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ModelZoo
ResNet50_tensorflow
Commits
4f536f45
Unverified
Commit
4f536f45
authored
Oct 22, 2021
by
srihari-humbarwadi
Browse files
implemented grid sampling layer
parent
3d174546
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official/vision/beta/projects/panoptic_maskrcnn/modeling/layers/paste_masks.py
...projects/panoptic_maskrcnn/modeling/layers/paste_masks.py
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official/vision/beta/projects/panoptic_maskrcnn/modeling/layers/paste_masks.py
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4f536f45
import
tensorflow
as
tf
class
BilinearGridSampler
(
tf
.
keras
.
layers
.
Layer
):
def
__init__
(
self
,
align_corners
,
**
kwargs
):
super
(
BilinearGridSampler
,
self
).
__init__
(
**
kwargs
)
self
.
align_corners
=
align_corners
self
.
_config
=
{
'align_corners'
:
align_corners
}
def
build
(
self
,
input_shape
):
features_shape
,
_
,
_
=
input_shape
_
,
height
,
width
,
channels
=
features_shape
.
as_list
()
self
.
_height
=
height
self
.
_width
=
width
self
.
_channels
=
channels
def
_valid_coordinates
(
self
,
x_coord
,
y_coord
):
return
tf
.
logical_and
(
tf
.
logical_and
(
tf
.
greater_equal
(
x_coord
,
0
),
tf
.
greater_equal
(
y_coord
,
0
)),
tf
.
logical_and
(
tf
.
less
(
x_coord
,
self
.
_width
),
tf
.
less
(
y_coord
,
self
.
_width
)))
def
_get_pixel
(
self
,
features
,
x_coord
,
y_coord
):
x_coord
=
tf
.
cast
(
x_coord
,
dtype
=
tf
.
int32
)
y_coord
=
tf
.
cast
(
y_coord
,
dtype
=
tf
.
int32
)
clipped_x
=
tf
.
clip_by_value
(
x_coord
,
0
,
self
.
_width
-
1
)
clipped_y
=
tf
.
clip_by_value
(
y_coord
,
0
,
self
.
_height
-
1
)
batch_size
,
_
,
_
,
_
=
features
.
shape
.
as_list
()
if
batch_size
is
None
:
batch_size
=
tf
.
shape
(
features
)[
0
]
batch_indices
=
tf
.
reshape
(
tf
.
range
(
batch_size
,
dtype
=
tf
.
int32
),
shape
=
[
batch_size
,
1
,
1
])
batch_indices
=
tf
.
tile
(
batch_indices
,
multiples
=
[
1
,
x_coord
.
shape
[
1
],
x_coord
.
shape
[
2
]])
indices
=
tf
.
cast
(
tf
.
stack
([
batch_indices
,
clipped_y
,
clipped_x
],
axis
=-
1
),
dtype
=
tf
.
int32
)
gathered_pixels
=
tf
.
gather_nd
(
features
,
indices
)
return
tf
.
where
(
tf
.
expand_dims
(
self
.
_valid_coordinates
(
x_coord
,
y_coord
),
axis
=-
1
),
gathered_pixels
,
tf
.
zeros_like
(
gathered_pixels
))
def
call
(
self
,
inputs
):
features
,
x_coord
,
y_coord
=
inputs
x_coord
+=
1
y_coord
+=
1
if
self
.
align_corners
:
x_coord
=
(
x_coord
*
0.5
)
*
(
self
.
_width
-
1
)
y_coord
=
(
y_coord
*
0.5
)
*
(
self
.
_height
-
1
)
else
:
x_coord
=
(
x_coord
*
self
.
_width
-
1
)
*
0.5
y_coord
=
(
y_coord
*
self
.
_height
-
1
)
*
0.5
left
=
tf
.
floor
(
x_coord
)
top
=
tf
.
floor
(
y_coord
)
right
=
left
+
1
bottom
=
top
+
1
top_left
=
(
right
-
x_coord
)
*
(
bottom
-
y_coord
)
top_right
=
(
x_coord
-
left
)
*
(
bottom
-
y_coord
)
bottom_left
=
(
right
-
x_coord
)
*
(
y_coord
-
top
)
bottom_right
=
(
x_coord
-
left
)
*
(
y_coord
-
top
)
i_top_left
=
self
.
_get_pixel
(
features
,
left
,
top
)
i_top_right
=
self
.
_get_pixel
(
features
,
right
,
top
)
i_bottom_left
=
self
.
_get_pixel
(
features
,
left
,
bottom
)
i_bottom_right
=
self
.
_get_pixel
(
features
,
right
,
bottom
)
i_top_left
*=
tf
.
expand_dims
(
top_left
,
axis
=-
1
)
i_top_right
*=
tf
.
expand_dims
(
top_right
,
axis
=-
1
)
i_bottom_left
*=
tf
.
expand_dims
(
bottom_left
,
axis
=-
1
)
i_bottom_right
*=
tf
.
expand_dims
(
bottom_right
,
axis
=-
1
)
interpolated_features
=
tf
.
math
.
add_n
(
[
i_top_left
,
i_top_right
,
i_bottom_left
,
i_bottom_right
])
return
interpolated_features
def
get_config
(
self
):
return
self
.
_config_dict
class
PasteMasks
(
tf
.
keras
.
layers
.
Layer
):
def
__init__
(
self
,
output_size
,
grid_sampler
,
**
kwargs
):
super
(
PasteMasks
,
self
).
__init__
(
**
kwargs
)
self
.
_output_size
=
output_size
self
.
_grid_sampler
=
grid_sampler
self
.
_config
=
{
'output_size'
:
output_size
,
'grid_sampler'
:
grid_sampler
}
def
call
(
self
,
inputs
):
masks
,
boxes
=
inputs
y0
,
x0
,
y1
,
x1
=
tf
.
split
(
boxes
,
4
,
axis
=
1
)
x_coords
=
tf
.
range
(
0
,
self
.
_output_size
[
1
],
dtype
=
tf
.
float32
)
y_coords
=
tf
.
range
(
0
,
self
.
_output_size
[
0
],
dtype
=
tf
.
float32
)
x_coords
=
(
x_coords
-
x0
)
/
(
x1
-
x0
)
*
2
-
1
y_coords
=
(
y_coords
-
y0
)
/
(
y1
-
y0
)
*
2
-
1
x_coords
=
tf
.
tile
(
tf
.
expand_dims
(
x_coords
,
axis
=
1
),
multiples
=
[
1
,
self
.
_output_size
[
0
],
1
])
y_coords
=
tf
.
tile
(
tf
.
expand_dims
(
y_coords
,
axis
=
2
),
multiples
=
[
1
,
1
,
self
.
_output_size
[
1
]])
pasted_masks
=
self
.
_grid_sampler
((
masks
,
x_coords
,
y_coords
))
return
pasted_masks
def
get_config
(
self
):
return
self
.
_config_dict
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