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generator.py
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generator.py
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from __future__ import print_function
import tensorflow as tf
from tensorflow.contrib.layers import batch_norm, fully_connected, flatten
from tensorflow.contrib.layers import xavier_initializer
from ops import *
import numpy as np
class Generator(object):
def __init__(self, segan):
self.segan = segan
def __call__(self, noisy_w, is_ref, spk=None):
""" Build the graph propagating (noisy_w) --> x
On first pass will make variables.
"""
segan = self.segan
def make_z(shape, mean=0., std=1., name='z'):
if is_ref:
with tf.variable_scope(name) as scope:
z_init = tf.random_normal_initializer(mean=mean, stddev=std)
z = tf.get_variable("z", shape,
initializer=z_init,
trainable=False
)
if z.device != "/device:GPU:0":
# this has to be created into gpu0
print('z.device is {}'.format(z.device))
assert False
else:
z = tf.random_normal(shape, mean=mean, stddev=std,
name=name, dtype=tf.float32)
return z
if hasattr(segan, 'generator_built'):
tf.get_variable_scope().reuse_variables()
make_vars = False
else:
make_vars = True
print('*** Building Generator ***')
in_dims = noisy_w.get_shape().as_list()
h_i = noisy_w
if len(in_dims) == 2:
h_i = tf.expand_dims(noisy_w, -1)
elif len(in_dims) < 2 or len(in_dims) > 3:
raise ValueError('Generator input must be 2-D or 3-D')
kwidth = 3
z = make_z([segan.batch_size, h_i.get_shape().as_list()[1],
segan.g_enc_depths[-1]])
h_i = tf.concat(2, [h_i, z])
skip_out = True
skips = []
for block_idx, dilation in enumerate(segan.g_dilated_blocks):
name = 'g_residual_block_{}'.format(block_idx)
if block_idx >= len(segan.g_dilated_blocks) - 1:
skip_out = False
if skip_out:
res_i, skip_i = residual_block(h_i,
dilation, kwidth, num_kernels=32,
bias_init=None, stddev=0.02,
do_skip = True,
name=name)
else:
res_i = residual_block(h_i,
dilation, kwidth, num_kernels=32,
bias_init=None, stddev=0.02,
do_skip = False,
name=name)
# feed the residual output to the next block
h_i = res_i
if segan.keep_prob < 1:
print('Adding dropout w/ keep prob {} '
'to G'.format(segan.keep_prob))
h_i = tf.nn.dropout(h_i, segan.keep_prob_var)
if skip_out:
# accumulate the skip connections
skips.append(skip_i)
else:
# for last block, the residual output is appended
skips.append(res_i)
print('Amount of skip connections: ', len(skips))
# TODO: last pooling for actual wave
with tf.variable_scope('g_wave_pooling'):
skip_T = tf.stack(skips, axis=0)
skips_sum = tf.reduce_sum(skip_T, axis=0)
skips_sum = leakyrelu(skips_sum)
wave_a = conv1d(skips_sum, kwidth=1, num_kernels=1,
init=tf.truncated_normal_initializer(stddev=0.02))
wave = tf.tanh(wave_a)
segan.gen_wave_summ = histogram_summary('gen_wave', wave)
print('Last residual wave shape: ', res_i.get_shape())
print('*************************')
segan.generator_built = True
return wave, z
class AEGenerator(object):
def __init__(self, segan):
self.segan = segan
def __call__(self, noisy_w, is_ref, spk=None, z_on=True, do_prelu=False):
# TODO: remove c_vec
""" Build the graph propagating (noisy_w) --> x
On first pass will make variables.
"""
segan = self.segan
def make_z(shape, mean=0., std=1., name='z'):
if is_ref:
with tf.variable_scope(name) as scope:
z_init = tf.random_normal_initializer(mean=mean, stddev=std)
z = tf.get_variable("z", shape,
initializer=z_init,
trainable=False
)
if z.device != "/device:GPU:0":
# this has to be created into gpu0
print('z.device is {}'.format(z.device))
assert False
else:
z = tf.random_normal(shape, mean=mean, stddev=std,
name=name, dtype=tf.float32)
return z
if hasattr(segan, 'generator_built'):
tf.get_variable_scope().reuse_variables()
make_vars = False
else:
make_vars = True
if is_ref:
print('*** Building Generator ***')
in_dims = noisy_w.get_shape().as_list()
h_i = noisy_w
if len(in_dims) == 2:
h_i = tf.expand_dims(noisy_w, -1)
elif len(in_dims) < 2 or len(in_dims) > 3:
raise ValueError('Generator input must be 2-D or 3-D')
kwidth = 31
enc_layers = 7
skips = []
if is_ref and do_prelu:
#keep track of prelu activations
alphas = []
with tf.variable_scope('g_ae'):
#AE to be built is shaped:
# enc ~ [16384x1, 8192x16, 4096x32, 2048x32, 1024x64, 512x64, 256x128, 128x128, 64x256, 32x256, 16x512, 8x1024]
# dec ~ [8x2048, 16x1024, 32x512, 64x512, 8x256, 256x256, 512x128, 1024x128, 2048x64, 4096x64, 8192x32, 16384x1]
#FIRST ENCODER
for layer_idx, layer_depth in enumerate(segan.g_enc_depths):
bias_init = None
if segan.bias_downconv:
if is_ref:
print('Biasing downconv in G')
bias_init = tf.constant_initializer(0.)
h_i_dwn = downconv(h_i, layer_depth, kwidth=kwidth,
init=tf.truncated_normal_initializer(stddev=0.02),
bias_init=bias_init,
name='enc_{}'.format(layer_idx))
if is_ref:
print('Downconv {} -> {}'.format(h_i.get_shape(),
h_i_dwn.get_shape()))
h_i = h_i_dwn
if layer_idx < len(segan.g_enc_depths) - 1:
if is_ref:
print('Adding skip connection downconv '
'{}'.format(layer_idx))
# store skip connection
# last one is not stored cause it's the code
skips.append(h_i)
if do_prelu:
if is_ref:
print('-- Enc: prelu activation --')
h_i = prelu(h_i, ref=is_ref, name='enc_prelu_{}'.format(layer_idx))
if is_ref:
# split h_i into its components
alpha_i = h_i[1]
h_i = h_i[0]
alphas.append(alpha_i)
else:
if is_ref:
print('-- Enc: leakyrelu activation --')
h_i = leakyrelu(h_i)
if z_on:
# random code is fused with intermediate representation
z = make_z([segan.batch_size, h_i.get_shape().as_list()[1],
segan.g_enc_depths[-1]])
h_i = tf.concat(2, [z, h_i])
#SECOND DECODER (reverse order)
g_dec_depths = segan.g_enc_depths[:-1][::-1] + [1]
if is_ref:
print('g_dec_depths: ', g_dec_depths)
for layer_idx, layer_depth in enumerate(g_dec_depths):
h_i_dim = h_i.get_shape().as_list()
out_shape = [h_i_dim[0], h_i_dim[1] * 2, layer_depth]
bias_init = None
# deconv
if segan.deconv_type == 'deconv':
if is_ref:
print('-- Transposed deconvolution type --')
if segan.bias_deconv:
print('Biasing deconv in G')
if segan.bias_deconv:
bias_init = tf.constant_initializer(0.)
h_i_dcv = deconv(h_i, out_shape, kwidth=kwidth, dilation=2,
init=tf.truncated_normal_initializer(stddev=0.02),
bias_init=bias_init,
name='dec_{}'.format(layer_idx))
elif segan.deconv_type == 'nn_deconv':
if is_ref:
print('-- NN interpolated deconvolution type --')
if segan.bias_deconv:
print('Biasing deconv in G')
if segan.bias_deconv:
bias_init = 0.
h_i_dcv = nn_deconv(h_i, kwidth=kwidth, dilation=2,
init=tf.truncated_normal_initializer(stddev=0.02),
bias_init=bias_init,
name='dec_{}'.format(layer_idx))
else:
raise ValueError('Unknown deconv type {}'.format(segan.deconv_type))
if is_ref:
print('Deconv {} -> {}'.format(h_i.get_shape(),
h_i_dcv.get_shape()))
h_i = h_i_dcv
if layer_idx < len(g_dec_depths) - 1:
if do_prelu:
if is_ref:
print('-- Dec: prelu activation --')
h_i = prelu(h_i, ref=is_ref,
name='dec_prelu_{}'.format(layer_idx))
if is_ref:
# split h_i into its components
alpha_i = h_i[1]
h_i = h_i[0]
alphas.append(alpha_i)
else:
if is_ref:
print('-- Dec: leakyrelu activation --')
h_i = leakyrelu(h_i)
# fuse skip connection
skip_ = skips[-(layer_idx + 1)]
if is_ref:
print('Fusing skip connection of '
'shape {}'.format(skip_.get_shape()))
h_i = tf.concat(2, [h_i, skip_])
else:
if is_ref:
print('-- Dec: tanh activation --')
h_i = tf.tanh(h_i)
wave = h_i
if is_ref and do_prelu:
print('Amount of alpha vectors: ', len(alphas))
segan.gen_wave_summ = histogram_summary('gen_wave', wave)
if is_ref:
print('Amount of skip connections: ', len(skips))
print('Last wave shape: ', wave.get_shape())
print('*************************')
segan.generator_built = True
# ret feats contains the features refs to be returned
ret_feats = [wave]
if z_on:
ret_feats.append(z)
if is_ref and do_prelu:
ret_feats += alphas
return ret_feats