'))
classifier.add(MaxPooling2D(pool_size = (2, 2)))

classifier.add(Conv2D(64, (3, 3), activation = 'relu'))
classifier.add(MaxPooling2D(pool_size = (2, 2)))

classifier.add(Conv2D(64, (3, 3), activation = 'relu')) 
classifier.add(MaxPooling2D(pool_size = (2, 2)))

classifier.add(Conv2D(64, (3, 3), activation = 'relu')) 
classifier.add(MaxPooling2D(pool_size = (2, 2)))

classifier.add(Conv2D(64, (3, 3), activation = 'relu')) 
classifier.add(MaxPooling2D(pool_size = (2, 2)))



The image size is 32 by 32. After the first convolutional layer, we reduced it to 30 by 30. (If I understood convolution correctly)

Then the pooling layer divides it, so 15 by 15.

Then another convolutional layer reduces it to 13 by 13...

I hope you can see where this is going: In the end, my feature map is so small that my pooling layer (or convolution layer) is too big to go over it - and that causes the error


The easy solution to this error is to either make the image size bigger or use less convolutional or pooling layers.

  • Great intuitive explanation. However, one thing I don't get from your answer is why the reduction from 32x32 to 30x30 after the convolution layer. The division of pixels / pool_size ("window" size) is obvious and can't understand how I did not figured that out myself. The output of convolution layer is: IMG_HEIGHT - kernel_size + 1.
    – Banik
    Jan 14 at 13:52
  • 1
    Its been a long time since ive done this, so bear with me: If e.g. your base is 4x4, and your convolution layer is 3x3. Try drawing the different positions you can put your conv layer on top of the 4x4 base layer. There are 4 positions if im right. So your output of this operations are a 2x2 new layer. In other words, the convolution operation decreased the size of the base layer. A similar thing happens in my above example.
    – charelf
    Jan 15 at 10:30
  • 1

Keras is available with following backend compatibility:

TensorFlow : By google, Theano : Developed by LISA lab, CNTK : By Microsoft

Whenever you see a error with [?,X,X,X], [X,Y,Z,X], its a channel issue to fix this use auto mode of Keras:


from keras import backend as K

"tf" format means that the convolutional kernels will have the shape (rows, cols, input_depth, depth)

This will always work ...


You can instead preserve spatial dimensions of the volume such that the output volume size matches the input volume size, by setting the value to “same”. use padding='same'


Use the following:

from keras import backend

Depending on your preference, you can use 'channels_first' or 'channels_last' to set the image data format. (Source)

If this does not work and your image size is small, try reducing the architecture of your CNN, as previous posters mentioned.

Hope it helps!

    # define the model as a class
class LeNet:

      In a sequential model, we stack layers sequentially. 
      So, each layer has unique input and output, and those inputs and outputs 
      then also come with a unique input shape and output shape.


  @staticmethod                ## class can instantiated only once 
  def init(numChannels, imgRows, imgCols , numClasses, weightsPath=None):

    # if we are using channel first we have update the input size
    if backend.image_data_format() == "channels_first":
      inputShape = (numChannels , imgRows , imgCols)
      inputShape = (imgRows , imgCols , numChannels)

    # initilize the model
    model = models.Sequential()

    # Define the first set of CONV => ACTIVATION => POOL LAYERS

    model.add(layers.Conv2D(  filters=6,kernel_size=(5,5),strides=(1,1), 

I hope it would help :)

See code : Fashion_Mnist_Using_LeNet_CNN

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