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eea7f8c0
编写于
2月 11, 2019
作者:
D
dengkaipeng
浏览文件
操作
浏览文件
下载
电子邮件补丁
差异文件
fix for random_shape interval
上级
8ceb9849
变更
6
显示空白变更内容
内联
并排
Showing
6 changed file
with
37 addition
and
59 deletion
+37
-59
fluid/PaddleCV/yolov3/config/config.py
fluid/PaddleCV/yolov3/config/config.py
+3
-3
fluid/PaddleCV/yolov3/data_utils.py
fluid/PaddleCV/yolov3/data_utils.py
+2
-0
fluid/PaddleCV/yolov3/models.py
fluid/PaddleCV/yolov3/models.py
+3
-3
fluid/PaddleCV/yolov3/reader.py
fluid/PaddleCV/yolov3/reader.py
+23
-45
fluid/PaddleCV/yolov3/train.py
fluid/PaddleCV/yolov3/train.py
+5
-4
fluid/PaddleCV/yolov3/utility.py
fluid/PaddleCV/yolov3/utility.py
+1
-4
未找到文件。
fluid/PaddleCV/yolov3/config/config.py
浏览文件 @
eea7f8c0
...
...
@@ -75,12 +75,12 @@ _C.learning_rate = 0.001
_C
.
max_iter
=
500000
# warm up to learning rate
_C
.
warm_up_iter
=
4
000
_C
.
warm_up_iter
=
1
000
_C
.
warm_up_factor
=
0.
# lr steps_with_decay
_C
.
lr_steps
=
[
350000
,
400000
,
450000
]
_C
.
lr_gamma
=
[
0.5
,
0.1
,
0.01
]
_C
.
lr_steps
=
[
400000
,
450000
]
_C
.
lr_gamma
=
0.1
# L2 regularization hyperparameter
_C
.
weight_decay
=
0.0005
...
...
fluid/PaddleCV/yolov3/data_utils.py
浏览文件 @
eea7f8c0
...
...
@@ -67,6 +67,7 @@ class GeneratorEnqueuer(object):
while
(
True
):
if
self
.
queues
[
queue_idx
].
full
():
queue_idx
=
(
queue_idx
+
1
)
%
self
.
size_num
time
.
sleep
(
0.02
)
continue
else
:
size
=
self
.
random_sizes
[
queue_idx
]
...
...
@@ -77,6 +78,7 @@ class GeneratorEnqueuer(object):
try
:
self
.
queues
[
queue_idx
].
put_nowait
(
generator_output
)
except
:
timw
.
sleep
(
self
.
wait_time
)
continue
else
:
break
...
...
fluid/PaddleCV/yolov3/models.py
浏览文件 @
eea7f8c0
...
...
@@ -204,13 +204,13 @@ class YOLOv3(object):
x
=
out
,
gtbox
=
self
.
gtbox
,
gtlabel
=
self
.
gtlabel
,
gtscore
=
self
.
gtscore
,
#
gtscore=self.gtscore,
anchors
=
anchors
,
anchor_mask
=
anchor_mask
,
class_num
=
class_num
,
ignore_thresh
=
ignore_thresh
,
downsample
=
self
.
downsample
,
use_label_smooth
=
False
,
downsample
_ratio
=
self
.
downsample
,
#
use_label_smooth=False,
name
=
"yolo_loss"
+
str
(
i
))
self
.
losses
.
append
(
fluid
.
layers
.
reduce_mean
(
loss
))
self
.
downsample
//=
2
...
...
fluid/PaddleCV/yolov3/reader.py
浏览文件 @
eea7f8c0
...
...
@@ -141,7 +141,7 @@ class DataSetReader(object):
else
:
return
self
.
_parse_images
(
is_train
=
(
mode
==
'train'
))
def
get_reader
(
self
,
mode
,
size
=
416
,
batch_size
=
None
,
shuffle
=
False
,
mixup
_iter
=
0
,
random_sizes
=
[],
image
=
None
):
def
get_reader
(
self
,
mode
,
size
=
416
,
batch_size
=
None
,
shuffle
=
False
,
random_shape
_iter
=
0
,
random_sizes
=
[],
image
=
None
):
assert
mode
in
[
'train'
,
'test'
,
'infer'
],
"Unknow mode type!"
if
mode
!=
'infer'
:
assert
batch_size
is
not
None
,
"batch size connot be None in mode {}"
.
format
(
mode
)
...
...
@@ -157,11 +157,10 @@ class DataSetReader(object):
im_scale_x
=
size
/
float
(
w
)
im_scale_y
=
size
/
float
(
h
)
out_img
=
cv2
.
resize
(
im
,
None
,
None
,
fx
=
im_scale_x
,
fy
=
im_scale_y
,
interpolation
=
cv2
.
INTER_LINEAR
)
# mean = np.array(mean).reshape((1, 1, -1))
# std = np.array(std).reshape((1, 1, -1))
# out_img = (out_img / 255.0 - mean) / std
# out_img = out_img.transpose((2, 0, 1))
out_img
=
out_img
.
astype
(
'float32'
).
transpose
((
2
,
0
,
1
))
/
255.0
mean
=
np
.
array
(
mean
).
reshape
((
1
,
1
,
-
1
))
std
=
np
.
array
(
std
).
reshape
((
1
,
1
,
-
1
))
out_img
=
(
out_img
/
255.0
-
mean
)
/
std
out_img
=
out_img
.
transpose
((
2
,
0
,
1
))
return
(
out_img
,
int
(
img
[
'id'
]),
(
h
,
w
))
...
...
@@ -173,23 +172,12 @@ class DataSetReader(object):
gt_labels
=
img
[
'gt_labels'
].
copy
()
gt_scores
=
np
.
ones_like
(
gt_labels
)
# if mixup_img:
# mixup_im = cv2.imread(mixup_img['image'])
# mixup_im = cv2.cvtColor(mixup_im, cv2.COLOR_BGR2RGB)
# mixup_gt_boxes = mixup_img['gt_boxes'].copy()
# mixup_gt_labels = mixup_img['gt_labels'].copy()
# mixup_gt_scores = np.ones_like(mixup_gt_labels)
# im, gt_boxes, gt_labels, gt_scores = image_utils.image_mixup(im, gt_boxes, \
# gt_labels, gt_scores, mixup_im, mixup_gt_boxes, mixup_gt_labels, \
# mixup_gt_scores)
im
,
gt_boxes
,
gt_labels
,
gt_scores
=
image_utils
.
image_augment
(
im
,
gt_boxes
,
gt_labels
,
gt_scores
,
size
,
mean
)
im
,
gt_boxes
,
gt_labels
,
gt_scores
=
image_utils
.
image_augment
(
im
,
gt_boxes
,
gt_labels
,
gt_scores
,
size
,
[
0.5
]
*
3
)
# mean = np.array(mean).reshape((1, 1, -1))
# std = np.array(std).reshape((1, 1, -1))
# out_img = (im / 255.0 - mean) / std
# out_img = out_img.transpose((2, 0, 1)).astype('float32')
out_img
=
im
.
astype
(
'float32'
).
transpose
((
2
,
0
,
1
))
/
255.0
mean
=
np
.
array
(
mean
).
reshape
((
1
,
1
,
-
1
))
std
=
np
.
array
(
std
).
reshape
((
1
,
1
,
-
1
))
out_img
=
(
im
/
255.0
-
mean
)
/
std
out_img
=
out_img
.
astype
(
'float32'
).
transpose
((
2
,
0
,
1
))
return
(
out_img
,
gt_boxes
,
gt_labels
,
gt_scores
)
...
...
@@ -198,29 +186,20 @@ class DataSetReader(object):
return
np
.
random
.
choice
(
random_sizes
)
return
size
def
get_mixup_img
(
imgs
,
mixup_iter
,
total_read_cnt
):
if
total_read_cnt
>=
mixup_iter
:
return
None
mixup_idx
=
np
.
random
.
randint
(
1
,
len
(
imgs
))
mixup_img
=
imgs
[(
total_read_cnt
+
mixup_idx
)
%
len
(
imgs
)]
return
mixup_img
def
reader
():
if
mode
==
'train'
:
imgs
=
self
.
_parse_images_by_mode
(
mode
)
if
shuffle
:
np
.
random
.
shuffle
(
imgs
)
read_cnt
=
0
total_
read_cnt
=
0
total_
iter
=
0
batch_out
=
[]
img_size
=
get_img_size
(
size
,
random_sizes
)
# img_ids = []
while
True
:
img
=
imgs
[
read_cnt
%
len
(
imgs
)]
mixup_img
=
get_mixup_img
(
imgs
,
mixup_iter
,
total_read_cnt
)
mixup_img
=
None
read_cnt
+=
1
total_read_cnt
+=
1
if
read_cnt
%
len
(
imgs
)
==
0
and
shuffle
:
np
.
random
.
shuffle
(
imgs
)
im
,
gt_boxes
,
gt_labels
,
gt_scores
=
img_reader_with_augment
(
img
,
img_size
,
cfg
.
pixel_means
,
cfg
.
pixel_stds
,
mixup_img
)
...
...
@@ -231,7 +210,8 @@ class DataSetReader(object):
# print("img_ids: ", img_ids)
yield
batch_out
batch_out
=
[]
if
total_read_cnt
%
10
==
0
:
total_iter
+=
1
if
total_iter
%
10
==
0
:
img_size
=
get_img_size
(
size
,
random_sizes
)
# img_ids = []
...
...
@@ -262,17 +242,13 @@ dsr = DataSetReader()
def
train
(
size
=
416
,
batch_size
=
64
,
shuffle
=
True
,
mixup
_iter
=
0
,
random_shape
_iter
=
0
,
random_sizes
=
[],
interval
=
10
,
pyreader_num
=
1
,
use_multiprocessing
=
True
,
num_workers
=
12
,
num_workers
=
16
,
max_queue
=
32
):
generator
=
dsr
.
get_reader
(
'train'
,
size
,
batch_size
,
shuffle
,
mixup_iter
,
random_sizes
)
if
not
use_multiprocessing
:
return
generator
generator
=
dsr
.
get_reader
(
'train'
,
size
,
batch_size
,
shuffle
,
random_shape_iter
,
random_sizes
)
def
infinite_reader
():
while
True
:
...
...
@@ -282,27 +258,29 @@ def train(size=416,
def
reader
():
try
:
enqueuer
=
GeneratorEnqueuer
(
infinite_reader
(),
use_multiprocessing
=
use_multiprocessing
)
infinite_reader
(),
use_multiprocessing
=
True
)
enqueuer
.
start
(
max_queue_size
=
max_queue
,
workers
=
num_workers
,
random_sizes
=
random_sizes
)
generator_out
=
None
np
.
random
.
seed
(
1000
)
intervals
=
pyreader_num
*
interval
total_random_iter
=
pyreader_num
*
random_shape_iter
cnt
=
0
idx
=
np
.
random
.
randint
(
len
(
random_sizes
))
idx
=
len
(
random_sizes
)
-
1
while
True
:
while
enqueuer
.
is_running
():
if
not
enqueuer
.
queues
[
idx
].
empty
():
generator_out
=
enqueuer
.
queues
[
idx
].
get
()
break
else
:
print
(
idx
,
" empty"
)
time
.
sleep
(
0.02
)
yield
generator_out
generator_out
=
None
cnt
+=
1
if
cnt
%
intervals
==
0
:
idx
=
np
.
random
.
randint
(
len
(
random_sizes
))
print
(
"Resizing: "
,
(
idx
+
10
)
*
32
)
if
cnt
>=
total_random_iter
:
idx
=
-
1
print
(
"Resizing: "
,
random_sizes
[
idx
])
finally
:
if
enqueuer
is
not
None
:
enqueuer
.
stop
()
...
...
fluid/PaddleCV/yolov3/train.py
浏览文件 @
eea7f8c0
...
...
@@ -90,17 +90,17 @@ def train():
else
:
exe
=
base_exe
random_sizes
=
[]
random_sizes
=
[
cfg
.
input_size
]
if
cfg
.
random_shape
:
random_sizes
=
[
32
*
i
for
i
in
range
(
10
,
20
)]
mixup_iter
=
cfg
.
max_iter
-
cfg
.
start_iter
-
cfg
.
no_mixup
_iter
random_shape_iter
=
cfg
.
max_iter
-
cfg
.
start_iter
-
cfg
.
tune
_iter
if
cfg
.
use_pyreader
:
train_reader
=
reader
.
train
(
input_size
,
batch_size
=
int
(
hyperparams
[
'batch'
])
/
devices_num
,
shuffle
=
True
,
mixup_iter
=
mixup_iter
,
random_sizes
=
random_sizes
,
interval
=
10
,
pyreader_num
=
devices_num
,
use_multiprocessing
=
cfg
.
use_multiprocess
)
train_reader
=
reader
.
train
(
input_size
,
batch_size
=
int
(
hyperparams
[
'batch'
])
/
devices_num
,
shuffle
=
True
,
random_shape_iter
=
random_shape_iter
,
random_sizes
=
random_sizes
,
interval
=
10
,
pyreader_num
=
devices_num
)
py_reader
=
model
.
py_reader
py_reader
.
decorate_paddle_reader
(
train_reader
)
else
:
train_reader
=
reader
.
train
(
input_size
,
batch_size
=
int
(
hyperparams
[
'batch'
]),
shuffle
=
True
,
mixup_iter
=
mixup_iter
,
random_sizes
=
random_sizes
,
interval
=
10
,
use_multiprocessing
=
cfg
.
use_multiprocess
)
train_reader
=
reader
.
train
(
input_size
,
batch_size
=
int
(
hyperparams
[
'batch'
]),
shuffle
=
True
,
random_shape_iter
=
random_shape_iter
,
random_sizes
=
random_sizes
,
interval
=
10
)
feeder
=
fluid
.
DataFeeder
(
place
=
place
,
feed_list
=
model
.
feeds
())
def
save_model
(
postfix
):
...
...
@@ -150,6 +150,7 @@ def train():
snapshot_loss
=
0
snapshot_time
=
0
for
iter_id
,
data
in
enumerate
(
train_reader
()):
print
(
len
(
data
),
data
[
0
][
0
].
shape
)
iter_id
+=
cfg
.
start_iter
prev_start_time
=
start_time
start_time
=
time
.
time
()
...
...
fluid/PaddleCV/yolov3/utility.py
浏览文件 @
eea7f8c0
...
...
@@ -104,19 +104,16 @@ def parse_args():
add_arg
(
'class_num'
,
int
,
80
,
"Class number."
)
add_arg
(
'data_dir'
,
str
,
'dataset/coco'
,
"The data root path."
)
add_arg
(
'use_pyreader'
,
bool
,
True
,
"Use pyreader."
)
add_arg
(
'use_multiprocess'
,
bool
,
True
,
"Use multiprocessing for train reader."
)
add_arg
(
'use_profile'
,
bool
,
False
,
"Whether use profiler."
)
add_arg
(
'start_iter'
,
int
,
0
,
"Start iteration."
)
#SOLVER
add_arg
(
'learning_rate'
,
float
,
0.001
,
"Learning rate."
)
add_arg
(
'max_iter'
,
int
,
500200
,
"Iter number."
)
add_arg
(
'snapshot_iter'
,
int
,
2000
,
"Save model every snapshot stride."
)
# add_arg('log_window', int, 20, "Log smooth window, set 1 for debug, set 20 for train.")
# TRAIN TEST INFER
add_arg
(
'input_size'
,
int
,
608
,
"Image input size of YOLOv3."
)
add_arg
(
'random_shape'
,
bool
,
True
,
"Resize to random shape for train reader."
)
add_arg
(
'label_smooth'
,
bool
,
False
,
"Use label smooth in class label."
)
add_arg
(
'no_mixup_iter'
,
int
,
500200
,
"Disable mixup in last N iter."
)
add_arg
(
'tune_iter'
,
int
,
200
,
"Disable random shape in last N iter."
)
add_arg
(
'valid_thresh'
,
float
,
0.005
,
"Valid confidence score for NMS."
)
add_arg
(
'nms_thresh'
,
float
,
0.45
,
"NMS threshold."
)
add_arg
(
'nms_topk'
,
int
,
400
,
"The number of boxes to perform NMS."
)
...
...
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