You can follow along with the code in the Jupyter notebook ch-14a_SimpleGAN.
For building the GAN with TensorFlow, we build three networks, two discriminator models, and one generator model with the following steps:
- Start by adding the hyper-parameters for defining the network:
# graph hyperparameters
g_learning_rate = 0.00001
d_learning_rate = 0.01
n_x = 784 # number of pixels in the MNIST image
# number of hidden layers for generator and discriminator
g_n_layers = 3
d_n_layers = 1
# neurons in each hidden layer
g_n_neurons = [256, 512, 1024]
d_n_neurons = [256]
# define parameter ditionary
d_params = {}
g_params = {}
activation = tf.nn.leaky_relu
w_initializer = tf.glorot_uniform_initializer
b_initializer = tf.zeros_initializer
- Next, define the generator network:
z_p = tf.placeholder(dtype=tf.float32, name='z_p',
shape=[None, n_z])
layer =...