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#
# Copyright 2024 The InfiniFlow 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 sys
import six
import cv2
import numpy as np
import math
from PIL import Image
class DecodeImage(object):
""" decode image """
def __init__(self,
img_mode='RGB',
channel_first=False,
ignore_orientation=False,
**kwargs):
self.img_mode = img_mode
self.channel_first = channel_first
self.ignore_orientation = ignore_orientation
def __call__(self, data):
img = data['image']
if six.PY2:
assert isinstance(img, str) and len(
img) > 0, "invalid input 'img' in DecodeImage"
else:
assert isinstance(img, bytes) and len(
img) > 0, "invalid input 'img' in DecodeImage"
img = np.frombuffer(img, dtype='uint8')
if self.ignore_orientation:
img = cv2.imdecode(img, cv2.IMREAD_IGNORE_ORIENTATION |
cv2.IMREAD_COLOR)
else:
img = cv2.imdecode(img, 1)
if img is None:
return None
if self.img_mode == 'GRAY':
img = cv2.cvtColor(img, cv2.COLOR_GRAY2BGR)
elif self.img_mode == 'RGB':
assert img.shape[2] == 3, 'invalid shape of image[%s]' % (
img.shape)
img = img[:, :, ::-1]
if self.channel_first:
img = img.transpose((2, 0, 1))
data['image'] = img
return data
class StandardizeImage(object):
"""normalize image
Args:
mean (list): im - mean
std (list): im / std
is_scale (bool): whether need im / 255
norm_type (str): type in ['mean_std', 'none']
"""
def __init__(self, mean, std, is_scale=True, norm_type='mean_std'):
self.mean = mean
self.std = std
self.is_scale = is_scale
self.norm_type = norm_type
def __call__(self, im, im_info):
"""
Args:
im (np.ndarray): image (np.ndarray)
im_info (dict): info of image
Returns:
im (np.ndarray): processed image (np.ndarray)
im_info (dict): info of processed image
"""
im = im.astype(np.float32, copy=False)
if self.is_scale:
scale = 1.0 / 255.0
im *= scale
if self.norm_type == 'mean_std':
mean = np.array(self.mean)[np.newaxis, np.newaxis, :]
std = np.array(self.std)[np.newaxis, np.newaxis, :]
im -= mean
im /= std
return im, im_info
class NormalizeImage(object):
""" normalize image such as substract mean, divide std
"""
def __init__(self, scale=None, mean=None, std=None, order='chw', **kwargs):
if isinstance(scale, str):
scale = eval(scale)
self.scale = np.float32(scale if scale is not None else 1.0 / 255.0)
mean = mean if mean is not None else [0.485, 0.456, 0.406]
std = std if std is not None else [0.229, 0.224, 0.225]
shape = (3, 1, 1) if order == 'chw' else (1, 1, 3)
self.mean = np.array(mean).reshape(shape).astype('float32')
self.std = np.array(std).reshape(shape).astype('float32')
def __call__(self, data):
img = data['image']
from PIL import Image
if isinstance(img, Image.Image):
img = np.array(img)
assert isinstance(img,
np.ndarray), "invalid input 'img' in NormalizeImage"
data['image'] = (
img.astype('float32') * self.scale - self.mean) / self.std
return data
class ToCHWImage(object):
""" convert hwc image to chw image
"""
def __init__(self, **kwargs):
pass
def __call__(self, data):
img = data['image']
from PIL import Image
if isinstance(img, Image.Image):
img = np.array(img)
data['image'] = img.transpose((2, 0, 1))
return data
class Fasttext(object):
def __init__(self, path="None", **kwargs):
import fasttext
self.fast_model = fasttext.load_model(path)
def __call__(self, data):
label = data['label']
fast_label = self.fast_model[label]
data['fast_label'] = fast_label
return data
class KeepKeys(object):
def __init__(self, keep_keys, **kwargs):
self.keep_keys = keep_keys
def __call__(self, data):
data_list = []
for key in self.keep_keys:
data_list.append(data[key])
return data_list
class Pad(object):
def __init__(self, size=None, size_div=32, **kwargs):
if size is not None and not isinstance(size, (int, list, tuple)):
raise TypeError("Type of target_size is invalid. Now is {}".format(
type(size)))
if isinstance(size, int):
size = [size, size]
self.size = size
self.size_div = size_div
def __call__(self, data):
img = data['image']
img_h, img_w = img.shape[0], img.shape[1]
if self.size:
resize_h2, resize_w2 = self.size
assert (
img_h < resize_h2 and img_w < resize_w2
), '(h, w) of target size should be greater than (img_h, img_w)'
else:
resize_h2 = max(
int(math.ceil(img.shape[0] / self.size_div) * self.size_div),
self.size_div)
resize_w2 = max(
int(math.ceil(img.shape[1] / self.size_div) * self.size_div),
self.size_div)
img = cv2.copyMakeBorder(
img,
0,
resize_h2 - img_h,
0,
resize_w2 - img_w,
cv2.BORDER_CONSTANT,
value=0)
data['image'] = img
return data
class LinearResize(object):
"""resize image by target_size and max_size
Args:
target_size (int): the target size of image
keep_ratio (bool): whether keep_ratio or not, default true
interp (int): method of resize
"""
def __init__(self, target_size, keep_ratio=True, interp=cv2.INTER_LINEAR):
if isinstance(target_size, int):
target_size = [target_size, target_size]
self.target_size = target_size
self.keep_ratio = keep_ratio
self.interp = interp
def __call__(self, im, im_info):
"""
Args:
im (np.ndarray): image (np.ndarray)
im_info (dict): info of image
Returns:
im (np.ndarray): processed image (np.ndarray)
im_info (dict): info of processed image
"""
assert len(self.target_size) == 2
assert self.target_size[0] > 0 and self.target_size[1] > 0
im_channel = im.shape[2]
im_scale_y, im_scale_x = self.generate_scale(im)
im = cv2.resize(
im,
None,
None,
fx=im_scale_x,
fy=im_scale_y,
interpolation=self.interp)
im_info['im_shape'] = np.array(im.shape[:2]).astype('float32')
im_info['scale_factor'] = np.array(
[im_scale_y, im_scale_x]).astype('float32')
return im, im_info
def generate_scale(self, im):
"""
Args:
im (np.ndarray): image (np.ndarray)
Returns:
im_scale_x: the resize ratio of X
im_scale_y: the resize ratio of Y
"""
origin_shape = im.shape[:2]
im_c = im.shape[2]
if self.keep_ratio:
im_size_min = np.min(origin_shape)
im_size_max = np.max(origin_shape)
target_size_min = np.min(self.target_size)
target_size_max = np.max(self.target_size)
im_scale = float(target_size_min) / float(im_size_min)
if np.round(im_scale * im_size_max) > target_size_max:
im_scale = float(target_size_max) / float(im_size_max)
im_scale_x = im_scale
im_scale_y = im_scale
else:
resize_h, resize_w = self.target_size
im_scale_y = resize_h / float(origin_shape[0])
im_scale_x = resize_w / float(origin_shape[1])
return im_scale_y, im_scale_x
class Resize(object):
def __init__(self, size=(640, 640), **kwargs):
self.size = size
def resize_image(self, img):
resize_h, resize_w = self.size
ori_h, ori_w = img.shape[:2] # (h, w, c)
ratio_h = float(resize_h) / ori_h
ratio_w = float(resize_w) / ori_w
img = cv2.resize(img, (int(resize_w), int(resize_h)))
return img, [ratio_h, ratio_w]
def __call__(self, data):
img = data['image']
if 'polys' in data:
text_polys = data['polys']
img_resize, [ratio_h, ratio_w] = self.resize_image(img)
if 'polys' in data:
new_boxes = []
for box in text_polys:
new_box = []
for cord in box:
new_box.append([cord[0] * ratio_w, cord[1] * ratio_h])
new_boxes.append(new_box)
data['polys'] = np.array(new_boxes, dtype=np.float32)
data['image'] = img_resize
return data
class DetResizeForTest(object):
def __init__(self, **kwargs):
super(DetResizeForTest, self).__init__()
self.resize_type = 0
self.keep_ratio = False
if 'image_shape' in kwargs:
self.image_shape = kwargs['image_shape']
self.resize_type = 1
if 'keep_ratio' in kwargs:
self.keep_ratio = kwargs['keep_ratio']
elif 'limit_side_len' in kwargs:
self.limit_side_len = kwargs['limit_side_len']
self.limit_type = kwargs.get('limit_type', 'min')
elif 'resize_long' in kwargs:
self.resize_type = 2
self.resize_long = kwargs.get('resize_long', 960)
else:
self.limit_side_len = 736
self.limit_type = 'min'
def __call__(self, data):
img = data['image']
src_h, src_w, _ = img.shape
if sum([src_h, src_w]) < 64:
img = self.image_padding(img)
if self.resize_type == 0:
# img, shape = self.resize_image_type0(img)
img, [ratio_h, ratio_w] = self.resize_image_type0(img)
elif self.resize_type == 2:
img, [ratio_h, ratio_w] = self.resize_image_type2(img)
else:
# img, shape = self.resize_image_type1(img)
img, [ratio_h, ratio_w] = self.resize_image_type1(img)
data['image'] = img
data['shape'] = np.array([src_h, src_w, ratio_h, ratio_w])
return data
def image_padding(self, im, value=0):
h, w, c = im.shape
im_pad = np.zeros((max(32, h), max(32, w), c), np.uint8) + value
im_pad[:h, :w, :] = im
return im_pad
def resize_image_type1(self, img):
resize_h, resize_w = self.image_shape
ori_h, ori_w = img.shape[:2] # (h, w, c)
if self.keep_ratio is True:
resize_w = ori_w * resize_h / ori_h
N = math.ceil(resize_w / 32)
resize_w = N * 32
ratio_h = float(resize_h) / ori_h
ratio_w = float(resize_w) / ori_w
img = cv2.resize(img, (int(resize_w), int(resize_h)))
# return img, np.array([ori_h, ori_w])
return img, [ratio_h, ratio_w]
def resize_image_type0(self, img):
"""
resize image to a size multiple of 32 which is required by the network
args:
img(array): array with shape [h, w, c]
return(tuple):
img, (ratio_h, ratio_w)
"""
limit_side_len = self.limit_side_len
h, w, c = img.shape
# limit the max side
if self.limit_type == 'max':
if max(h, w) > limit_side_len:
if h > w:
ratio = float(limit_side_len) / h
else:
ratio = float(limit_side_len) / w
else:
ratio = 1.
elif self.limit_type == 'min':
if min(h, w) < limit_side_len:
if h < w:
ratio = float(limit_side_len) / h
else:
ratio = float(limit_side_len) / w
else:
ratio = 1.
elif self.limit_type == 'resize_long':
ratio = float(limit_side_len) / max(h, w)
else:
raise Exception('not support limit type, image ')
resize_h = int(h * ratio)
resize_w = int(w * ratio)
resize_h = max(int(round(resize_h / 32) * 32), 32)
resize_w = max(int(round(resize_w / 32) * 32), 32)
try:
if int(resize_w) <= 0 or int(resize_h) <= 0:
return None, (None, None)
img = cv2.resize(img, (int(resize_w), int(resize_h)))
except BaseException:
print(img.shape, resize_w, resize_h)
sys.exit(0)
ratio_h = resize_h / float(h)
ratio_w = resize_w / float(w)
return img, [ratio_h, ratio_w]
def resize_image_type2(self, img):
h, w, _ = img.shape
resize_w = w
resize_h = h
if resize_h > resize_w:
ratio = float(self.resize_long) / resize_h
else:
ratio = float(self.resize_long) / resize_w
resize_h = int(resize_h * ratio)
resize_w = int(resize_w * ratio)
max_stride = 128
resize_h = (resize_h + max_stride - 1) // max_stride * max_stride
resize_w = (resize_w + max_stride - 1) // max_stride * max_stride
img = cv2.resize(img, (int(resize_w), int(resize_h)))
ratio_h = resize_h / float(h)
ratio_w = resize_w / float(w)
return img, [ratio_h, ratio_w]
class E2EResizeForTest(object):
def __init__(self, **kwargs):
super(E2EResizeForTest, self).__init__()
self.max_side_len = kwargs['max_side_len']
self.valid_set = kwargs['valid_set']
def __call__(self, data):
img = data['image']
src_h, src_w, _ = img.shape
if self.valid_set == 'totaltext':
im_resized, [ratio_h, ratio_w] = self.resize_image_for_totaltext(
img, max_side_len=self.max_side_len)
else:
im_resized, (ratio_h, ratio_w) = self.resize_image(
img, max_side_len=self.max_side_len)
data['image'] = im_resized
data['shape'] = np.array([src_h, src_w, ratio_h, ratio_w])
return data
def resize_image_for_totaltext(self, im, max_side_len=512):
h, w, _ = im.shape
resize_w = w
resize_h = h
ratio = 1.25
if h * ratio > max_side_len:
ratio = float(max_side_len) / resize_h
resize_h = int(resize_h * ratio)
resize_w = int(resize_w * ratio)
max_stride = 128
resize_h = (resize_h + max_stride - 1) // max_stride * max_stride
resize_w = (resize_w + max_stride - 1) // max_stride * max_stride
im = cv2.resize(im, (int(resize_w), int(resize_h)))
ratio_h = resize_h / float(h)
ratio_w = resize_w / float(w)
return im, (ratio_h, ratio_w)
def resize_image(self, im, max_side_len=512):
"""
resize image to a size multiple of max_stride which is required by the network
:param im: the resized image
:param max_side_len: limit of max image size to avoid out of memory in gpu
:return: the resized image and the resize ratio
"""
h, w, _ = im.shape
resize_w = w
resize_h = h
# Fix the longer side
if resize_h > resize_w:
ratio = float(max_side_len) / resize_h
else:
ratio = float(max_side_len) / resize_w
resize_h = int(resize_h * ratio)
resize_w = int(resize_w * ratio)
max_stride = 128
resize_h = (resize_h + max_stride - 1) // max_stride * max_stride
resize_w = (resize_w + max_stride - 1) // max_stride * max_stride
im = cv2.resize(im, (int(resize_w), int(resize_h)))
ratio_h = resize_h / float(h)
ratio_w = resize_w / float(w)
return im, (ratio_h, ratio_w)
class KieResize(object):
def __init__(self, **kwargs):
super(KieResize, self).__init__()
self.max_side, self.min_side = kwargs['img_scale'][0], kwargs[
'img_scale'][1]
def __call__(self, data):
img = data['image']
points = data['points']
src_h, src_w, _ = img.shape
im_resized, scale_factor, [ratio_h, ratio_w
], [new_h, new_w] = self.resize_image(img)
resize_points = self.resize_boxes(img, points, scale_factor)
data['ori_image'] = img
data['ori_boxes'] = points
data['points'] = resize_points
data['image'] = im_resized
data['shape'] = np.array([new_h, new_w])
return data
def resize_image(self, img):
norm_img = np.zeros([1024, 1024, 3], dtype='float32')
scale = [512, 1024]
h, w = img.shape[:2]
max_long_edge = max(scale)
max_short_edge = min(scale)
scale_factor = min(max_long_edge / max(h, w),
max_short_edge / min(h, w))
resize_w, resize_h = int(w * float(scale_factor) + 0.5), int(h * float(
scale_factor) + 0.5)
max_stride = 32
resize_h = (resize_h + max_stride - 1) // max_stride * max_stride
resize_w = (resize_w + max_stride - 1) // max_stride * max_stride
im = cv2.resize(img, (resize_w, resize_h))
new_h, new_w = im.shape[:2]
w_scale = new_w / w
h_scale = new_h / h
scale_factor = np.array(
[w_scale, h_scale, w_scale, h_scale], dtype=np.float32)
norm_img[:new_h, :new_w, :] = im
return norm_img, scale_factor, [h_scale, w_scale], [new_h, new_w]
def resize_boxes(self, im, points, scale_factor):
points = points * scale_factor
img_shape = im.shape[:2]
points[:, 0::2] = np.clip(points[:, 0::2], 0, img_shape[1])
points[:, 1::2] = np.clip(points[:, 1::2], 0, img_shape[0])
return points
class SRResize(object):
def __init__(self,
imgH=32,
imgW=128,
down_sample_scale=4,
keep_ratio=False,
min_ratio=1,
mask=False,
infer_mode=False,
**kwargs):
self.imgH = imgH
self.imgW = imgW
self.keep_ratio = keep_ratio
self.min_ratio = min_ratio
self.down_sample_scale = down_sample_scale
self.mask = mask
self.infer_mode = infer_mode
def __call__(self, data):
imgH = self.imgH
imgW = self.imgW
images_lr = data["image_lr"]
transform2 = ResizeNormalize(
(imgW // self.down_sample_scale, imgH // self.down_sample_scale))
images_lr = transform2(images_lr)
data["img_lr"] = images_lr
if self.infer_mode:
return data
images_HR = data["image_hr"]
label_strs = data["label"]
transform = ResizeNormalize((imgW, imgH))
images_HR = transform(images_HR)
data["img_hr"] = images_HR
return data
class ResizeNormalize(object):
def __init__(self, size, interpolation=Image.BICUBIC):
self.size = size
self.interpolation = interpolation
def __call__(self, img):
img = img.resize(self.size, self.interpolation)
img_numpy = np.array(img).astype("float32")
img_numpy = img_numpy.transpose((2, 0, 1)) / 255
return img_numpy
class GrayImageChannelFormat(object):
"""
format gray scale image's channel: (3,h,w) -> (1,h,w)
Args:
inverse: inverse gray image
"""
def __init__(self, inverse=False, **kwargs):
self.inverse = inverse
def __call__(self, data):
img = data['image']
img_single_channel = cv2.cvtColor(img, cv2.COLOR_BGR2GRAY)
img_expanded = np.expand_dims(img_single_channel, 0)
if self.inverse:
data['image'] = np.abs(img_expanded - 1)
else:
data['image'] = img_expanded
data['src_image'] = img
return data
class Permute(object):
"""permute image
Args:
to_bgr (bool): whether convert RGB to BGR
channel_first (bool): whether convert HWC to CHW
"""
def __init__(self, ):
super(Permute, self).__init__()
def __call__(self, im, im_info):
"""
Args:
im (np.ndarray): image (np.ndarray)
im_info (dict): info of image
Returns:
im (np.ndarray): processed image (np.ndarray)
im_info (dict): info of processed image
"""
im = im.transpose((2, 0, 1)).copy()
return im, im_info
class PadStride(object):
""" padding image for model with FPN, instead PadBatch(pad_to_stride) in original config
Args:
stride (bool): model with FPN need image shape % stride == 0
"""
def __init__(self, stride=0):
self.coarsest_stride = stride
def __call__(self, im, im_info):
"""
Args:
im (np.ndarray): image (np.ndarray)
im_info (dict): info of image
Returns:
im (np.ndarray): processed image (np.ndarray)
im_info (dict): info of processed image
"""
coarsest_stride = self.coarsest_stride
if coarsest_stride <= 0:
return im, im_info
im_c, im_h, im_w = im.shape
pad_h = int(np.ceil(float(im_h) / coarsest_stride) * coarsest_stride)
pad_w = int(np.ceil(float(im_w) / coarsest_stride) * coarsest_stride)
padding_im = np.zeros((im_c, pad_h, pad_w), dtype=np.float32)
padding_im[:, :im_h, :im_w] = im
return padding_im, im_info
def decode_image(im_file, im_info):
"""read rgb image
Args:
im_file (str|np.ndarray): input can be image path or np.ndarray
im_info (dict): info of image
Returns:
im (np.ndarray): processed image (np.ndarray)
im_info (dict): info of processed image
"""
if isinstance(im_file, str):
with open(im_file, 'rb') as f:
im_read = f.read()
data = np.frombuffer(im_read, dtype='uint8')
im = cv2.imdecode(data, 1) # BGR mode, but need RGB mode
im = cv2.cvtColor(im, cv2.COLOR_BGR2RGB)
else:
im = im_file
im_info['im_shape'] = np.array(im.shape[:2], dtype=np.float32)
im_info['scale_factor'] = np.array([1., 1.], dtype=np.float32)
return im, im_info
def preprocess(im, preprocess_ops):
# process image by preprocess_ops
im_info = {
'scale_factor': np.array(
[1., 1.], dtype=np.float32),
'im_shape': None,
}
im, im_info = decode_image(im, im_info)
for operator in preprocess_ops:
im, im_info = operator(im, im_info)
return im, im_info