if not add_extra: # Output (14,14) -> (5, 5) # the HiddenLayer being fully-connected, it operates on 2D matrices of # shape (batch_size,num_pixels) (i.e matrix of rasterized images). # This will generate a matrix of shape (20, 32 * 4 * 4) = (20, 512) layer2_input = layer1.output.flatten(2) # construct a fully-connected sigmoidal layer layer2 = HiddenLayer(rng, input=layer2_input, n_in=50 * ((l1ims-4)/2)**2, n_out=500, activation=T.tanh) # classify the values of the fully-connected sigmoidal layer layer3 = LogisticRegression(input=layer2.output, n_in=500, n_out=2) else: # Output (14,14) -> (5, 5) # the HiddenLayer being fully-connected, it operates on 2D matrices of # shape (batch_size,num_pixels) (i.e matrix of rasterized images). # This will generate a matrix of shape (20, 32 * 4 * 4) = (20, 512) layer2_input = T.horizontal_stack(layer1.output.flatten(2), x_extra) # construct a fully-connected sigmoidal layer layer2 = HiddenLayer(rng, input=layer2_input, n_in=50 * ((l1ims-4)/2)**2 + ExtraColumns, n_out=500, activation=T.tanh) # classify the values of the fully-connected sigmoidal layer
if not add_extra: # Output (14,14) -> (5, 5) # the HiddenLayer being fully-connected, it operates on 2D matrices of # shape (batch_size,num_pixels) (i.e matrix of rasterized images). # This will generate a matrix of shape (20, 32 * 4 * 4) = (20, 512) layer2_input = layer1.output.flatten(2) # construct a fully-connected sigmoidal layer layer2 = HiddenLayer(rng, input=layer2_input, n_in=50 * ((l1ims-4)/2)**2, n_out=50, activation=T.tanh) # classify the values of the fully-connected sigmoidal layer layer3 = LogisticRegression(input=layer2.output, n_in=50, n_out=2) else: # Output (14,14) -> (5, 5) # the HiddenLayer being fully-connected, it operates on 2D matrices of # shape (batch_size,num_pixels) (i.e matrix of rasterized images). # This will generate a matrix of shape (20, 32 * 4 * 4) = (20, 512) layer2_input = T.horizontal_stack(layer1.output.flatten(2), x_extra) # construct a fully-connected sigmoidal layer layer2 = HiddenLayer(rng, input=layer2_input, n_in=50 * ((l1ims-4)/2)**2 + ExtraColumns, n_out=500, activation=T.tanh) # classify the values of the fully-connected sigmoidal layer