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?

  • 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

You need to implement TimeDistributed conv2D as in :

x_conv = tf.keras.layers.TimeDistributed(tf.keras.layers.Conv2D(filters=filters,

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

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