0

I am utilizing tensorflow ver 2, tensorflow.keras.

A model I made is in a sequence of tf.keras.Conv2D ( which requires 4D input tensor (samples, rows, cols, channels)

then tf.keras.convLSTM2D (which requires 5D input tensor (samples, time, rows, cols, channels).

Because of this reason, I made an input with 5D tensor (samples, time, rows, cols, channels) but it can't be fed into tf.keras.Conv2D at the beginning when I implement model.fit(train_data, train_data... )

Is there any way to make model.fit to take 5D tensor?

3
  • Your question is a bit misleading, the problem is not about model.fit, its with you trying to input a 5D tensor to Conv2D, which won't work. Conv3D will accept your tensor with no issues. – Dr. Snoopy Jan 31 '20 at 9:22
  • You could use a Conv3D, and just keep the time axis stride and kernal at 1. – matt Jan 31 '20 at 9:23
  • You shouldn't use conv3D in case of temporal conv2D network. TimeDistributed layer of Keras is made just for that. – Orphee Faucoz Jan 31 '20 at 9:24
2

You need to implement TimeDistributed conv2D as in :

x_conv = tf.keras.layers.TimeDistributed(tf.keras.layers.Conv2D(filters=filters,
                                                                kernel_size=kernel_size,
                                                                strides=strides,
                                                                padding='same',
                                                                kernel_initializer='he_normal'))(x)

This way the layers understand that you're giving 4D input over timestep

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.