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novelai-storage
Stable Diffusion Webui
Commits
d8ed6998
Commit
d8ed6998
authored
Sep 20, 2022
by
C43H66N12O12S2
Committed by
AUTOMATIC1111
Sep 20, 2022
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Update swinir.py
parent
5f71ecfe
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modules/swinir.py
modules/swinir.py
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modules/swinir.py
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d8ed6998
import
sys
import
sys
import
traceback
import
traceback
import
cv2
import
cv2
from
collections
import
OrderedDict
import
os
import
os
import
requests
import
contextlib
from
collections
import
namedtuple
import
numpy
as
np
import
numpy
as
np
from
PIL
import
Image
from
PIL
import
Image
import
torch
import
torch
import
modules.images
import
modules.images
from
modules.shared
import
cmd_opts
,
opts
,
device
from
modules.shared
import
cmd_opts
,
opts
,
device
from
modules.swinir_arch
import
SwinIR
as
net
from
modules.swinir_arch
import
SwinIR
as
net
precision_scope
=
torch
.
autocast
if
cmd_opts
.
precision
==
"autocast"
else
contextlib
.
nullcontext
def
load_model
(
task
=
"realsr"
,
large_model
=
True
,
model_path
=
"C:/sd/ESRGANn/4x-large.pth"
,
scale
=
4
):
try
:
precision_scope
=
(
modules
.
shared
.
sd_upscalers
.
append
(
UpscalerSwin
(
"McSwinnySwin"
))
torch
.
autocast
if
cmd_opts
.
precision
==
"autocast"
else
contextlib
.
nullcontext
except
Exception
:
)
print
(
f
"Error loading ESRGAN model"
,
file
=
sys
.
stderr
)
print
(
traceback
.
format_exc
(),
file
=
sys
.
stderr
)
if
not
large_model
:
def
load_model
(
filename
,
scale
=
4
)
:
# use 'nearest+conv' to avoid block artifacts
model
=
net
(
model
=
net
(
upscale
=
scale
,
in_chans
=
3
,
img_size
=
64
,
window_size
=
8
,
upscale
=
scale
,
img_range
=
1.
,
depths
=
[
6
,
6
,
6
,
6
,
6
,
6
],
embed_dim
=
180
,
num_heads
=
[
6
,
6
,
6
,
6
,
6
,
6
]
,
in_chans
=
3
,
mlp_ratio
=
2
,
upsampler
=
'nearest+conv'
,
resi_connection
=
'1conv'
)
img_size
=
64
,
else
:
window_size
=
8
,
# larger model size; use '3conv' to save parameters and memory; use ema for GAN training
img_range
=
1.0
,
model
=
net
(
upscale
=
scale
,
in_chans
=
3
,
img_size
=
64
,
window_size
=
8
,
depths
=
[
6
,
6
,
6
,
6
,
6
,
6
,
6
,
6
,
6
]
,
img_range
=
1.
,
depths
=
[
6
,
6
,
6
,
6
,
6
,
6
,
6
,
6
,
6
],
embed_dim
=
240
,
embed_dim
=
240
,
num_heads
=
[
8
,
8
,
8
,
8
,
8
,
8
,
8
,
8
,
8
],
num_heads
=
[
8
,
8
,
8
,
8
,
8
,
8
,
8
,
8
,
8
],
mlp_ratio
=
2
,
upsampler
=
'nearest+conv'
,
resi_connection
=
'3conv'
)
mlp_ratio
=
2
,
upsampler
=
"nearest+conv"
,
resi_connection
=
"3conv"
,
)
pretrained_model
=
torch
.
load
(
model_path
)
pretrained_model
=
torch
.
load
(
filename
)
model
.
load_state_dict
(
pretrained_model
[
"params_ema"
],
strict
=
True
)
model
.
load_state_dict
(
pretrained_model
[
"params_ema"
],
strict
=
True
)
if
not
cmd_opts
.
no_half
:
model
=
model
.
half
()
return
model
def
load_models
(
dirname
):
for
file
in
os
.
listdir
(
dirname
):
path
=
os
.
path
.
join
(
dirname
,
file
)
model_name
,
extension
=
os
.
path
.
splitext
(
file
)
return
model
.
half
()
.
to
(
device
)
if
extension
!=
".pt"
and
extension
!=
".pth"
:
continue
def
upscale
(
img
,
tile
=
opts
.
ESRGAN_tile
,
tile_overlap
=
opts
.
ESRGAN_tile_overlap
,
window_size
=
8
,
scale
=
4
):
try
:
modules
.
shared
.
sd_upscalers
.
append
(
UpscalerSwin
(
path
,
model_name
))
except
Exception
:
print
(
f
"Error loading SwinIR model: {path}"
,
file
=
sys
.
stderr
)
print
(
traceback
.
format_exc
(),
file
=
sys
.
stderr
)
def
upscale
(
img
,
model
,
tile
=
opts
.
GAN_tile
,
tile_overlap
=
opts
.
GAN_tile_overlap
,
window_size
=
8
,
scale
=
4
,
):
img
=
np
.
array
(
img
)
img
=
np
.
array
(
img
)
img
=
img
[:,
:,
::
-
1
]
img
=
img
[:,
:,
::
-
1
]
img
=
np
.
moveaxis
(
img
,
2
,
0
)
/
255
img
=
np
.
moveaxis
(
img
,
2
,
0
)
/
255
img
=
torch
.
from_numpy
(
img
)
.
float
()
img
=
torch
.
from_numpy
(
img
)
.
float
()
img
=
img
.
unsqueeze
(
0
)
.
to
(
device
)
img
=
img
.
unsqueeze
(
0
)
.
to
(
device
)
model
=
load_model
()
with
torch
.
no_grad
(),
precision_scope
(
"cuda"
):
with
torch
.
no_grad
(),
precision_scope
(
"cuda"
):
_
,
_
,
h_old
,
w_old
=
img
.
size
()
_
,
_
,
h_old
,
w_old
=
img
.
size
()
h_pad
=
(
h_old
//
window_size
+
1
)
*
window_size
-
h_old
h_pad
=
(
h_old
//
window_size
+
1
)
*
window_size
-
h_old
w_pad
=
(
w_old
//
window_size
+
1
)
*
window_size
-
w_old
w_pad
=
(
w_old
//
window_size
+
1
)
*
window_size
-
w_old
img
=
torch
.
cat
([
img
,
torch
.
flip
(
img
,
[
2
])],
2
)[:,
:,
:
h_old
+
h_pad
,
:]
img
=
torch
.
cat
([
img
,
torch
.
flip
(
img
,
[
2
])],
2
)[:,
:,
:
h_old
+
h_pad
,
:]
img
=
torch
.
cat
([
img
,
torch
.
flip
(
img
,
[
3
])],
3
)[:,
:,
:,
:
w_old
+
w_pad
]
img
=
torch
.
cat
([
img
,
torch
.
flip
(
img
,
[
3
])],
3
)[:,
:,
:,
:
w_old
+
w_pad
]
output
=
inference
(
img
,
model
,
tile
,
tile_overlap
,
window_size
,
scale
)
output
=
inference
(
img
,
model
,
tile
,
tile_overlap
,
window_size
,
scale
)
output
=
output
[
...
,
:
h_old
*
scale
,
:
w_old
*
scale
]
output
=
output
[
...
,
:
h_old
*
scale
,
:
w_old
*
scale
]
output
=
output
.
data
.
squeeze
()
.
float
()
.
cpu
()
.
clamp_
(
0
,
1
)
.
numpy
()
output
=
output
.
data
.
squeeze
()
.
float
()
.
cpu
()
.
clamp_
(
0
,
1
)
.
numpy
()
if
output
.
ndim
==
3
:
if
output
.
ndim
==
3
:
output
=
np
.
transpose
(
output
[[
2
,
1
,
0
],
:,
:],
(
1
,
2
,
0
))
# CHW-RGB to HCW-BGR
output
=
np
.
transpose
(
output
[[
2
,
1
,
0
],
:,
:],
(
1
,
2
,
0
)
)
# CHW-RGB to HCW-BGR
output
=
(
output
*
255.0
)
.
round
()
.
astype
(
np
.
uint8
)
# float32 to uint8
output
=
(
output
*
255.0
)
.
round
()
.
astype
(
np
.
uint8
)
# float32 to uint8
return
Image
.
fromarray
(
output
,
'RGB'
)
return
Image
.
fromarray
(
output
,
"RGB"
)
def
inference
(
img
,
model
,
tile
,
tile_overlap
,
window_size
,
scale
):
def
inference
(
img
,
model
,
tile
,
tile_overlap
,
window_size
,
scale
):
...
@@ -66,27 +90,34 @@ def inference(img, model, tile, tile_overlap, window_size, scale):
...
@@ -66,27 +90,34 @@ def inference(img, model, tile, tile_overlap, window_size, scale):
sf
=
scale
sf
=
scale
stride
=
tile
-
tile_overlap
stride
=
tile
-
tile_overlap
h_idx_list
=
list
(
range
(
0
,
h
-
tile
,
stride
))
+
[
h
-
tile
]
h_idx_list
=
list
(
range
(
0
,
h
-
tile
,
stride
))
+
[
h
-
tile
]
w_idx_list
=
list
(
range
(
0
,
w
-
tile
,
stride
))
+
[
w
-
tile
]
w_idx_list
=
list
(
range
(
0
,
w
-
tile
,
stride
))
+
[
w
-
tile
]
E
=
torch
.
zeros
(
b
,
c
,
h
*
sf
,
w
*
sf
,
dtype
=
torch
.
half
,
device
=
device
)
.
type_as
(
img
)
E
=
torch
.
zeros
(
b
,
c
,
h
*
sf
,
w
*
sf
,
dtype
=
torch
.
half
,
device
=
device
)
.
type_as
(
img
)
W
=
torch
.
zeros_like
(
E
,
dtype
=
torch
.
half
,
device
=
device
)
W
=
torch
.
zeros_like
(
E
,
dtype
=
torch
.
half
,
device
=
device
)
for
h_idx
in
h_idx_list
:
for
h_idx
in
h_idx_list
:
for
w_idx
in
w_idx_list
:
for
w_idx
in
w_idx_list
:
in_patch
=
img
[
...
,
h_idx
:
h_idx
+
tile
,
w_idx
:
w_idx
+
tile
]
in_patch
=
img
[
...
,
h_idx
:
h_idx
+
tile
,
w_idx
:
w_idx
+
tile
]
out_patch
=
model
(
in_patch
)
out_patch
=
model
(
in_patch
)
out_patch_mask
=
torch
.
ones_like
(
out_patch
)
out_patch_mask
=
torch
.
ones_like
(
out_patch
)
E
[
...
,
h_idx
*
sf
:(
h_idx
+
tile
)
*
sf
,
w_idx
*
sf
:(
w_idx
+
tile
)
*
sf
]
.
add_
(
out_patch
)
E
[
W
[
...
,
h_idx
*
sf
:(
h_idx
+
tile
)
*
sf
,
w_idx
*
sf
:(
w_idx
+
tile
)
*
sf
]
.
add_
(
out_patch_mask
)
...
,
h_idx
*
sf
:
(
h_idx
+
tile
)
*
sf
,
w_idx
*
sf
:
(
w_idx
+
tile
)
*
sf
]
.
add_
(
out_patch
)
W
[
...
,
h_idx
*
sf
:
(
h_idx
+
tile
)
*
sf
,
w_idx
*
sf
:
(
w_idx
+
tile
)
*
sf
]
.
add_
(
out_patch_mask
)
output
=
E
.
div_
(
W
)
output
=
E
.
div_
(
W
)
return
output
return
output
class
UpscalerSwin
(
modules
.
images
.
Upscaler
):
class
UpscalerSwin
(
modules
.
images
.
Upscaler
):
def
__init__
(
self
,
title
):
def
__init__
(
self
,
filename
,
title
):
self
.
name
=
title
self
.
name
=
title
self
.
model
=
load_model
(
filename
)
def
do_upscale
(
self
,
img
):
def
do_upscale
(
self
,
img
):
img
=
upscale
(
img
)
model
=
self
.
model
.
to
(
device
)
img
=
upscale
(
img
,
model
)
return
img
return
img
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