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Shashank Suhas
seminar-breakout
Commits
8f056dc1
Commit
8f056dc1
authored
Apr 10, 2017
by
Yuxin Wu
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use global namespace between WGAN and DCGAN so that arguments are easier to share
parent
5beab907
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3 changed files
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54 additions
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43 deletions
+54
-43
examples/GAN/DCGAN.py
examples/GAN/DCGAN.py
+39
-16
examples/GAN/DiscoGAN-CelebA.py
examples/GAN/DiscoGAN-CelebA.py
+2
-3
examples/GAN/WGAN.py
examples/GAN/WGAN.py
+13
-24
No files found.
examples/GAN/DCGAN
-CelebA
.py
→
examples/GAN/DCGAN.py
View file @
8f056dc1
#!/usr/bin/env python
#!/usr/bin/env python
# -*- coding: utf-8 -*-
# -*- coding: utf-8 -*-
# File: DCGAN
-CelebA
.py
# File: DCGAN.py
# Author: Yuxin Wu <ppwwyyxxc@gmail.com>
# Author: Yuxin Wu <ppwwyyxxc@gmail.com>
import
glob
import
glob
...
@@ -11,6 +11,8 @@ from tensorpack import *
...
@@ -11,6 +11,8 @@ from tensorpack import *
from
tensorpack.utils.viz
import
*
from
tensorpack.utils.viz
import
*
from
tensorpack.tfutils.summary
import
add_moving_summary
from
tensorpack.tfutils.summary
import
add_moving_summary
from
tensorpack.tfutils.scope_utils
import
auto_reuse_variable_scope
from
tensorpack.tfutils.scope_utils
import
auto_reuse_variable_scope
from
tensorpack.utils.globvars
import
globalns
as
opt
from
tensorpack.utils.globvars
import
use_global_argument
import
tensorflow
as
tf
import
tensorflow
as
tf
from
GAN
import
GANTrainer
,
RandomZData
,
GANModelDesc
from
GAN
import
GANTrainer
,
RandomZData
,
GANModelDesc
...
@@ -18,25 +20,29 @@ from GAN import GANTrainer, RandomZData, GANModelDesc
...
@@ -18,25 +20,29 @@ from GAN import GANTrainer, RandomZData, GANModelDesc
"""
"""
1. Download the 'aligned&cropped' version of CelebA dataset
1. Download the 'aligned&cropped' version of CelebA dataset
from http://mmlab.ie.cuhk.edu.hk/projects/CelebA.html
from http://mmlab.ie.cuhk.edu.hk/projects/CelebA.html
2. Start training:
2. Start training:
./DCGAN-CelebA.py --data /path/to/img_align_celeba/
./DCGAN-CelebA.py --data /path/to/img_align_celeba/ --crop-size 140
3. Visualize samples of a trained model:
Generated samples will be available through tensorboard
3. Visualize samples with an existing model:
./DCGAN-CelebA.py --load path/to/model --sample
./DCGAN-CelebA.py --load path/to/model --sample
You can also train on other images (just use any directory of jpg files in
You can also train on other images (just use any directory of jpg files in
`--data`). But you may need to change the preprocessing
steps in `get_data()`
.
`--data`). But you may need to change the preprocessing.
A pretrained model on CelebA is at https://drive.google.com/open?id=0B9IPQTvr2BBkLUF2M0RXU1NYSkE
A pretrained model on CelebA is at https://drive.google.com/open?id=0B9IPQTvr2BBkLUF2M0RXU1NYSkE
"""
"""
SHAPE
=
64
# global vars
BATCH
=
128
opt
.
SHAPE
=
64
Z_DIM
=
100
opt
.
BATCH
=
128
opt
.
Z_DIM
=
100
class
Model
(
GANModelDesc
):
class
Model
(
GANModelDesc
):
def
_get_inputs
(
self
):
def
_get_inputs
(
self
):
return
[
InputDesc
(
tf
.
float32
,
(
None
,
SHAPE
,
SHAPE
,
3
),
'input'
)]
return
[
InputDesc
(
tf
.
float32
,
(
None
,
opt
.
SHAPE
,
opt
.
SHAPE
,
3
),
'input'
)]
def
generator
(
self
,
z
):
def
generator
(
self
,
z
):
""" return an image generated from z"""
""" return an image generated from z"""
...
@@ -73,8 +79,8 @@ class Model(GANModelDesc):
...
@@ -73,8 +79,8 @@ class Model(GANModelDesc):
image_pos
=
inputs
[
0
]
image_pos
=
inputs
[
0
]
image_pos
=
image_pos
/
128.0
-
1
image_pos
=
image_pos
/
128.0
-
1
z
=
tf
.
random_uniform
([
BATCH
,
Z_DIM
],
-
1
,
1
,
name
=
'z_train'
)
z
=
tf
.
random_uniform
([
opt
.
BATCH
,
opt
.
Z_DIM
],
-
1
,
1
,
name
=
'z_train'
)
z
=
tf
.
placeholder_with_default
(
z
,
[
None
,
Z_DIM
],
name
=
'z'
)
z
=
tf
.
placeholder_with_default
(
z
,
[
None
,
opt
.
Z_DIM
],
name
=
'z'
)
with
argscope
([
Conv2D
,
Deconv2D
,
FullyConnected
],
with
argscope
([
Conv2D
,
Deconv2D
,
FullyConnected
],
W_init
=
tf
.
truncated_normal_initializer
(
stddev
=
0.02
)):
W_init
=
tf
.
truncated_normal_initializer
(
stddev
=
0.02
)):
...
@@ -93,12 +99,21 @@ class Model(GANModelDesc):
...
@@ -93,12 +99,21 @@ class Model(GANModelDesc):
return
tf
.
train
.
AdamOptimizer
(
lr
,
beta1
=
0.5
,
epsilon
=
1e-3
)
return
tf
.
train
.
AdamOptimizer
(
lr
,
beta1
=
0.5
,
epsilon
=
1e-3
)
def
get_augmentors
():
augs
=
[]
if
opt
.
load_size
:
augs
.
append
(
imgaug
.
Resize
(
opt
.
load_size
))
if
opt
.
crop_size
:
augs
.
append
(
imgaug
.
CenterCrop
(
opt
.
crop_size
))
augs
.
append
(
imgaug
.
Resize
(
opt
.
SHAPE
))
return
augs
def
get_data
(
datadir
):
def
get_data
(
datadir
):
imgs
=
glob
.
glob
(
datadir
+
'/*.jpg'
)
imgs
=
glob
.
glob
(
datadir
+
'/*.jpg'
)
ds
=
ImageFromFile
(
imgs
,
channel
=
3
,
shuffle
=
True
)
ds
=
ImageFromFile
(
imgs
,
channel
=
3
,
shuffle
=
True
)
augs
=
[
imgaug
.
CenterCrop
(
140
),
imgaug
.
Resize
(
64
)]
ds
=
AugmentImageComponent
(
ds
,
get_augmentors
())
ds
=
AugmentImageComponent
(
ds
,
augs
)
ds
=
BatchData
(
ds
,
opt
.
BATCH
)
ds
=
BatchData
(
ds
,
BATCH
)
ds
=
PrefetchDataZMQ
(
ds
,
1
)
ds
=
PrefetchDataZMQ
(
ds
,
1
)
return
ds
return
ds
...
@@ -106,10 +121,10 @@ def get_data(datadir):
...
@@ -106,10 +121,10 @@ def get_data(datadir):
def
get_config
():
def
get_config
():
return
TrainConfig
(
return
TrainConfig
(
model
=
Model
(),
model
=
Model
(),
dataflow
=
get_data
(
args
.
data
),
dataflow
=
get_data
(
opt
.
data
),
callbacks
=
[
ModelSaver
()],
callbacks
=
[
ModelSaver
()],
steps_per_epoch
=
300
,
steps_per_epoch
=
300
,
max_epoch
=
2
00
,
max_epoch
=
1
00
,
)
)
...
@@ -127,15 +142,23 @@ def sample(model_path):
...
@@ -127,15 +142,23 @@ def sample(model_path):
viz
=
stack_patches
(
o
,
nr_row
=
10
,
nr_col
=
10
,
viz
=
True
)
viz
=
stack_patches
(
o
,
nr_row
=
10
,
nr_col
=
10
,
viz
=
True
)
if
__name__
==
'__main__'
:
def
get_args
()
:
parser
=
argparse
.
ArgumentParser
()
parser
=
argparse
.
ArgumentParser
()
parser
.
add_argument
(
'--gpu'
,
help
=
'comma separated list of GPU(s) to use.'
)
parser
.
add_argument
(
'--gpu'
,
help
=
'comma separated list of GPU(s) to use.'
)
parser
.
add_argument
(
'--load'
,
help
=
'load model'
)
parser
.
add_argument
(
'--load'
,
help
=
'load model'
)
parser
.
add_argument
(
'--sample'
,
action
=
'store_true'
,
help
=
'view generated examples'
)
parser
.
add_argument
(
'--sample'
,
action
=
'store_true'
,
help
=
'view generated examples'
)
parser
.
add_argument
(
'--data'
,
help
=
'a jpeg directory'
)
parser
.
add_argument
(
'--data'
,
help
=
'a jpeg directory'
)
parser
.
add_argument
(
'--load-size'
,
help
=
'size to load the original images'
,
type
=
int
)
parser
.
add_argument
(
'--crop-size'
,
help
=
'crop the original images'
,
type
=
int
)
args
=
parser
.
parse_args
()
args
=
parser
.
parse_args
()
use_global_argument
(
args
)
if
args
.
gpu
:
if
args
.
gpu
:
os
.
environ
[
'CUDA_VISIBLE_DEVICES'
]
=
args
.
gpu
os
.
environ
[
'CUDA_VISIBLE_DEVICES'
]
=
args
.
gpu
return
args
if
__name__
==
'__main__'
:
args
=
get_args
()
if
args
.
sample
:
if
args
.
sample
:
sample
(
args
.
load
)
sample
(
args
.
load
)
else
:
else
:
...
...
examples/GAN/DiscoGAN-CelebA.py
View file @
8f056dc1
...
@@ -21,15 +21,14 @@ from GAN import SeparateGANTrainer, GANModelDesc
...
@@ -21,15 +21,14 @@ from GAN import SeparateGANTrainer, GANModelDesc
2. Put list_attr_celeba.txt into that directory as well.
2. Put list_attr_celeba.txt into that directory as well.
3. Start training gender transfer:
3. Start training gender transfer:
./DiscoGAN-CelebA.py --data /path/to/img_align_celeba --style-A Male
./DiscoGAN-CelebA.py --data /path/to/img_align_celeba --style-A Male
4. Visualiz
ation on test set to be done. But you can visualize the images in tensorboard now
.
4. Visualiz
e the gender conversion images in tensorboard
.
With TF1.0.1, cuda 8.0, cudnn 5.1.10,
With TF1.0.1, cuda 8.0, cudnn 5.1.10,
the training on 64x64 images of batch 64 runs 5.4 it/s on Tesla M40.
the training on 64x64 images of batch 64 runs 5.4 it/s on Tesla M40.
This is 2.4x as fast as the original PyTorch implementation.
This is 2.4x as fast as the original PyTorch implementation.
This is surprising to myself, so I'm not sure my comparison is correct.
The cause is probably that in the torch implementation,
The cause is probably that in the torch implementation,
a backward()
seems to compute
gradients for ALL parameters, which is not necessary in GAN.
a backward()
computes
gradients for ALL parameters, which is not necessary in GAN.
"""
"""
SHAPE
=
64
SHAPE
=
64
...
...
examples/GAN/WGAN
-CelebA
.py
→
examples/GAN/WGAN.py
View file @
8f056dc1
#!/usr/bin/env python
#!/usr/bin/env python
# -*- coding: utf-8 -*-
# -*- coding: utf-8 -*-
# File: WGAN
-CelebA
.py
# File: WGAN.py
# Author: Yuxin Wu <ppwwyyxxc@gmail.com>
# Author: Yuxin Wu <ppwwyyxxc@gmail.com>
import
os
import
os
...
@@ -8,15 +8,13 @@ import argparse
...
@@ -8,15 +8,13 @@ import argparse
from
tensorpack
import
*
from
tensorpack
import
*
from
tensorpack.tfutils.summary
import
add_moving_summary
from
tensorpack.tfutils.summary
import
add_moving_summary
from
tensorpack.utils.globvars
import
globalns
as
G
import
tensorflow
as
tf
import
tensorflow
as
tf
from
GAN
import
SeparateGANTrainer
from
GAN
import
SeparateGANTrainer
"""
"""
Wasserstein-GAN.
Wasserstein-GAN.
See the docstring in DCGAN-CelebA.py for usage.
See the docstring in DCGAN.py for usage.
Actually, just using the clip is enough for WGAN to work (even without BN in generator).
The wasserstein loss is not the key factor.
"""
"""
# Don't want to mix two examples together, but want to reuse the code.
# Don't want to mix two examples together, but want to reuse the code.
...
@@ -24,9 +22,13 @@ The wasserstein loss is not the key factor.
...
@@ -24,9 +22,13 @@ The wasserstein loss is not the key factor.
import
imp
import
imp
DCGAN
=
imp
.
load_source
(
DCGAN
=
imp
.
load_source
(
'DCGAN'
,
'DCGAN'
,
os
.
path
.
join
(
os
.
path
.
dirname
(
__file__
),
'DCGAN-CelebA.py'
))
os
.
path
.
join
(
os
.
path
.
dirname
(
__file__
),
'DCGAN.py'
))
G
.
BATCH
=
64
# a hacky way to change loss & optimizer of another script
class
Model
(
DCGAN
.
Model
):
class
Model
(
DCGAN
.
Model
):
# def generator(self, z):
# def generator(self, z):
# you can override generator to remove BatchNorm, it will still work in WGAN
# you can override generator to remove BatchNorm, it will still work in WGAN
...
@@ -51,33 +53,20 @@ class Model(DCGAN.Model):
...
@@ -51,33 +53,20 @@ class Model(DCGAN.Model):
return
optimizer
.
VariableAssignmentOptimizer
(
opt
,
clip
)
return
optimizer
.
VariableAssignmentOptimizer
(
opt
,
clip
)
DCGAN
.
BATCH
=
64
DCGAN
.
Model
=
Model
DCGAN
.
Model
=
Model
def
get_config
():
return
TrainConfig
(
model
=
Model
(),
# use the same data in the DCGAN example
dataflow
=
DCGAN
.
get_data
(
args
.
data
),
callbacks
=
[
ModelSaver
()],
steps_per_epoch
=
500
,
max_epoch
=
200
,
)
if
__name__
==
'__main__'
:
if
__name__
==
'__main__'
:
parser
=
argparse
.
ArgumentParser
()
args
=
DCGAN
.
get_args
()
parser
.
add_argument
(
'--load'
,
help
=
'load model'
)
parser
.
add_argument
(
'--sample'
,
action
=
'store_true'
,
help
=
'view generated examples'
)
parser
.
add_argument
(
'--data'
,
help
=
'a jpeg directory'
)
args
=
parser
.
parse_args
()
if
args
.
sample
:
if
args
.
sample
:
DCGAN
.
sample
(
args
.
load
)
DCGAN
.
sample
(
args
.
load
)
else
:
else
:
assert
args
.
data
assert
args
.
data
logger
.
auto_set_dir
()
logger
.
auto_set_dir
()
config
=
get_config
()
config
=
DCGAN
.
get_config
()
config
.
steps_per_epoch
=
500
if
args
.
load
:
if
args
.
load
:
config
.
session_init
=
SaverRestore
(
args
.
load
)
config
.
session_init
=
SaverRestore
(
args
.
load
)
"""
"""
...
...
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