Reputation: 13
I wanted to replace the Dense_out layer with a convolution one, can anybody tell me how to do it?
code:
model = Sequential()
conv_1 = Conv2D(filters = 32,kernel_size=(3,3),activation='relu')
model.add(conv_1)
conv_2 = Conv2D(filters=64,kernel_size=(3,3),activation='relu')
model.add(conv_2)
pool = MaxPool2D(pool_size = (2,2),strides = (2,2), padding = 'same')
model.add(pool)
drop = Dropout(0.5)
model.add(drop)
model.add(Flatten())
Dense_1 = Dense(128,activation = 'relu')
model.add(Dense_1)
Dense_out = Dense(57,activation = 'softmax')
model.add(Dense_out)
model.compile(optimizer='Adam',loss='categorical_crossentropy',metric=['accuracy'])
model.fit(train_image,train_label,epochs=10,verbose = 1,validation_data=(test_image,test_label))
print(model.summary())
when I'm trying this code :
model = Sequential()
conv_01 = Conv2D(filters = 32,kernel_size=(3,3),activation='relu')
model.add(conv_01)
conv_02 = Conv2D(filters=64,kernel_size=(3,3),activation='relu')
model.add(conv_02)
pool = MaxPool2D(pool_size = (2,2),strides = (2,2), padding = 'same')
model.add(pool)
conv_11 = Conv2D(filters=64,kernel_size=(3,3),activation='relu')
model.add(conv_11)
pool_2 = MaxPool2D(pool_size=(2,2),strides=(2,2),padding='same')
model.add(pool_2)
drop = Dropout(0.3)
model.add(drop)
model.add(Flatten())
Dense_1 = Dense(128,activation = 'relu')
model.add(Dense_1)
Dense_2 = Dense(64,activation = 'relu')
model.add(Dense_2)
conv_out = Conv2D(filters= 64,kernel_size=(3,3),activation='relu')
model.add(Dense_out)
model.compile(optimizer='Adam',loss='categorical_crossentropy',metrics=['accuracy'])
model.fit(train_image,train_label,epochs=10,verbose = 1,validation_data=(test_image,test_label))
I get the following error
ValueError: Input 0 of layer conv2d_3 is incompatible with the layer: expected ndim=4, found ndim=2. Full shape received: [None, 64]
I am new at this so an explanation would greatly help
Upvotes: 1
Views: 1445
Reputation: 514
You will need to reshape to be able to use a 2x2 filter as needed in a conv2D layer. You can use:
out = keras.layers.Reshape(target_shape)
model.add(out)
and then do the convolution:
conv_out = Conv2D(filters=3,kernel_size=(3,3),activation='softmax')
model.add(conv_out)
with filters
being the number of channels you want in you output layer (3 for RGB).
More info about the layers and parameters in Keras Documentation
Upvotes: 0