I just wanna know if it's possible to convert a conv layer to a fully connected one and then return back to the conv layer ?
It is just a matter of ensuring that the input is the correct shape. I assume you are using keras.
from tensorflow.keras.layers import Dense, Flatten, Conv2D, Reshape # Add a convolution to the network (previous layer called some_input) c1 = Conv2D(32, (3, 3), activation='relu', name='first_conv')(some_input) # Now reshape using 'Flatten' f1 = Flatten(name='flat_c1')(c1) # Now add a dense layer with 10 nodes dense1 = Dense(10, activation='relu', name='dense1')(f1) # Now add a dense layer, making sure it has the right number of nodes for my next conreshape8v layer. dense2 = Dense(784, activation='relu', name='dense2')(dense1) reshape2 = Reshape((7, 7, 16), name='reshape2')(dense2) #Now back to convolutions (up or down) c2 = Conv2D(16, kernel_size=(3, 3), activation='relu', name='conv2')(reshape2)