Skip to content
体验新版
项目
组织
正在加载...
登录
切换导航
打开侧边栏
PaddlePaddle
PaddleClas
提交
0a7231e1
P
PaddleClas
项目概览
PaddlePaddle
/
PaddleClas
大约 1 年 前同步成功
通知
115
Star
4999
Fork
1114
代码
文件
提交
分支
Tags
贡献者
分支图
Diff
Issue
19
列表
看板
标记
里程碑
合并请求
6
Wiki
0
Wiki
分析
仓库
DevOps
项目成员
Pages
P
PaddleClas
项目概览
项目概览
详情
发布
仓库
仓库
文件
提交
分支
标签
贡献者
分支图
比较
Issue
19
Issue
19
列表
看板
标记
里程碑
合并请求
6
合并请求
6
Pages
分析
分析
仓库分析
DevOps
Wiki
0
Wiki
成员
成员
收起侧边栏
关闭侧边栏
动态
分支图
创建新Issue
提交
Issue看板
未验证
提交
0a7231e1
编写于
8月 03, 2021
作者:
C
cuicheng01
提交者:
GitHub
8月 03, 2021
浏览文件
操作
浏览文件
下载
差异文件
Merge pull request #1104 from cuicheng01/develop
fix ResNeXt101_wsl bugs
上级
bd586f4a
cc55d637
变更
5
隐藏空白更改
内联
并排
Showing
5 changed file
with
524 addition
and
4 deletion
+524
-4
ppcls/arch/backbone/model_zoo/resnext101_wsl.py
ppcls/arch/backbone/model_zoo/resnext101_wsl.py
+4
-4
ppcls/configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x16d_wsl.yaml
...onfigs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x16d_wsl.yaml
+130
-0
ppcls/configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x32d_wsl.yaml
...onfigs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x32d_wsl.yaml
+130
-0
ppcls/configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x48d_wsl.yaml
...onfigs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x48d_wsl.yaml
+130
-0
ppcls/configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x8d_wsl.yaml
...configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x8d_wsl.yaml
+130
-0
未找到文件。
ppcls/arch/backbone/model_zoo/resnext101_wsl.py
浏览文件 @
0a7231e1
...
...
@@ -460,17 +460,17 @@ def ResNeXt101_32x8d_wsl(pretrained=False, use_ssld=False, **kwargs):
return
model
def
ResNeXt101_32x16d_wsl
(
**
args
):
def
ResNeXt101_32x16d_wsl
(
pretrained
=
False
,
use_ssld
=
False
,
**
kw
args
):
model
=
ResNeXt101WSL
(
cardinality
=
32
,
width
=
16
,
**
kwargs
)
_load_pretrained
(
pretrained
,
model
,
MODEL_URLS
[
"ResNeXt101_32x16d_ws"
],
MODEL_URLS
[
"ResNeXt101_32x16d_ws
l
"
],
use_ssld
=
use_ssld
)
return
model
def
ResNeXt101_32x32d_wsl
(
**
args
):
def
ResNeXt101_32x32d_wsl
(
pretrained
=
False
,
use_ssld
=
False
,
**
kw
args
):
model
=
ResNeXt101WSL
(
cardinality
=
32
,
width
=
32
,
**
kwargs
)
_load_pretrained
(
pretrained
,
...
...
@@ -480,7 +480,7 @@ def ResNeXt101_32x32d_wsl(**args):
return
model
def
ResNeXt101_32x48d_wsl
(
**
args
):
def
ResNeXt101_32x48d_wsl
(
pretrained
=
False
,
use_ssld
=
False
,
**
kw
args
):
model
=
ResNeXt101WSL
(
cardinality
=
32
,
width
=
48
,
**
kwargs
)
_load_pretrained
(
pretrained
,
...
...
ppcls/configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x16d_wsl.yaml
0 → 100644
浏览文件 @
0a7231e1
# global configs
Global
:
checkpoints
:
null
pretrained_model
:
null
output_dir
:
./output/
device
:
gpu
save_interval
:
1
eval_during_train
:
True
eval_interval
:
1
epochs
:
120
print_batch_step
:
10
use_visualdl
:
False
# used for static mode and model export
image_shape
:
[
3
,
224
,
224
]
save_inference_dir
:
./inference
# model architecture
Arch
:
name
:
ResNeXt101_32x16d_wsl
class_num
:
1000
# loss function config for traing/eval process
Loss
:
Train
:
-
CELoss
:
weight
:
1.0
Eval
:
-
CELoss
:
weight
:
1.0
Optimizer
:
name
:
Momentum
momentum
:
0.9
lr
:
name
:
Piecewise
learning_rate
:
0.1
decay_epochs
:
[
30
,
60
,
90
]
values
:
[
0.1
,
0.01
,
0.001
,
0.0001
]
regularizer
:
name
:
'
L2'
coeff
:
0.0001
# data loader for train and eval
DataLoader
:
Train
:
dataset
:
name
:
ImageNetDataset
image_root
:
./dataset/ILSVRC2012/
cls_label_path
:
./dataset/ILSVRC2012/train_list.txt
transform_ops
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
RandCropImage
:
size
:
224
-
RandFlipImage
:
flip_code
:
1
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
sampler
:
name
:
DistributedBatchSampler
batch_size
:
64
drop_last
:
False
shuffle
:
True
loader
:
num_workers
:
4
use_shared_memory
:
True
Eval
:
dataset
:
name
:
ImageNetDataset
image_root
:
./dataset/ILSVRC2012/
cls_label_path
:
./dataset/ILSVRC2012/val_list.txt
transform_ops
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
ResizeImage
:
resize_short
:
256
-
CropImage
:
size
:
224
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
sampler
:
name
:
DistributedBatchSampler
batch_size
:
64
drop_last
:
False
shuffle
:
False
loader
:
num_workers
:
4
use_shared_memory
:
True
Infer
:
infer_imgs
:
docs/images/whl/demo.jpg
batch_size
:
10
transforms
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
ResizeImage
:
resize_short
:
256
-
CropImage
:
size
:
224
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
-
ToCHWImage
:
PostProcess
:
name
:
Topk
topk
:
5
class_id_map_file
:
ppcls/utils/imagenet1k_label_list.txt
Metric
:
Train
:
-
TopkAcc
:
topk
:
[
1
,
5
]
Eval
:
-
TopkAcc
:
topk
:
[
1
,
5
]
ppcls/configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x32d_wsl.yaml
0 → 100644
浏览文件 @
0a7231e1
# global configs
Global
:
checkpoints
:
null
pretrained_model
:
null
output_dir
:
./output/
device
:
gpu
save_interval
:
1
eval_during_train
:
True
eval_interval
:
1
epochs
:
120
print_batch_step
:
10
use_visualdl
:
False
# used for static mode and model export
image_shape
:
[
3
,
224
,
224
]
save_inference_dir
:
./inference
# model architecture
Arch
:
name
:
ResNeXt101_32x32d_wsl
class_num
:
1000
# loss function config for traing/eval process
Loss
:
Train
:
-
CELoss
:
weight
:
1.0
Eval
:
-
CELoss
:
weight
:
1.0
Optimizer
:
name
:
Momentum
momentum
:
0.9
lr
:
name
:
Piecewise
learning_rate
:
0.1
decay_epochs
:
[
30
,
60
,
90
]
values
:
[
0.1
,
0.01
,
0.001
,
0.0001
]
regularizer
:
name
:
'
L2'
coeff
:
0.0001
# data loader for train and eval
DataLoader
:
Train
:
dataset
:
name
:
ImageNetDataset
image_root
:
./dataset/ILSVRC2012/
cls_label_path
:
./dataset/ILSVRC2012/train_list.txt
transform_ops
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
RandCropImage
:
size
:
224
-
RandFlipImage
:
flip_code
:
1
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
sampler
:
name
:
DistributedBatchSampler
batch_size
:
64
drop_last
:
False
shuffle
:
True
loader
:
num_workers
:
4
use_shared_memory
:
True
Eval
:
dataset
:
name
:
ImageNetDataset
image_root
:
./dataset/ILSVRC2012/
cls_label_path
:
./dataset/ILSVRC2012/val_list.txt
transform_ops
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
ResizeImage
:
resize_short
:
256
-
CropImage
:
size
:
224
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
sampler
:
name
:
DistributedBatchSampler
batch_size
:
64
drop_last
:
False
shuffle
:
False
loader
:
num_workers
:
4
use_shared_memory
:
True
Infer
:
infer_imgs
:
docs/images/whl/demo.jpg
batch_size
:
10
transforms
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
ResizeImage
:
resize_short
:
256
-
CropImage
:
size
:
224
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
-
ToCHWImage
:
PostProcess
:
name
:
Topk
topk
:
5
class_id_map_file
:
ppcls/utils/imagenet1k_label_list.txt
Metric
:
Train
:
-
TopkAcc
:
topk
:
[
1
,
5
]
Eval
:
-
TopkAcc
:
topk
:
[
1
,
5
]
ppcls/configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x48d_wsl.yaml
0 → 100644
浏览文件 @
0a7231e1
# global configs
Global
:
checkpoints
:
null
pretrained_model
:
null
output_dir
:
./output/
device
:
gpu
save_interval
:
1
eval_during_train
:
True
eval_interval
:
1
epochs
:
120
print_batch_step
:
10
use_visualdl
:
False
# used for static mode and model export
image_shape
:
[
3
,
224
,
224
]
save_inference_dir
:
./inference
# model architecture
Arch
:
name
:
ResNeXt101_32x48d_wsl
class_num
:
1000
# loss function config for traing/eval process
Loss
:
Train
:
-
CELoss
:
weight
:
1.0
Eval
:
-
CELoss
:
weight
:
1.0
Optimizer
:
name
:
Momentum
momentum
:
0.9
lr
:
name
:
Piecewise
learning_rate
:
0.1
decay_epochs
:
[
30
,
60
,
90
]
values
:
[
0.1
,
0.01
,
0.001
,
0.0001
]
regularizer
:
name
:
'
L2'
coeff
:
0.0001
# data loader for train and eval
DataLoader
:
Train
:
dataset
:
name
:
ImageNetDataset
image_root
:
./dataset/ILSVRC2012/
cls_label_path
:
./dataset/ILSVRC2012/train_list.txt
transform_ops
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
RandCropImage
:
size
:
224
-
RandFlipImage
:
flip_code
:
1
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
sampler
:
name
:
DistributedBatchSampler
batch_size
:
64
drop_last
:
False
shuffle
:
True
loader
:
num_workers
:
4
use_shared_memory
:
True
Eval
:
dataset
:
name
:
ImageNetDataset
image_root
:
./dataset/ILSVRC2012/
cls_label_path
:
./dataset/ILSVRC2012/val_list.txt
transform_ops
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
ResizeImage
:
resize_short
:
256
-
CropImage
:
size
:
224
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
sampler
:
name
:
DistributedBatchSampler
batch_size
:
64
drop_last
:
False
shuffle
:
False
loader
:
num_workers
:
4
use_shared_memory
:
True
Infer
:
infer_imgs
:
docs/images/whl/demo.jpg
batch_size
:
10
transforms
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
ResizeImage
:
resize_short
:
256
-
CropImage
:
size
:
224
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
-
ToCHWImage
:
PostProcess
:
name
:
Topk
topk
:
5
class_id_map_file
:
ppcls/utils/imagenet1k_label_list.txt
Metric
:
Train
:
-
TopkAcc
:
topk
:
[
1
,
5
]
Eval
:
-
TopkAcc
:
topk
:
[
1
,
5
]
ppcls/configs/ImageNet/ResNeXt101_wsl/ResNeXt101_32x8d_wsl.yaml
0 → 100644
浏览文件 @
0a7231e1
# global configs
Global
:
checkpoints
:
null
pretrained_model
:
null
output_dir
:
./output/
device
:
gpu
save_interval
:
1
eval_during_train
:
True
eval_interval
:
1
epochs
:
120
print_batch_step
:
10
use_visualdl
:
False
# used for static mode and model export
image_shape
:
[
3
,
224
,
224
]
save_inference_dir
:
./inference
# model architecture
Arch
:
name
:
ResNeXt101_32x8d_wsl
class_num
:
1000
# loss function config for traing/eval process
Loss
:
Train
:
-
CELoss
:
weight
:
1.0
Eval
:
-
CELoss
:
weight
:
1.0
Optimizer
:
name
:
Momentum
momentum
:
0.9
lr
:
name
:
Piecewise
learning_rate
:
0.1
decay_epochs
:
[
30
,
60
,
90
]
values
:
[
0.1
,
0.01
,
0.001
,
0.0001
]
regularizer
:
name
:
'
L2'
coeff
:
0.0001
# data loader for train and eval
DataLoader
:
Train
:
dataset
:
name
:
ImageNetDataset
image_root
:
./dataset/ILSVRC2012/
cls_label_path
:
./dataset/ILSVRC2012/train_list.txt
transform_ops
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
RandCropImage
:
size
:
224
-
RandFlipImage
:
flip_code
:
1
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
sampler
:
name
:
DistributedBatchSampler
batch_size
:
64
drop_last
:
False
shuffle
:
True
loader
:
num_workers
:
4
use_shared_memory
:
True
Eval
:
dataset
:
name
:
ImageNetDataset
image_root
:
./dataset/ILSVRC2012/
cls_label_path
:
./dataset/ILSVRC2012/val_list.txt
transform_ops
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
ResizeImage
:
resize_short
:
256
-
CropImage
:
size
:
224
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
sampler
:
name
:
DistributedBatchSampler
batch_size
:
64
drop_last
:
False
shuffle
:
False
loader
:
num_workers
:
4
use_shared_memory
:
True
Infer
:
infer_imgs
:
docs/images/whl/demo.jpg
batch_size
:
10
transforms
:
-
DecodeImage
:
to_rgb
:
True
channel_first
:
False
-
ResizeImage
:
resize_short
:
256
-
CropImage
:
size
:
224
-
NormalizeImage
:
scale
:
1.0/255.0
mean
:
[
0.485
,
0.456
,
0.406
]
std
:
[
0.229
,
0.224
,
0.225
]
order
:
'
'
-
ToCHWImage
:
PostProcess
:
name
:
Topk
topk
:
5
class_id_map_file
:
ppcls/utils/imagenet1k_label_list.txt
Metric
:
Train
:
-
TopkAcc
:
topk
:
[
1
,
5
]
Eval
:
-
TopkAcc
:
topk
:
[
1
,
5
]
编辑
预览
Markdown
is supported
0%
请重试
或
添加新附件
.
添加附件
取消
You are about to add
0
people
to the discussion. Proceed with caution.
先完成此消息的编辑!
取消
想要评论请
注册
或
登录