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2799b0ec
编写于
5月 24, 2017
作者:
W
wanghaoshuang@baidu.com
提交者:
wanghaoshuang
6月 05, 2017
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差异文件
Add flowers dataset for image classification model
上级
b15b2637
变更
4
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并排
Showing
4 changed file
with
409 addition
and
8 deletion
+409
-8
python/paddle/v2/dataset/flowers.py
python/paddle/v2/dataset/flowers.py
+255
-0
python/paddle/v2/dataset/tests/flowers_test.py
python/paddle/v2/dataset/tests/flowers_test.py
+51
-0
python/paddle/v2/image.py
python/paddle/v2/image.py
+29
-7
python/paddle/v2/reader/decorator.py
python/paddle/v2/reader/decorator.py
+74
-1
未找到文件。
python/paddle/v2/dataset/flowers.py
0 → 100644
浏览文件 @
2799b0ec
# Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserved
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
"""
CIFAR dataset.
This module will download dataset from
http://www.robots.ox.ac.uk/~vgg/data/flowers/102/index.html
and parse train/test set intopaddle reader creators.
This set contains images of flowers belonging to 102 different categories.
The images were acquired by searching the web and taking pictures. There are a
minimum of 40 images for each category.
The database was used in:
Nilsback, M-E. and Zisserman, A. Automated flower classification over a large
number of classes.Proceedings of the Indian Conference on Computer Vision,
Graphics and Image Processing (2008)
http://www.robots.ox.ac.uk/~vgg/publications/papers/nilsback08.{pdf,ps.gz}.
"""
import
cPickle
import
itertools
from
common
import
download
import
tarfile
import
scipy.io
as
scio
from
image
import
*
import
os
from
multiprocessing
import
Process
from
multiprocessing
import
Pool
from
multiprocessing
import
cpu_count
import
numpy
as
np
import
paddle.v2
as
paddle
__all__
=
[
'train'
,
'test'
,
'valid'
]
DATA_URL
=
'http://www.robots.ox.ac.uk/~vgg/data/flowers/102/102flowers.tgz'
LABEL_URL
=
'http://www.robots.ox.ac.uk/~vgg/data/flowers/102/imagelabels.mat'
SETID_URL
=
'http://www.robots.ox.ac.uk/~vgg/data/flowers/102/setid.mat'
DATA_MD5
=
'52808999861908f626f3c1f4e79d11fa'
LABEL_MD5
=
'e0620be6f572b9609742df49c70aed4d'
SETID_MD5
=
'a5357ecc9cb78c4bef273ce3793fc85c'
def
extract_file
(
tarFile
):
'''
Extract tar file to tmp dir.
Example usage:
.. code-block:: python
tmp = extract_file("/home/work/test.tar.gz")
:param tarFile: target tar file
:type tarFile: string
:return: extracted dir. For example:
'/home/work/test/' while input is '/home/work/test.tar.gz'
:rtype: string
'''
base_dir
=
os
.
path
.
dirname
(
tarFile
)
base_name
=
os
.
path
.
basename
(
tarFile
)
if
'.'
in
base_name
:
base_name
=
base_name
.
split
(
'.'
,
1
)[
0
]
out_path
=
'/'
.
join
([
base_dir
,
base_name
])
if
not
os
.
path
.
exists
(
out_path
):
df
=
tarfile
.
open
(
tarFile
,
mode
=
'r'
)
df
.
extractall
(
path
=
out_path
)
df
.
close
()
return
out_path
def
default_mapper
(
sample
):
'''
map image bytes data to type needed by model input layer
'''
img
,
label
=
sample
img
=
paddle
.
image
.
load_image_bytes
(
img
)
img
=
paddle
.
image
.
simple_transform
(
img
,
256
,
224
,
True
)
return
img
.
flatten
().
astype
(
'float32'
),
label
def
reader_creator
(
data_file
,
label_file
,
setid_file
,
flag
,
mapper
=
default_mapper
):
'''
1. extract 102flowers.tgz to 102flowers/
2. merge images into batch files in 102flowers_batch/
3. get a reader to read sample from batch file
:param data_file: downloaded data file
:type data_file: string
:param label_file: downloaded label file
:type label_file: string
:param setid_file: downloaded setid file containing information
about how to split dataset
:type setid_file: string
:param flag: data set name (tstid|trnid|valid)
:type flag: string
:param mapper: a function to map image bytes data to type
needed by model input layer
:type mapper: callable
:return: data reader
:rtype: callable
'''
base_dir
=
os
.
path
.
dirname
(
data_file
)
tmp_dir
=
extract_file
(
data_file
)
file_list
=
create_batch
(
tmp_dir
,
label_file
,
setid_file
,
flag
)
def
reader
():
for
file
in
open
(
file_list
):
file
=
file
.
strip
()
batch
=
None
with
open
(
file
,
'r'
)
as
f
:
batch
=
cPickle
.
load
(
f
)
data
=
batch
[
'data'
]
labels
=
batch
[
'label'
]
for
sample
,
label
in
itertools
.
izip
(
data
,
batch
[
'label'
]):
yield
sample
,
int
(
label
)
return
paddle
.
reader
.
xmap
(
mapper
,
reader
,
cpu_count
(),
1024
*
8
)
def
create_batch
(
data_dir
,
label_file
,
setid_file
,
flag
,
numPerBatch
=
1024
,
nThread
=
16
):
batch_dir
=
data_dir
+
"_batch"
labels
=
scio
.
loadmat
(
label_file
)[
'labels'
][
0
]
indexes
=
scio
.
loadmat
(
setid_file
)[
flag
][
0
]
count
=
len
(
indexes
)
out_path
=
"%s/%s"
%
(
batch_dir
,
flag
)
meta_file
=
"%s/%s.txt"
%
(
batch_dir
,
flag
)
if
os
.
path
.
exists
(
out_path
):
return
meta_file
else
:
os
.
makedirs
(
out_path
)
def
batch
(
file_out
,
start
,
end
):
data
=
[]
labellist
=
[]
for
index
in
indexes
[
start
:
end
]:
img_name
=
"%s/jpg/image_%05d.jpg"
%
(
data_dir
,
index
)
with
open
(
img_name
,
'r'
)
as
f
:
data
.
append
(
f
.
read
())
labellist
.
append
(
labels
[
index
-
1
])
output
=
{}
output
[
'label'
]
=
labellist
output
[
'data'
]
=
data
cPickle
.
dump
(
output
,
open
(
file_out
,
'w'
),
protocol
=
cPickle
.
HIGHEST_PROTOCOL
)
cur_id
=
0
file_id
=
0
while
cur_id
<
count
:
thread
=
[]
for
i
in
xrange
(
nThread
):
end_id
=
min
(
cur_id
+
numPerBatch
,
count
)
batch_file_name
=
"%s/batch_%05d"
%
(
out_path
,
file_id
)
w
=
Process
(
target
=
batch
,
args
=
(
batch_file_name
,
cur_id
,
end_id
))
w
.
daemon
=
True
thread
.
append
(
w
)
cur_id
=
end_id
file_id
+=
1
if
cur_id
==
count
:
break
for
t
in
thread
:
t
.
start
()
for
t
in
thread
:
t
.
join
()
with
open
(
meta_file
,
'a'
)
as
meta
:
for
file
in
os
.
listdir
(
out_path
):
meta
.
write
(
os
.
path
.
abspath
(
"%s/%s"
%
(
out_path
,
file
))
+
"
\n
"
)
return
meta_file
def
train
(
mapper
=
default_mapper
):
'''
Create flowers training set reader.
It returns a reader, each sample in the reader is
image pixels in [0, 1] and label in [1, 102]
translated from original color image by steps:
1. resize to 256*256
2. random crop to 224*224
3. flatten
:param mapper: a function to map sample.
:type mapper: callable
:return: train data reader
:rtype: callable
'''
return
reader_creator
(
download
(
DATA_URL
,
'flowers'
,
DATA_MD5
),
download
(
LABEL_URL
,
'flowers'
,
LABEL_MD5
),
download
(
SETID_URL
,
'flowers'
,
SETID_MD5
),
'trnid'
)
def
test
(
mapper
=
default_mapper
):
'''
Create flowers test set reader.
It returns a reader, each sample in the reader is
image pixels in [0, 1] and label in [1, 102]
translated from original color image by steps:
1. resize to 256*256
2. random crop to 224*224
3. flatten
:param mapper: a function to map sample.
:type mapper: callable
:return: test data reader
:rtype: callable
'''
return
reader_creator
(
download
(
DATA_URL
,
'flowers'
,
DATA_MD5
),
download
(
LABEL_URL
,
'flowers'
,
LABEL_MD5
),
download
(
SETID_URL
,
'flowers'
,
SETID_MD5
),
'tstid'
)
def
valid
():
'''
Create flowers validation set reader.
It returns a reader, each sample in the reader is
image pixels in [0, 1] and label in [1, 102]
translated from original color image by steps:
1. resize to 256*256
2. random crop to 224*224
3. flatten
'''
return
reader_creator
(
download
(
DATA_URL
,
'flowers'
,
DATA_MD5
),
download
(
LABEL_URL
,
'flowers'
,
LABEL_MD5
),
download
(
SETID_URL
,
'flowers'
,
SETID_MD5
),
'valid'
)
def
fetch
():
download
(
DATA_URL
,
'flowers'
,
DATA_MD5
)
download
(
LABEL_URL
,
'flowers'
,
LABEL_MD5
)
download
(
SETID_URL
,
'flowers'
,
SETID_MD5
)
if
__name__
==
'__main__'
:
for
i
in
test
()():
pass
python/paddle/v2/dataset/tests/flowers_test.py
0 → 100644
浏览文件 @
2799b0ec
# Copyright (c) 2016 PaddlePaddle Authors. All Rights Reserved
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
# http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
import
paddle.v2.dataset.flowers
import
unittest
class
TestFlowers
(
unittest
.
TestCase
):
def
check_reader
(
self
,
reader
):
sum
=
0
label
=
0
size
=
224
*
224
*
3
for
l
in
reader
():
self
.
assertEqual
(
l
[
0
].
size
,
size
)
if
l
[
1
]
>
label
:
label
=
l
[
1
]
sum
+=
1
return
sum
,
label
def
test_train
(
self
):
instances
,
max_label_value
=
self
.
check_reader
(
paddle
.
v2
.
dataset
.
flowers
.
train
())
self
.
assertEqual
(
instances
,
1020
)
self
.
assertEqual
(
max_label_value
,
102
)
def
test_test
(
self
):
instances
,
max_label_value
=
self
.
check_reader
(
paddle
.
v2
.
dataset
.
flowers
.
test
())
self
.
assertEqual
(
instances
,
6149
)
self
.
assertEqual
(
max_label_value
,
102
)
def
test_valid
(
self
):
instances
,
max_label_value
=
self
.
check_reader
(
paddle
.
v2
.
dataset
.
flowers
.
valid
())
self
.
assertEqual
(
instances
,
1020
)
self
.
assertEqual
(
max_label_value
,
102
)
if
__name__
==
'__main__'
:
unittest
.
main
()
python/paddle/v2/image.py
浏览文件 @
2799b0ec
import
numpy
as
np
import
numpy
as
np
try
:
try
:
import
cv2
import
cv2
except
:
except
ImportError
:
print
(
cv2
=
None
"import cv2 error, please install opencv-python: pip install opencv-python"
)
from
cv2
import
resize
__all__
=
[
__all__
=
[
"load_image
"
,
"resize_short"
,
"to_chw"
,
"center_crop"
,
"random
_crop"
,
"load_image
_bytes"
,
"load_image"
,
"resize_short"
,
"to_chw"
,
"center
_crop"
,
"left_right_flip"
,
"simple_transform"
,
"load_and_transform"
"
random_crop"
,
"
left_right_flip"
,
"simple_transform"
,
"load_and_transform"
]
]
"""
"""
This file contains some common interfaces for image preprocess.
This file contains some common interfaces for image preprocess.
...
@@ -28,6 +28,28 @@ the image layout as follows.
...
@@ -28,6 +28,28 @@ the image layout as follows.
"""
"""
def
load_image_bytes
(
bytes
,
is_color
=
True
):
"""
Load an color or gray image from bytes array.
Example usage:
.. code-block:: python
with open('cat.jpg') as f:
im = load_image(f.read())
:param bytes: the input image bytes array.
:type file: str
:param is_color: If set is_color True, it will load and
return a color image. Otherwise, it will
load and return a gray image.
"""
flag
=
1
if
is_color
else
0
file_bytes
=
np
.
asarray
(
bytearray
(
bytes
),
dtype
=
np
.
uint8
)
img
=
cv2
.
imdecode
(
file_bytes
,
flag
)
return
img
def
load_image
(
file
,
is_color
=
True
):
def
load_image
(
file
,
is_color
=
True
):
"""
"""
Load an color or gray image from the file path.
Load an color or gray image from the file path.
...
@@ -76,7 +98,7 @@ def resize_short(im, size):
...
@@ -76,7 +98,7 @@ def resize_short(im, size):
h_new
=
size
*
h
/
w
h_new
=
size
*
h
/
w
else
:
else
:
w_new
=
size
*
w
/
h
w_new
=
size
*
w
/
h
im
=
cv2
.
resize
(
im
,
(
h_new
,
w_new
),
interpolation
=
cv2
.
INTER_CUBIC
)
im
=
resize
(
im
,
(
h_new
,
w_new
),
interpolation
=
cv2
.
INTER_CUBIC
)
return
im
return
im
...
...
python/paddle/v2/reader/decorator.py
浏览文件 @
2799b0ec
...
@@ -14,13 +14,15 @@
...
@@ -14,13 +14,15 @@
__all__
=
[
__all__
=
[
'map_readers'
,
'buffered'
,
'compose'
,
'chain'
,
'shuffle'
,
'map_readers'
,
'buffered'
,
'compose'
,
'chain'
,
'shuffle'
,
'ComposeNotAligned'
,
'firstn'
'ComposeNotAligned'
,
'firstn'
,
'xmap'
]
]
import
itertools
import
itertools
import
random
import
random
from
Queue
import
Queue
from
Queue
import
Queue
from
threading
import
Thread
from
threading
import
Thread
from
multiprocessing
import
Queue
as
MQueue
from
multiprocessing
import
Process
def
map_readers
(
func
,
*
readers
):
def
map_readers
(
func
,
*
readers
):
...
@@ -224,3 +226,74 @@ def firstn(reader, n):
...
@@ -224,3 +226,74 @@ def firstn(reader, n):
yield
item
yield
item
return
firstn_reader
return
firstn_reader
class
XmapEndSignal
():
pass
def
xmap
(
mapper
,
reader
,
process_num
,
buffer_size
):
"""
Use multiprocess to map samples from reader by a mapper defined by user.
And this function contains a buffered decorator.
:param mapper: a function to map sample.
:type mapper: callable
:param reader: the data reader to read from
:type reader: callable
:param process_num: process number to handle original sample
:type process_num: int
:param buffer_size: max buffer size
:type buffer_size: int
:return: the decarated reader
:rtype: callable
"""
end
=
XmapEndSignal
()
in_queue
=
MQueue
(
buffer_size
)
out_queue
=
MQueue
(
buffer_size
)
# define a worker to read samples from reader to in_queue
def
read_worker
(
reader
,
in_queue
):
for
i
in
reader
():
in_queue
.
put
(
i
)
in_queue
.
put
(
end
)
# start a read worker in a thread
t
=
Thread
(
target
=
read_worker
,
args
=
(
reader
,
in_queue
))
t
.
daemon
=
True
t
.
start
()
# define a worker to handle samples from in_queue by mapper
# and put mapped samples into out_queue
def
handle_worker
(
in_queue
,
out_queue
,
mapper
):
sample
=
in_queue
.
get
()
while
not
isinstance
(
sample
,
XmapEndSignal
):
r
=
mapper
(
sample
)
out_queue
.
put
(
r
)
sample
=
in_queue
.
get
()
in_queue
.
put
(
end
)
out_queue
.
put
(
end
)
# start several handle_workers
workers
=
[]
for
i
in
xrange
(
process_num
):
worker
=
Process
(
target
=
handle_worker
,
args
=
(
in_queue
,
out_queue
,
mapper
))
worker
.
daemon
=
True
workers
.
append
(
worker
)
for
w
in
workers
:
w
.
start
()
def
xreader
():
sample
=
out_queue
.
get
()
while
not
isinstance
(
sample
,
XmapEndSignal
):
yield
sample
sample
=
out_queue
.
get
()
finish
=
1
while
finish
<
process_num
:
sample
=
out_queue
.
get
()
if
isinstance
(
sample
,
XmapEndSignal
):
finish
+=
1
else
:
yield
sample
return
xreader
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