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operators.py
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operators.py
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# Copyright (c) 2020 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.
# function:
# operators to process sample,
# eg: decode/resize/crop image
from __future__ import absolute_import
from __future__ import print_function
from __future__ import division
try:
from collections.abc import Sequence
except Exception:
from collections import Sequence
from numbers import Number, Integral
import uuid
import random
import math
import numpy as np
import os
import copy
import logging
import cv2
from PIL import Image, ImageDraw
import pickle
import threading
MUTEX = threading.Lock()
from ppdet.core.workspace import serializable
from ..reader import Compose
from .op_helper import (satisfy_sample_constraint, filter_and_process,
generate_sample_bbox, clip_bbox, data_anchor_sampling,
satisfy_sample_constraint_coverage, crop_image_sampling,
generate_sample_bbox_square, bbox_area_sampling,
is_poly, get_border)
from ppdet.utils.logger import setup_logger
from ppdet.modeling.keypoint_utils import get_affine_transform, affine_transform
logger = setup_logger(__name__)
registered_ops = []
def register_op(cls):
registered_ops.append(cls.__name__)
if not hasattr(BaseOperator, cls.__name__):
setattr(BaseOperator, cls.__name__, cls)
else:
raise KeyError("The {} class has been registered.".format(cls.__name__))
return serializable(cls)
class BboxError(ValueError):
pass
class ImageError(ValueError):
pass
class BaseOperator(object):
def __init__(self, name=None):
if name is None:
name = self.__class__.__name__
self._id = name + '_' + str(uuid.uuid4())[-6:]
def apply(self, sample, context=None):
""" Process a sample.
Args:
sample (dict): a dict of sample, eg: {'image':xx, 'label': xxx}
context (dict): info about this sample processing
Returns:
result (dict): a processed sample
"""
return sample
def __call__(self, sample, context=None):
""" Process a sample.
Args:
sample (dict): a dict of sample, eg: {'image':xx, 'label': xxx}
context (dict): info about this sample processing
Returns:
result (dict): a processed sample
"""
if isinstance(sample, Sequence):
for i in range(len(sample)):
sample[i] = self.apply(sample[i], context)
else:
sample = self.apply(sample, context)
return sample
def __str__(self):
return str(self._id)
@register_op
class Decode(BaseOperator):
def __init__(self):
""" Transform the image data to numpy format following the rgb format
"""
super(Decode, self).__init__()
def apply(self, sample, context=None):
""" load image if 'im_file' field is not empty but 'image' is"""
if 'image' not in sample:
with open(sample['im_file'], 'rb') as f:
sample['image'] = f.read()
sample.pop('im_file')
try:
im = sample['image']
data = np.frombuffer(im, dtype='uint8')
im = cv2.imdecode(data, 1) # BGR mode, but need RGB mode
if 'keep_ori_im' in sample and sample['keep_ori_im']:
sample['ori_image'] = im
im = cv2.cvtColor(im, cv2.COLOR_BGR2RGB)
except:
im = sample['image']
sample['image'] = im
if 'h' not in sample:
sample['h'] = im.shape[0]
elif sample['h'] != im.shape[0]:
logger.warning(
"The actual image height: {} is not equal to the "
"height: {} in annotation, and update sample['h'] by actual "
"image height.".format(im.shape[0], sample['h']))
sample['h'] = im.shape[0]
if 'w' not in sample:
sample['w'] = im.shape[1]
elif sample['w'] != im.shape[1]:
logger.warning(
"The actual image width: {} is not equal to the "
"width: {} in annotation, and update sample['w'] by actual "
"image width.".format(im.shape[1], sample['w']))
sample['w'] = im.shape[1]
sample['im_shape'] = np.array(im.shape[:2], dtype=np.float32)
sample['scale_factor'] = np.array([1., 1.], dtype=np.float32)
return sample
def _make_dirs(dirname):
try:
from pathlib import Path
except ImportError:
from pathlib2 import Path
Path(dirname).mkdir(exist_ok=True)
@register_op
class DecodeCache(BaseOperator):
def __init__(self, cache_root=None):
'''decode image and caching
'''
super(DecodeCache, self).__init__()
self.use_cache = False if cache_root is None else True
self.cache_root = cache_root
if cache_root is not None:
_make_dirs(cache_root)
def apply(self, sample, context=None):
if self.use_cache and os.path.exists(
self.cache_path(self.cache_root, sample['im_file'])):
path = self.cache_path(self.cache_root, sample['im_file'])
im = self.load(path)
else:
if 'image' not in sample:
with open(sample['im_file'], 'rb') as f:
sample['image'] = f.read()
im = sample['image']
data = np.frombuffer(im, dtype='uint8')
im = cv2.imdecode(data, 1) # BGR mode, but need RGB mode
if 'keep_ori_im' in sample and sample['keep_ori_im']:
sample['ori_image'] = im
im = cv2.cvtColor(im, cv2.COLOR_BGR2RGB)
if self.use_cache and not os.path.exists(
self.cache_path(self.cache_root, sample['im_file'])):
path = self.cache_path(self.cache_root, sample['im_file'])
self.dump(im, path)
sample['image'] = im
sample['h'] = im.shape[0]
sample['w'] = im.shape[1]
sample['im_shape'] = np.array(im.shape[:2], dtype=np.float32)
sample['scale_factor'] = np.array([1., 1.], dtype=np.float32)
sample.pop('im_file')
return sample
@staticmethod
def cache_path(dir_oot, im_file):
return os.path.join(dir_oot, os.path.basename(im_file) + '.pkl')
@staticmethod
def load(path):
with open(path, 'rb') as f:
im = pickle.load(f)
return im
@staticmethod
def dump(obj, path):
MUTEX.acquire()
try:
with open(path, 'wb') as f:
pickle.dump(obj, f)
except Exception as e:
logger.warning('dump {} occurs exception {}'.format(path, str(e)))
finally:
MUTEX.release()
@register_op
class SniperDecodeCrop(BaseOperator):
def __init__(self):
super(SniperDecodeCrop, self).__init__()
def __call__(self, sample, context=None):
if 'image' not in sample:
with open(sample['im_file'], 'rb') as f:
sample['image'] = f.read()
sample.pop('im_file')
im = sample['image']
data = np.frombuffer(im, dtype='uint8')
im = cv2.imdecode(data, cv2.IMREAD_COLOR) # BGR mode, but need RGB mode
if 'keep_ori_im' in sample and sample['keep_ori_im']:
sample['ori_image'] = im
im = cv2.cvtColor(im, cv2.COLOR_BGR2RGB)
chip = sample['chip']
x1, y1, x2, y2 = [int(xi) for xi in chip]
im = im[max(y1, 0):min(y2, im.shape[0]), max(x1, 0):min(x2, im.shape[
1]), :]
sample['image'] = im
h = im.shape[0]
w = im.shape[1]
# sample['im_info'] = [h, w, 1.0]
sample['h'] = h
sample['w'] = w
sample['im_shape'] = np.array(im.shape[:2], dtype=np.float32)
sample['scale_factor'] = np.array([1., 1.], dtype=np.float32)
return sample
@register_op
class Permute(BaseOperator):
def __init__(self):
"""
Change the channel to be (C, H, W)
"""
super(Permute, self).__init__()
def apply(self, sample, context=None):
im = sample['image']
im = im.transpose((2, 0, 1))
sample['image'] = im
return sample
@register_op
class Lighting(BaseOperator):
"""
Lighting the image by eigenvalues and eigenvectors
Args:
eigval (list): eigenvalues
eigvec (list): eigenvectors
alphastd (float): random weight of lighting, 0.1 by default
"""
def __init__(self, eigval, eigvec, alphastd=0.1):
super(Lighting, self).__init__()
self.alphastd = alphastd
self.eigval = np.array(eigval).astype('float32')
self.eigvec = np.array(eigvec).astype('float32')
def apply(self, sample, context=None):
alpha = np.random.normal(scale=self.alphastd, size=(3, ))
sample['image'] += np.dot(self.eigvec, self.eigval * alpha)
return sample
@register_op
class RandomErasingImage(BaseOperator):
def __init__(self, prob=0.5, lower=0.02, higher=0.4, aspect_ratio=0.3):
"""
Random Erasing Data Augmentation, see https://arxiv.org/abs/1708.04896
Args:
prob (float): probability to carry out random erasing
lower (float): lower limit of the erasing area ratio
higher (float): upper limit of the erasing area ratio
aspect_ratio (float): aspect ratio of the erasing region
"""
super(RandomErasingImage, self).__init__()
self.prob = prob
self.lower = lower
self.higher = higher
self.aspect_ratio = aspect_ratio
def apply(self, sample):
gt_bbox = sample['gt_bbox']
im = sample['image']
if not isinstance(im, np.ndarray):
raise TypeError("{}: image is not a numpy array.".format(self))
if len(im.shape) != 3:
raise ImageError("{}: image is not 3-dimensional.".format(self))
for idx in range(gt_bbox.shape[0]):
if self.prob <= np.random.rand():
continue
x1, y1, x2, y2 = gt_bbox[idx, :]
w_bbox = x2 - x1
h_bbox = y2 - y1
area = w_bbox * h_bbox
target_area = random.uniform(self.lower, self.higher) * area
aspect_ratio = random.uniform(self.aspect_ratio,
1 / self.aspect_ratio)
h = int(round(math.sqrt(target_area * aspect_ratio)))
w = int(round(math.sqrt(target_area / aspect_ratio)))
if w < w_bbox and h < h_bbox:
off_y1 = random.randint(0, int(h_bbox - h))
off_x1 = random.randint(0, int(w_bbox - w))
im[int(y1 + off_y1):int(y1 + off_y1 + h), int(x1 + off_x1):int(
x1 + off_x1 + w), :] = 0
sample['image'] = im
return sample
@register_op
class NormalizeImage(BaseOperator):
def __init__(self,
mean=[0.485, 0.456, 0.406],
std=[0.229, 0.224, 0.225],
is_scale=True,
norm_type='mean_std'):
"""
Args:
mean (list): the pixel mean
std (list): the pixel variance
is_scale (bool): scale the pixel to [0,1]
norm_type (str): type in ['mean_std', 'none']
"""
super(NormalizeImage, self).__init__()
self.mean = mean
self.std = std
self.is_scale = is_scale
self.norm_type = norm_type
if not (isinstance(self.mean, list) and isinstance(self.std, list) and
isinstance(self.is_scale, bool) and
self.norm_type in ['mean_std', 'none']):
raise TypeError("{}: input type is invalid.".format(self))
from functools import reduce
if reduce(lambda x, y: x * y, self.std) == 0:
raise ValueError('{}: std is invalid!'.format(self))
def apply(self, sample, context=None):
"""Normalize the image.
Operators:
1.(optional) Scale the pixel to [0,1]
2.(optional) Each pixel minus mean and is divided by std
"""
im = sample['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
sample['image'] = im
return sample
@register_op
class GridMask(BaseOperator):
def __init__(self,
use_h=True,
use_w=True,
rotate=1,
offset=False,
ratio=0.5,
mode=1,
prob=0.7,
upper_iter=360000):
"""
GridMask Data Augmentation, see https://arxiv.org/abs/2001.04086
Args:
use_h (bool): whether to mask vertically
use_w (boo;): whether to mask horizontally
rotate (float): angle for the mask to rotate
offset (float): mask offset
ratio (float): mask ratio
mode (int): gridmask mode
prob (float): max probability to carry out gridmask
upper_iter (int): suggested to be equal to global max_iter
"""
super(GridMask, self).__init__()
self.use_h = use_h
self.use_w = use_w
self.rotate = rotate
self.offset = offset
self.ratio = ratio
self.mode = mode
self.prob = prob
self.upper_iter = upper_iter
from .gridmask_utils import Gridmask
self.gridmask_op = Gridmask(
use_h,
use_w,
rotate=rotate,
offset=offset,
ratio=ratio,
mode=mode,
prob=prob,
upper_iter=upper_iter)
def apply(self, sample, context=None):
sample['image'] = self.gridmask_op(sample['image'], sample['curr_iter'])
return sample
@register_op
class RandomDistort(BaseOperator):
"""Random color distortion.
Note:
The 'probability' in [lower, upper, probability] is the probability of not using this transformation,
not the probability of using this transformation. And this only applies in this operator(RandomDistort),
'probability' in other BaseOperator means the probability of using that transformation.
Args:
hue (list): hue settings. in [lower, upper, probability] format.
saturation (list): saturation settings. in [lower, upper, probability] format.
contrast (list): contrast settings. in [lower, upper, probability] format.
brightness (list): brightness settings. in [lower, upper, probability] format.
random_apply (bool): whether to apply in random (yolo) or fixed (SSD)
order.
count (int): the number of doing distrot
random_channel (bool): whether to swap channels randomly
"""
def __init__(self,
hue=[-18, 18, 0.5],
saturation=[0.5, 1.5, 0.5],
contrast=[0.5, 1.5, 0.5],
brightness=[0.5, 1.5, 0.5],
random_apply=True,
count=4,
random_channel=False):
super(RandomDistort, self).__init__()
self.hue = hue
self.saturation = saturation
self.contrast = contrast
self.brightness = brightness
self.random_apply = random_apply
self.count = count
self.random_channel = random_channel
def apply_hue(self, img):
low, high, prob = self.hue
if np.random.uniform(0., 1.) < prob:
return img
img = img.astype(np.float32)
# it works, but result differ from HSV version
delta = np.random.uniform(low, high)
u = np.cos(delta * np.pi)
w = np.sin(delta * np.pi)
bt = np.array([[1.0, 0.0, 0.0], [0.0, u, -w], [0.0, w, u]])
tyiq = np.array([[0.299, 0.587, 0.114], [0.596, -0.274, -0.321],
[0.211, -0.523, 0.311]])
ityiq = np.array([[1.0, 0.956, 0.621], [1.0, -0.272, -0.647],
[1.0, -1.107, 1.705]])
t = np.dot(np.dot(ityiq, bt), tyiq).T
img = np.dot(img, t)
return img
def apply_saturation(self, img):
low, high, prob = self.saturation
if np.random.uniform(0., 1.) < prob:
return img
delta = np.random.uniform(low, high)
img = img.astype(np.float32)
# it works, but result differ from HSV version
gray = img * np.array([[[0.299, 0.587, 0.114]]], dtype=np.float32)
gray = gray.sum(axis=2, keepdims=True)
gray *= (1.0 - delta)
img *= delta
img += gray
return img
def apply_contrast(self, img):
low, high, prob = self.contrast
if np.random.uniform(0., 1.) < prob:
return img
delta = np.random.uniform(low, high)
img = img.astype(np.float32)
img *= delta
return img
def apply_brightness(self, img):
low, high, prob = self.brightness
if np.random.uniform(0., 1.) < prob:
return img
delta = np.random.uniform(low, high)
img = img.astype(np.float32)
img += delta
return img
def apply(self, sample, context=None):
img = sample['image']
if self.random_apply:
functions = [
self.apply_brightness, self.apply_contrast,
self.apply_saturation, self.apply_hue
]
distortions = np.random.permutation(functions)[:self.count]
for func in distortions:
img = func(img)
sample['image'] = img
return sample
img = self.apply_brightness(img)
mode = np.random.randint(0, 2)
if mode:
img = self.apply_contrast(img)
img = self.apply_saturation(img)
img = self.apply_hue(img)
if not mode:
img = self.apply_contrast(img)
if self.random_channel:
if np.random.randint(0, 2):
img = img[..., np.random.permutation(3)]
sample['image'] = img
return sample
@register_op
class AutoAugment(BaseOperator):
def __init__(self, autoaug_type="v1"):
"""
Args:
autoaug_type (str): autoaug type, support v0, v1, v2, v3, test
"""
super(AutoAugment, self).__init__()
self.autoaug_type = autoaug_type
def apply(self, sample, context=None):
"""
Learning Data Augmentation Strategies for Object Detection, see https://arxiv.org/abs/1906.11172
"""
im = sample['image']
gt_bbox = sample['gt_bbox']
if not isinstance(im, np.ndarray):
raise TypeError("{}: image is not a numpy array.".format(self))
if len(im.shape) != 3:
raise ImageError("{}: image is not 3-dimensional.".format(self))
if len(gt_bbox) == 0:
return sample
height, width, _ = im.shape
norm_gt_bbox = np.ones_like(gt_bbox, dtype=np.float32)
norm_gt_bbox[:, 0] = gt_bbox[:, 1] / float(height)
norm_gt_bbox[:, 1] = gt_bbox[:, 0] / float(width)
norm_gt_bbox[:, 2] = gt_bbox[:, 3] / float(height)
norm_gt_bbox[:, 3] = gt_bbox[:, 2] / float(width)
from .autoaugment_utils import distort_image_with_autoaugment
im, norm_gt_bbox = distort_image_with_autoaugment(im, norm_gt_bbox,
self.autoaug_type)
gt_bbox[:, 0] = norm_gt_bbox[:, 1] * float(width)
gt_bbox[:, 1] = norm_gt_bbox[:, 0] * float(height)
gt_bbox[:, 2] = norm_gt_bbox[:, 3] * float(width)
gt_bbox[:, 3] = norm_gt_bbox[:, 2] * float(height)
sample['image'] = im
sample['gt_bbox'] = gt_bbox
return sample
@register_op
class RandomFlip(BaseOperator):
def __init__(self, prob=0.5):
"""
Args:
prob (float): the probability of flipping image
"""
super(RandomFlip, self).__init__()
self.prob = prob
if not (isinstance(self.prob, float)):
raise TypeError("{}: input type is invalid.".format(self))
def apply_segm(self, segms, height, width):
def _flip_poly(poly, width):
flipped_poly = np.array(poly)
flipped_poly[0::2] = width - np.array(poly[0::2])
return flipped_poly.tolist()
def _flip_rle(rle, height, width):
if 'counts' in rle and type(rle['counts']) == list:
rle = mask_util.frPyObjects(rle, height, width)
mask = mask_util.decode(rle)
mask = mask[:, ::-1]
rle = mask_util.encode(np.array(mask, order='F', dtype=np.uint8))
return rle
flipped_segms = []
for segm in segms:
if is_poly(segm):
# Polygon format
flipped_segms.append([_flip_poly(poly, width) for poly in segm])
else:
# RLE format
import pycocotools.mask as mask_util
flipped_segms.append(_flip_rle(segm, height, width))
return flipped_segms
def apply_keypoint(self, gt_keypoint, width):
for i in range(gt_keypoint.shape[1]):
if i % 2 == 0:
old_x = gt_keypoint[:, i].copy()
gt_keypoint[:, i] = width - old_x
return gt_keypoint
def apply_image(self, image):
return image[:, ::-1, :]
def apply_bbox(self, bbox, width):
oldx1 = bbox[:, 0].copy()
oldx2 = bbox[:, 2].copy()
bbox[:, 0] = width - oldx2
bbox[:, 2] = width - oldx1
return bbox
def apply(self, sample, context=None):
"""Filp the image and bounding box.
Operators:
1. Flip the image numpy.
2. Transform the bboxes' x coordinates.
(Must judge whether the coordinates are normalized!)
3. Transform the segmentations' x coordinates.
(Must judge whether the coordinates are normalized!)
Output:
sample: the image, bounding box and segmentation part
in sample are flipped.
"""
if np.random.uniform(0, 1) < self.prob:
im = sample['image']
height, width = im.shape[:2]
im = self.apply_image(im)
if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
sample['gt_bbox'] = self.apply_bbox(sample['gt_bbox'], width)
if 'gt_poly' in sample and len(sample['gt_poly']) > 0:
sample['gt_poly'] = self.apply_segm(sample['gt_poly'], height,
width)
if 'gt_keypoint' in sample and len(sample['gt_keypoint']) > 0:
sample['gt_keypoint'] = self.apply_keypoint(
sample['gt_keypoint'], width)
if 'semantic' in sample and sample['semantic']:
sample['semantic'] = sample['semantic'][:, ::-1]
if 'gt_segm' in sample and sample['gt_segm'].any():
sample['gt_segm'] = sample['gt_segm'][:, :, ::-1]
sample['flipped'] = True
sample['image'] = im
return sample
@register_op
class Resize(BaseOperator):
def __init__(self, target_size, keep_ratio, interp=cv2.INTER_LINEAR):
"""
Resize image to target size. if keep_ratio is True,
resize the image's long side to the maximum of target_size
if keep_ratio is False, resize the image to target size(h, w)
Args:
target_size (int|list): image target size
keep_ratio (bool): whether keep_ratio or not, default true
interp (int): the interpolation method
"""
super(Resize, self).__init__()
self.keep_ratio = keep_ratio
self.interp = interp
if not isinstance(target_size, (Integral, Sequence)):
raise TypeError(
"Type of target_size is invalid. Must be Integer or List or Tuple, now is {}".
format(type(target_size)))
if isinstance(target_size, Integral):
target_size = [target_size, target_size]
self.target_size = target_size
def apply_image(self, image, scale):
im_scale_x, im_scale_y = scale
return cv2.resize(
image,
None,
None,
fx=im_scale_x,
fy=im_scale_y,
interpolation=self.interp)
def apply_bbox(self, bbox, scale, size):
im_scale_x, im_scale_y = scale
resize_w, resize_h = size
bbox[:, 0::2] *= im_scale_x
bbox[:, 1::2] *= im_scale_y
bbox[:, 0::2] = np.clip(bbox[:, 0::2], 0, resize_w)
bbox[:, 1::2] = np.clip(bbox[:, 1::2], 0, resize_h)
return bbox
def apply_segm(self, segms, im_size, scale):
def _resize_poly(poly, im_scale_x, im_scale_y):
resized_poly = np.array(poly).astype('float32')
resized_poly[0::2] *= im_scale_x
resized_poly[1::2] *= im_scale_y
return resized_poly.tolist()
def _resize_rle(rle, im_h, im_w, im_scale_x, im_scale_y):
if 'counts' in rle and type(rle['counts']) == list:
rle = mask_util.frPyObjects(rle, im_h, im_w)
mask = mask_util.decode(rle)
mask = cv2.resize(
mask,
None,
None,
fx=im_scale_x,
fy=im_scale_y,
interpolation=self.interp)
rle = mask_util.encode(np.array(mask, order='F', dtype=np.uint8))
return rle
im_h, im_w = im_size
im_scale_x, im_scale_y = scale
resized_segms = []
for segm in segms:
if is_poly(segm):
# Polygon format
resized_segms.append([
_resize_poly(poly, im_scale_x, im_scale_y) for poly in segm
])
else:
# RLE format
import pycocotools.mask as mask_util
resized_segms.append(
_resize_rle(segm, im_h, im_w, im_scale_x, im_scale_y))
return resized_segms
def apply(self, sample, context=None):
""" Resize the image numpy.
"""
im = sample['image']
if not isinstance(im, np.ndarray):
raise TypeError("{}: image type is not numpy.".format(self))
if len(im.shape) != 3:
raise ImageError('{}: image is not 3-dimensional.'.format(self))
# apply image
im_shape = im.shape
if self.keep_ratio:
im_size_min = np.min(im_shape[0:2])
im_size_max = np.max(im_shape[0:2])
target_size_min = np.min(self.target_size)
target_size_max = np.max(self.target_size)
im_scale = min(target_size_min / im_size_min,
target_size_max / im_size_max)
resize_h = im_scale * float(im_shape[0])
resize_w = im_scale * float(im_shape[1])
im_scale_x = im_scale
im_scale_y = im_scale
else:
resize_h, resize_w = self.target_size
im_scale_y = resize_h / im_shape[0]
im_scale_x = resize_w / im_shape[1]
im = self.apply_image(sample['image'], [im_scale_x, im_scale_y])
sample['image'] = im.astype(np.float32)
sample['im_shape'] = np.asarray([resize_h, resize_w], dtype=np.float32)
if 'scale_factor' in sample:
scale_factor = sample['scale_factor']
sample['scale_factor'] = np.asarray(
[scale_factor[0] * im_scale_y, scale_factor[1] * im_scale_x],
dtype=np.float32)
else:
sample['scale_factor'] = np.asarray(
[im_scale_y, im_scale_x], dtype=np.float32)
# apply bbox
if 'gt_bbox' in sample and len(sample['gt_bbox']) > 0:
sample['gt_bbox'] = self.apply_bbox(sample['gt_bbox'],
[im_scale_x, im_scale_y],
[resize_w, resize_h])
# apply polygon
if 'gt_poly' in sample and len(sample['gt_poly']) > 0:
sample['gt_poly'] = self.apply_segm(sample['gt_poly'], im_shape[:2],
[im_scale_x, im_scale_y])
# apply semantic
if 'semantic' in sample and sample['semantic']:
semantic = sample['semantic']
semantic = cv2.resize(
semantic.astype('float32'),
None,
None,
fx=im_scale_x,
fy=im_scale_y,
interpolation=self.interp)
semantic = np.asarray(semantic).astype('int32')
semantic = np.expand_dims(semantic, 0)
sample['semantic'] = semantic
# apply gt_segm
if 'gt_segm' in sample and len(sample['gt_segm']) > 0:
masks = [
cv2.resize(
gt_segm,
None,
None,
fx=im_scale_x,
fy=im_scale_y,
interpolation=cv2.INTER_NEAREST)
for gt_segm in sample['gt_segm']
]
sample['gt_segm'] = np.asarray(masks).astype(np.uint8)
return sample
@register_op
class MultiscaleTestResize(BaseOperator):
def __init__(self,
origin_target_size=[800, 1333],
target_size=[],
interp=cv2.INTER_LINEAR,
use_flip=True):
"""
Rescale image to the each size in target size, and capped at max_size.
Args:
origin_target_size (list): origin target size of image
target_size (list): A list of target sizes of image.
interp (int): the interpolation method.
use_flip (bool): whether use flip augmentation.
"""
super(MultiscaleTestResize, self).__init__()
self.interp = interp
self.use_flip = use_flip
if not isinstance(target_size, Sequence):
raise TypeError(
"Type of target_size is invalid. Must be List or Tuple, now is {}".
format(type(target_size)))
self.target_size = target_size
if not isinstance(origin_target_size, Sequence):
raise TypeError(
"Type of origin_target_size is invalid. Must be List or Tuple, now is {}".
format(type(origin_target_size)))
self.origin_target_size = origin_target_size
def apply(self, sample, context=None):
""" Resize the image numpy for multi-scale test.
"""
samples = []
resizer = Resize(
self.origin_target_size, keep_ratio=True, interp=self.interp)
samples.append(resizer(sample.copy(), context))
if self.use_flip:
flipper = RandomFlip(1.1)
samples.append(flipper(sample.copy(), context=context))
for size in self.target_size:
resizer = Resize(size, keep_ratio=True, interp=self.interp)
samples.append(resizer(sample.copy(), context))
return samples
@register_op
class RandomResize(BaseOperator):
def __init__(self,
target_size,
keep_ratio=True,
interp=cv2.INTER_LINEAR,
random_size=True,
random_interp=False):
"""
Resize image to target size randomly. random target_size and interpolation method
Args:
target_size (int, list, tuple): image target size, if random size is True, must be list or tuple
keep_ratio (bool): whether keep_raio or not, default true
interp (int): the interpolation method
random_size (bool): whether random select target size of image
random_interp (bool): whether random select interpolation method
"""
super(RandomResize, self).__init__()
self.keep_ratio = keep_ratio
self.interp = interp
self.interps = [
cv2.INTER_NEAREST,
cv2.INTER_LINEAR,
cv2.INTER_AREA,
cv2.INTER_CUBIC,
cv2.INTER_LANCZOS4,
]
assert isinstance(target_size, (
Integral, Sequence)), "target_size must be Integer, List or Tuple"
if random_size and not isinstance(target_size, Sequence):
raise TypeError(
"Type of target_size is invalid when random_size is True. Must be List or Tuple, now is {}".
format(type(target_size)))
self.target_size = target_size
self.random_size = random_size
self.random_interp = random_interp
def apply(self, sample, context=None):
""" Resize the image numpy.
"""
if self.random_size:
target_size = random.choice(self.target_size)
else:
target_size = self.target_size
if self.random_interp:
interp = random.choice(self.interps)
else:
interp = self.interp
resizer = Resize(target_size, self.keep_ratio, interp)
return resizer(sample, context=context)
@register_op
class RandomExpand(BaseOperator):
"""Random expand the canvas.
Args:
ratio (float): maximum expansion ratio.
prob (float): probability to expand.
fill_value (list): color value used to fill the canvas. in RGB order.
"""
def __init__(self, ratio=4., prob=0.5, fill_value=(127.5, 127.5, 127.5)):
super(RandomExpand, self).__init__()
assert ratio > 1.01, "expand ratio must be larger than 1.01"
self.ratio = ratio
self.prob = prob
assert isinstance(fill_value, (Number, Sequence)), \
"fill value must be either float or sequence"
if isinstance(fill_value, Number):
fill_value = (fill_value, ) * 3
if not isinstance(fill_value, tuple):
fill_value = tuple(fill_value)