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cvae-cnn-mnist-8.2.1.py
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cvae-cnn-mnist-8.2.1.py
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'''Example of CVAE on MNIST dataset using CNN
This VAE has a modular design. The encoder, decoder and vae
are 3 models that share weights. After training vae,
the encoder can be used to generate latent vectors.
The decoder can be used to generate MNIST digits by sampling the
latent vector from a gaussian dist with mean=0 and std=1.
[1] Sohn, Kihyuk, Honglak Lee, and Xinchen Yan.
"Learning structured output representation using
deep conditional generative models."
Advances in Neural Information Processing Systems. 2015.
'''
from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
from tensorflow.keras.layers import Dense, Input
from tensorflow.keras.layers import Conv2D, Flatten, Lambda
from tensorflow.keras.layers import Reshape, Conv2DTranspose
from tensorflow.keras.layers import concatenate
from tensorflow.keras.models import Model
from tensorflow.keras.datasets import mnist
from tensorflow.keras.losses import mse, binary_crossentropy
from tensorflow.keras.utils import plot_model
from tensorflow.keras import backend as K
from tensorflow.keras.utils import to_categorical
import numpy as np
import matplotlib.pyplot as plt
import argparse
import os
# reparameterization trick
# instead of sampling from Q(z|X), sample eps = N(0,I)
# z = z_mean + sqrt(var)*eps
def sampling(args):
"""Implements reparameterization trick by sampling
from a gaussian with zero mean and std=1.
Arguments:
args (tensor): mean and log of variance of Q(z|X)
Returns:
sampled latent vector (tensor)
"""
z_mean, z_log_var = args
batch = K.shape(z_mean)[0]
dim = K.int_shape(z_mean)[1]
# by default, random_normal has mean=0 and std=1.0
epsilon = K.random_normal(shape=(batch, dim))
return z_mean + K.exp(0.5 * z_log_var) * epsilon
def plot_results(models,
data,
y_label,
batch_size=128,
model_name="cvae_mnist"):
"""Plots 2-dim mean values of Q(z|X) using labels
as color gradient then, plot MNIST digits as
function of 2-dim latent vector
Arguments:
models (list): encoder and decoder models
data (list): test data and label
y_label (array): one-hot vector of which digit to plot
batch_size (int): prediction batch size
model_name (string): which model is using this function
"""
encoder, decoder = models
x_test, y_test = data
xmin = ymin = -4
xmax = ymax = +4
os.makedirs(model_name, exist_ok=True)
filename = os.path.join(model_name, "vae_mean.png")
# display a 2D plot of the digit classes in the latent space
z, _, _ = encoder.predict([x_test, to_categorical(y_test)],
batch_size=batch_size)
plt.figure(figsize=(12, 10))
# axes x and y ranges
axes = plt.gca()
axes.set_xlim([xmin,xmax])
axes.set_ylim([ymin,ymax])
# subsample to reduce density of points on the plot
z = z[0::2]
y_test = y_test[0::2]
plt.scatter(z[:, 0], z[:, 1], marker="")
for i, digit in enumerate(y_test):
axes.annotate(digit, (z[i, 0], z[i, 1]))
plt.xlabel("z[0]")
plt.ylabel("z[1]")
plt.savefig(filename)
plt.show()
filename = os.path.join(model_name, "%05d.png" % np.argmax(y_label))
# display a 10x10 2D manifold of the digit (y_label)
n = 10
digit_size = 28
figure = np.zeros((digit_size * n, digit_size * n))
# linearly spaced coordinates corresponding to the 2D plot
# of digit classes in the latent space
grid_x = np.linspace(-4, 4, n)
grid_y = np.linspace(-4, 4, n)[::-1]
for i, yi in enumerate(grid_y):
for j, xi in enumerate(grid_x):
z_sample = np.array([[xi, yi]])
x_decoded = decoder.predict([z_sample, y_label])
digit = x_decoded[0].reshape(digit_size, digit_size)
figure[i * digit_size: (i + 1) * digit_size,
j * digit_size: (j + 1) * digit_size] = digit
plt.figure(figsize=(10, 10))
start_range = digit_size // 2
end_range = n * digit_size + start_range + 1
pixel_range = np.arange(start_range, end_range, digit_size)
sample_range_x = np.round(grid_x, 1)
sample_range_y = np.round(grid_y, 1)
plt.xticks(pixel_range, sample_range_x)
plt.yticks(pixel_range, sample_range_y)
plt.xlabel("z[0]")
plt.ylabel("z[1]")
plt.imshow(figure, cmap='Greys_r')
plt.savefig(filename)
plt.show()
# MNIST dataset
(x_train, y_train), (x_test, y_test) = mnist.load_data()
image_size = x_train.shape[1]
x_train = np.reshape(x_train, [-1, image_size, image_size, 1])
x_test = np.reshape(x_test, [-1, image_size, image_size, 1])
x_train = x_train.astype('float32') / 255
x_test = x_test.astype('float32') / 255
# compute the number of labels
num_labels = len(np.unique(y_train))
# network parameters
input_shape = (image_size, image_size, 1)
label_shape = (num_labels, )
batch_size = 128
kernel_size = 3
filters = 16
latent_dim = 2
epochs = 30
# VAE model = encoder + decoder
# build encoder model
inputs = Input(shape=input_shape, name='encoder_input')
y_labels = Input(shape=label_shape, name='class_labels')
x = Dense(image_size * image_size)(y_labels)
x = Reshape((image_size, image_size, 1))(x)
x = concatenate([inputs, x])
for i in range(2):
filters *= 2
x = Conv2D(filters=filters,
kernel_size=kernel_size,
activation='relu',
strides=2,
padding='same')(x)
# shape info needed to build decoder model
shape = K.int_shape(x)
# generate latent vector Q(z|X)
x = Flatten()(x)
x = Dense(16, activation='relu')(x)
z_mean = Dense(latent_dim, name='z_mean')(x)
z_log_var = Dense(latent_dim, name='z_log_var')(x)
# use reparameterization trick to push the sampling out as input
# note that "output_shape" isn't necessary
# with the TensorFlow backend
z = Lambda(sampling,
output_shape=(latent_dim,),
name='z')([z_mean, z_log_var])
# instantiate encoder model
encoder = Model([inputs, y_labels],
[z_mean, z_log_var, z],
name='encoder')
encoder.summary()
plot_model(encoder,
to_file='cvae_cnn_encoder.png',
show_shapes=True)
# build decoder model
latent_inputs = Input(shape=(latent_dim,), name='z_sampling')
x = concatenate([latent_inputs, y_labels])
x = Dense(shape[1]*shape[2]*shape[3], activation='relu')(x)
x = Reshape((shape[1], shape[2], shape[3]))(x)
for i in range(2):
x = Conv2DTranspose(filters=filters,
kernel_size=kernel_size,
activation='relu',
strides=2,
padding='same')(x)
filters //= 2
outputs = Conv2DTranspose(filters=1,
kernel_size=kernel_size,
activation='sigmoid',
padding='same',
name='decoder_output')(x)
# instantiate decoder model
decoder = Model([latent_inputs, y_labels],
outputs,
name='decoder')
decoder.summary()
plot_model(decoder,
to_file='cvae_cnn_decoder.png',
show_shapes=True)
# instantiate vae model
outputs = decoder([encoder([inputs, y_labels])[2], y_labels])
cvae = Model([inputs, y_labels], outputs, name='cvae')
if __name__ == '__main__':
parser = argparse.ArgumentParser()
help_ = "Load tf model trained weights"
parser.add_argument("-w", "--weights", help=help_)
help_ = "Use binary cross entropy instead of mse (default)"
parser.add_argument("--bce", help=help_, action='store_true')
help_ = "Specify a specific digit to generate"
parser.add_argument("-d", "--digit", type=int, help=help_)
help_ = "Beta in Beta-CVAE. Beta > 1. Default is 1.0 (CVAE)"
parser.add_argument("-b", "--beta", type=float, help=help_)
args = parser.parse_args()
models = (encoder, decoder)
data = (x_test, y_test)
if args.beta is None or args.beta < 1.0:
beta = 1.0
print("CVAE")
model_name = "cvae_cnn_mnist"
save_dir = "cvae_weights"
else:
beta = args.beta
print("Beta-CVAE with beta=", beta)
model_name = "beta-cvae_cnn_mnist"
save_dir = "beta-cvae_weights"
# VAE loss = mse_loss or xent_loss + kl_loss
if args.bce:
reconstruction_loss = binary_crossentropy(K.flatten(inputs),
K.flatten(outputs))
else:
reconstruction_loss = mse(K.flatten(inputs), K.flatten(outputs))
reconstruction_loss *= image_size * image_size
kl_loss = 1 + z_log_var - K.square(z_mean) - K.exp(z_log_var)
kl_loss = K.sum(kl_loss, axis=-1)
kl_loss *= -0.5 * beta
cvae_loss = K.mean(reconstruction_loss + kl_loss)
cvae.add_loss(cvae_loss)
cvae.compile(optimizer='rmsprop')
cvae.summary()
plot_model(cvae, to_file='cvae_cnn.png', show_shapes=True)
if not os.path.isdir(save_dir):
os.makedirs(save_dir)
if args.weights:
filepath = os.path.join(save_dir, args.weights)
cvae = cvae.load_weights(filepath)
else:
cvae.fit([x_train, to_categorical(y_train)],
epochs=epochs,
batch_size=batch_size,
validation_data=([x_test, to_categorical(y_test)], None))
filename = model_name + '.tf'
filepath = os.path.join(save_dir, filename)
cvae.save_weights(filepath)
if args.digit in range(0, num_labels):
digit = np.array([args.digit])
else:
digit = np.random.randint(0, num_labels, 1)
print("CVAE for digit %d" % digit)
y_label = np.eye(num_labels)[digit]
plot_results(models,
data,
y_label=y_label,
batch_size=batch_size,
model_name=model_name)