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import tensorflow as tf
import numpy as np
import tensorflow.contrib.slim as slim
def resblock(inputs, out_channel=32, name='resblock'):
with tf.variable_scope(name):
x = slim.convolution2d(inputs, out_channel, [3, 3],
activation_fn=None, scope='conv1')
x = tf.nn.leaky_relu(x)
x = slim.convolution2d(x, out_channel, [3, 3],
activation_fn=None, scope='conv2')
return x + inputs
def unet_generator(inputs, channel=32, num_blocks=4, name='generator', reuse=False):
with tf.variable_scope(name, reuse=reuse):
x0 = slim.convolution2d(inputs, channel, [7, 7], activation_fn=None)
x0 = tf.nn.leaky_relu(x0)
x1 = slim.convolution2d(x0, channel, [3, 3], stride=2, activation_fn=None)
x1 = tf.nn.leaky_relu(x1)
x1 = slim.convolution2d(x1, channel*2, [3, 3], activation_fn=None)
x1 = tf.nn.leaky_relu(x1)
x2 = slim.convolution2d(x1, channel*2, [3, 3], stride=2, activation_fn=None)
x2 = tf.nn.leaky_relu(x2)
x2 = slim.convolution2d(x2, channel*4, [3, 3], activation_fn=None)
x2 = tf.nn.leaky_relu(x2)
for idx in range(num_blocks):
x2 = resblock(x2, out_channel=channel*4, name='block_{}'.format(idx))
x2 = slim.convolution2d(x2, channel*2, [3, 3], activation_fn=None)
x2 = tf.nn.leaky_relu(x2)
h1, w1 = tf.shape(x2)[1], tf.shape(x2)[2]
x3 = tf.image.resize_bilinear(x2, (h1*2, w1*2))
x3 = slim.convolution2d(x3+x1, channel*2, [3, 3], activation_fn=None)
x3 = tf.nn.leaky_relu(x3)
x3 = slim.convolution2d(x3, channel, [3, 3], activation_fn=None)
x3 = tf.nn.leaky_relu(x3)
h2, w2 = tf.shape(x3)[1], tf.shape(x3)[2]
x4 = tf.image.resize_bilinear(x3, (h2*2, w2*2))
x4 = slim.convolution2d(x4+x0, channel, [3, 3], activation_fn=None)
x4 = tf.nn.leaky_relu(x4)
x4 = slim.convolution2d(x4, 3, [7, 7], activation_fn=None)
return x4
if __name__ == '__main__':
pass |