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spat_ED.py
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spat_ED.py
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import tensorflow as tf
from tensorflow.python import pywrap_tensorflow
import numpy as np
WEIGHT_INIT_STDDEV = 0.05
class ED1(object):
def __init__(self, sco):
self.encoder = Encoder(sco)
self.decoder = Decoder(sco)
self.var_list = []
self.features = None
def transform(self, I, is_training, reuse):
code = self.encoder.encode(I, is_training, reuse)
self.features = code
I2 = self.decoder.decode(code, is_training, reuse)
# self.var_list.extend(self.encoder.var_list)
# self.var_list.extend(self.decoder.var_list)
# self.var_list.extend(tf.trainable_variables())
return I2
class Encoder(object):
def __init__(self, scope_name):
self.scope = scope_name
self.var_list = []
self.weight_vars = []
with tf.variable_scope(self.scope):
with tf.variable_scope('encoder'):
self.weight_vars.append(self._create_variables(1, 32, 3, scope = 'conv1'))
self.weight_vars.append(self._create_variables(32, 64, 3, scope = 'conv2'))
self.weight_vars.append(self._create_variables(64, 128, 3, scope = 'conv3'))
# self.weight_vars.append(self._create_variables(128, 256, 3, scope = 'conv4'))
# self.weight_vars.append(self._create_variables(64, 96, 3, scope = 'conv1_4'))
def _create_variables(self, input_filters, output_filters, kernel_size, scope):
shape = [kernel_size, kernel_size, input_filters, output_filters]
with tf.variable_scope(scope):
kernel = tf.Variable(tf.truncated_normal(shape, stddev = WEIGHT_INIT_STDDEV),
name = 'kernel')
bias = tf.Variable(tf.zeros([output_filters]), name = 'bias')
self.var_list.append(kernel)
self.var_list.append(bias)
return (kernel, bias)
def encode(self, image, is_training, reuse):
out = image
for i in range(len(self.weight_vars)):
kernel, bias = self.weight_vars[i]
out = conv2d(out, kernel, bias, use_lrelu = True, is_training = is_training,
reuse = reuse, Scope = self.scope + '/encoder/b' + str(i))
return out
class Decoder(object):
def __init__(self, scope_name):
self.weight_vars = []
self.var_list = []
self.scope = scope_name
with tf.name_scope(scope_name):
with tf.variable_scope('decoder'):
# self.weight_vars.append(self._create_variables(256, 128, 3, scope = 'conv2_1'))
self.weight_vars.append(self._create_variables(128, 64, 3, scope = 'conv2_1'))
self.weight_vars.append(self._create_variables(64, 32, 3, scope = 'conv2_2'))
self.weight_vars.append(self._create_variables(32, 1, 3, scope = 'conv2_3'))
def _create_variables(self, input_filters, output_filters, kernel_size, scope):
with tf.variable_scope(scope):
shape = [kernel_size, kernel_size, input_filters, output_filters]
kernel = tf.Variable(tf.truncated_normal(shape, stddev = WEIGHT_INIT_STDDEV), name = 'kernel')
bias = tf.Variable(tf.zeros([output_filters]), name = 'bias')
self.var_list.append(kernel)
self.var_list.append(bias)
return (kernel, bias)
def decode(self, image, is_training, reuse):
final_layer_idx = len(self.weight_vars) - 1
out = image
for i in range(len(self.weight_vars)):
kernel, bias = self.weight_vars[i]
if i == final_layer_idx:
out = conv2d(out, kernel, bias, use_lrelu = False,
Scope = self.scope + '/decoder/b' + str(i), is_training = is_training, reuse=reuse)
out = tf.nn.tanh(out) / 2 + 0.5
else:
out = conv2d(out, kernel, bias, use_lrelu = True,
Scope = self.scope + '/decoder/b' + str(i), is_training = is_training, reuse=reuse)
return out
def conv2d(x, kernel, bias, use_lrelu = True, Scope = None, stride = 1, is_training = False, reuse=False):
# padding image with reflection mode
x_padded = tf.pad(x, [[0, 0], [1, 1], [1, 1], [0, 0]], mode = 'REFLECT')
# conv and add bias
out = tf.nn.conv2d(input = x_padded, filter = kernel, strides = [1, stride, stride, 1], padding = 'VALID')
out = tf.nn.bias_add(out, bias)
# if BN:
# with tf.variable_scope(Scope):
# # print("Scope", Scope)
# # print("reuse", not is_training)
# # out = tf.contrib.layers.batch_norm(out, decay = 0.9, updates_collections = None, epsilon = 1e-5, scale = True, reuse = reuse)
#
# out = tf.layers.batch_normalization(out, training = is_training, reuse= reuse, trainable=is_training)
if use_lrelu:
# out = tf.nn.relu(out)
out = tf.maximum(out, 0.2 * out)
return out