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image_iter.py
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image_iter.py
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from __future__ import absolute_import
from __future__ import division
from __future__ import print_function
import os
import random
import logging
import sys
import numbers
import math
import sklearn
import datetime
import numpy as np
import cv2
import mxnet as mx
from mxnet import ndarray as nd
from mxnet import io
from mxnet import recordio
logger = logging.getLogger()
class FaceImageIter(io.DataIter):
def __init__(self,
batch_size,
data_shape,
path_imgrec=None,
shuffle=False,
aug_list=None,
mean=None,
rand_mirror=False,
cutoff=0,
color_jittering=0,
images_filter=0,
data_name='data',
label_name='softmax_label',
**kwargs):
super(FaceImageIter, self).__init__()
assert path_imgrec
if path_imgrec:
logging.info('loading recordio %s...', path_imgrec)
path_imgidx = path_imgrec[0:-4] + ".idx"
self.imgrec = recordio.MXIndexedRecordIO(path_imgidx, path_imgrec,
'r') # pylint: disable=redefined-variable-type
s = self.imgrec.read_idx(0)
header, _ = recordio.unpack(s)
if header.flag > 0:
print('header0 label', header.label)
self.header0 = (int(header.label[0]), int(header.label[1]))
#assert(header.flag==1)
#self.imgidx = range(1, int(header.label[0]))
self.imgidx = []
self.id2range = {}
self.seq_identity = range(int(header.label[0]),
int(header.label[1]))
for identity in self.seq_identity:
s = self.imgrec.read_idx(identity)
header, _ = recordio.unpack(s)
a, b = int(header.label[0]), int(header.label[1])
count = b - a
if count < images_filter:
continue
self.id2range[identity] = (a, b)
self.imgidx += range(a, b)
print('id2range', len(self.id2range))
else:
self.imgidx = list(self.imgrec.keys)
if shuffle:
self.seq = self.imgidx
self.oseq = self.imgidx
print(len(self.seq))
else:
self.seq = None
self.mean = mean
self.nd_mean = None
if self.mean:
self.mean = np.array(self.mean, dtype=np.float32).reshape(1, 1, 3)
self.nd_mean = mx.nd.array(self.mean).reshape((1, 1, 3))
self.check_data_shape(data_shape)
self.provide_data = [(data_name, (batch_size, ) + data_shape)]
self.batch_size = batch_size
self.data_shape = data_shape
self.shuffle = shuffle
self.image_size = '%d,%d' % (data_shape[1], data_shape[2])
self.rand_mirror = rand_mirror
print('rand_mirror', rand_mirror)
self.cutoff = cutoff
self.color_jittering = color_jittering
self.CJA = mx.image.ColorJitterAug(0.125, 0.125, 0.125)
self.provide_label = [(label_name, (batch_size, ))]
#print(self.provide_label[0][1])
self.cur = 0
self.nbatch = 0
self.is_init = False
def reset(self):
"""Resets the iterator to the beginning of the data."""
print('call reset()')
self.cur = 0
if self.shuffle:
random.shuffle(self.seq)
if self.seq is None and self.imgrec is not None:
self.imgrec.reset()
def num_samples(self):
return len(self.seq)
def next_sample(self):
"""Helper function for reading in next sample."""
#set total batch size, for example, 1800, and maximum size for each people, for example 45
if self.seq is not None:
while True:
if self.cur >= len(self.seq):
raise StopIteration
idx = self.seq[self.cur]
self.cur += 1
if self.imgrec is not None:
s = self.imgrec.read_idx(idx)
header, img = recordio.unpack(s)
label = header.label
if not isinstance(label, numbers.Number):
label = label[0]
return label, img, None, None
else:
label, fname, bbox, landmark = self.imglist[idx]
return label, self.read_image(fname), bbox, landmark
else:
s = self.imgrec.read()
if s is None:
raise StopIteration
header, img = recordio.unpack(s)
return header.label, img, None, None
def brightness_aug(self, src, x):
alpha = 1.0 + random.uniform(-x, x)
src *= alpha
return src
def contrast_aug(self, src, x):
alpha = 1.0 + random.uniform(-x, x)
coef = nd.array([[[0.299, 0.587, 0.114]]])
gray = src * coef
gray = (3.0 * (1.0 - alpha) / gray.size) * nd.sum(gray)
src *= alpha
src += gray
return src
def saturation_aug(self, src, x):
alpha = 1.0 + random.uniform(-x, x)
coef = nd.array([[[0.299, 0.587, 0.114]]])
gray = src * coef
gray = nd.sum(gray, axis=2, keepdims=True)
gray *= (1.0 - alpha)
src *= alpha
src += gray
return src
def color_aug(self, img, x):
#augs = [self.brightness_aug, self.contrast_aug, self.saturation_aug]
#random.shuffle(augs)
#for aug in augs:
# #print(img.shape)
# img = aug(img, x)
# #print(img.shape)
#return img
return self.CJA(img)
def mirror_aug(self, img):
_rd = random.randint(0, 1)
if _rd == 1:
for c in range(img.shape[2]):
img[:, :, c] = np.fliplr(img[:, :, c])
return img
def compress_aug(self, img):
from PIL import Image
from io import BytesIO
buf = BytesIO()
img = Image.fromarray(img.asnumpy(), 'RGB')
q = random.randint(2, 20)
img.save(buf, format='JPEG', quality=q)
buf = buf.getvalue()
img = Image.open(BytesIO(buf))
return nd.array(np.asarray(img, 'float32'))
def next(self):
if not self.is_init:
self.reset()
self.is_init = True
"""Returns the next batch of data."""
#print('in next', self.cur, self.labelcur)
self.nbatch += 1
batch_size = self.batch_size
c, h, w = self.data_shape
batch_data = nd.empty((batch_size, c, h, w))
if self.provide_label is not None:
batch_label = nd.empty(self.provide_label[0][1])
i = 0
try:
while i < batch_size:
label, s, bbox, landmark = self.next_sample()
_data = self.imdecode(s)
if _data.shape[0] != self.data_shape[1]:
_data = mx.image.resize_short(_data, self.data_shape[1])
if self.rand_mirror:
_rd = random.randint(0, 1)
if _rd == 1:
_data = mx.ndarray.flip(data=_data, axis=1)
if self.color_jittering > 0:
if self.color_jittering > 1:
_rd = random.randint(0, 1)
if _rd == 1:
_data = self.compress_aug(_data)
#print('do color aug')
_data = _data.astype('float32', copy=False)
#print(_data.__class__)
_data = self.color_aug(_data, 0.125)
if self.nd_mean is not None:
_data = _data.astype('float32', copy=False)
_data -= self.nd_mean
_data *= 0.0078125
if self.cutoff > 0:
_rd = random.randint(0, 1)
if _rd == 1:
#print('do cutoff aug', self.cutoff)
centerh = random.randint(0, _data.shape[0] - 1)
centerw = random.randint(0, _data.shape[1] - 1)
half = self.cutoff // 2
starth = max(0, centerh - half)
endh = min(_data.shape[0], centerh + half)
startw = max(0, centerw - half)
endw = min(_data.shape[1], centerw + half)
#print(starth, endh, startw, endw, _data.shape)
_data[starth:endh, startw:endw, :] = 128
data = [_data]
try:
self.check_valid_image(data)
except RuntimeError as e:
logging.debug('Invalid image, skipping: %s', str(e))
continue
#print('aa',data[0].shape)
#data = self.augmentation_transform(data)
#print('bb',data[0].shape)
for datum in data:
assert i < batch_size, 'Batch size must be multiples of augmenter output length'
#print(datum.shape)
batch_data[i][:] = self.postprocess_data(datum)
batch_label[i][:] = label
i += 1
except StopIteration:
if i < batch_size:
raise StopIteration
return io.DataBatch([batch_data], [batch_label], batch_size - i)
def check_data_shape(self, data_shape):
"""Checks if the input data shape is valid"""
if not len(data_shape) == 3:
raise ValueError(
'data_shape should have length 3, with dimensions CxHxW')
if not data_shape[0] == 3:
raise ValueError(
'This iterator expects inputs to have 3 channels.')
def check_valid_image(self, data):
"""Checks if the input data is valid"""
if len(data[0].shape) == 0:
raise RuntimeError('Data shape is wrong')
def imdecode(self, s):
"""Decodes a string or byte string to an NDArray.
See mx.img.imdecode for more details."""
img = mx.image.imdecode(s) #mx.ndarray
return img
def read_image(self, fname):
"""Reads an input image `fname` and returns the decoded raw bytes.
Example usage:
----------
>>> dataIter.read_image('Face.jpg') # returns decoded raw bytes.
"""
with open(os.path.join(self.path_root, fname), 'rb') as fin:
img = fin.read()
return img
def augmentation_transform(self, data):
"""Transforms input data with specified augmentation."""
for aug in self.auglist:
data = [ret for src in data for ret in aug(src)]
return data
def postprocess_data(self, datum):
"""Final postprocessing step before image is loaded into the batch."""
return nd.transpose(datum, axes=(2, 0, 1))
class FaceImageIterList(io.DataIter):
def __init__(self, iter_list):
assert len(iter_list) > 0
self.provide_data = iter_list[0].provide_data
self.provide_label = iter_list[0].provide_label
self.iter_list = iter_list
self.cur_iter = None
def reset(self):
self.cur_iter.reset()
def next(self):
self.cur_iter = random.choice(self.iter_list)
while True:
try:
ret = self.cur_iter.next()
except StopIteration:
self.cur_iter.reset()
continue
return ret
def get_face_image_iter(cfg, data_shape, path_imgrec):
print('loading:', path_imgrec, cfg.is_shuffled_rec)
if not cfg.is_shuffled_rec:
train_dataiter = FaceImageIter(
batch_size=cfg.batch_size,
data_shape=data_shape,
path_imgrec=path_imgrec,
shuffle=True,
rand_mirror=cfg.data_rand_mirror,
mean=None,
cutoff=cfg.data_cutoff,
color_jittering=cfg.data_color,
images_filter=cfg.data_images_filter,
)
train_dataiter = mx.io.PrefetchingIter(train_dataiter)
else:
train_dataiter = mx.io.ImageRecordIter(
path_imgrec = path_imgrec,
data_shape = data_shape,
batch_size = cfg.batch_size,
rand_mirror = cfg.data_rand_mirror,
preprocess_threads = 2,
shuffle = True,
shuffle_chunk_size = 1024,
)
return train_dataiter
def test_face_image_iter(path_imgrec):
train_dataiter = mx.io.ImageRecordIter(
path_imgrec = path_imgrec,
data_shape = (3,112,112),
batch_size = 512,
rand_mirror = True,
preprocess_threads = 2,
shuffle = True,
shuffle_chunk_size = 1024,
)
for batch in train_dataiter:
data = batch.data[0].asnumpy()
print(data.shape)
img0 = data[0]
print(img0[0,:5,:5])
if __name__ == '__main__':
test_face_image_iter('/train_tmp/ms1mv3shuf/train.rec')