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# Copyright (c) Facebook, Inc. and its affiliates. All Rights Reserved.
import random
import torch
import torchvision
from torchvision.transforms import functional as F
from maskrcnn_benchmark.structures.bounding_box import BoxList
from maskrcnn_benchmark.structures.segmentation_mask import SegmentationMask
from maskrcnn_benchmark.structures.ke import textKES
from maskrcnn_benchmark.structures.mty import MTY
import numpy as np
from PIL import Image
from shapely.geometry import *
import cv2
from maskrcnn_benchmark.config import cfg
class Compose(object):
def __init__(self, transforms):
self.transforms = transforms
def __call__(self, image, target):
for t in self.transforms:
image, target = t(image, target)
return image, target
def __repr__(self):
format_string = self.__class__.__name__ + "("
for t in self.transforms:
format_string += "\n"
format_string += " {0}".format(t)
format_string += "\n)"
return format_string
class Resize(object):
def __init__(self, min_size, max_size):
if not isinstance(min_size, (list, tuple)):
min_size = (min_size,)
self.min_size = min_size
self.max_size = max_size
# modified from torchvision to add support for max size
def get_size(self, image_size):
# if test ic15
#oh = 1200
#ow = 2000
#return (oh, ow)
w, h = image_size
size = random.choice(self.min_size)
max_size = self.max_size
if max_size is not None:
min_original_size = float(min((w, h)))
max_original_size = float(max((w, h)))
if max_original_size / min_original_size * size > max_size:
size = int(round(max_size * min_original_size / max_original_size))
if (w <= h and w == size) or (h <= w and h == size):
return (h, w)
if w < h:
ow = size
oh = int(size * h / w)
else:
oh = size
ow = int(size * w / h)
return (oh, ow)
def __call__(self, image, target):
size = self.get_size(image.size)
image = F.resize(image, size)
if isinstance(target, list):
target = [t.resize(image.size) for t in target]
else:
target = target.resize(image.size)
return image, target
class RandomHorizontalFlip(object):
def __init__(self, prob=0.5):
self.prob = prob
def __call__(self, image, target):
if random.random() < self.prob:
image = F.hflip(image)
if isinstance(target, list):
target = [t.transpose(0) for t in target]
else:
target = target.transpose(0)
return image, target
class ToTensor(object):
def __call__(self, image, target):
return F.to_tensor(image), target
class Normalize(object):
def __init__(self, mean, std, to_bgr255=True):
self.mean = mean
self.std = std
self.to_bgr255 = to_bgr255
def __call__(self, image, target):
if self.to_bgr255:
image = image[[2, 1, 0]] * 255
image = F.normalize(image, mean=self.mean, std=self.std)
return image, target
class RandomCrop(object):
"""Random crop with repeatedly expanding the range to included box borders."""
def __init__(self, prob, init_crop_size=(0.5, 1.0)):
if (not isinstance(init_crop_size, list)) and (not isinstance(init_crop_size, tuple)):
raise ValueError('Paremeter init_crop_size should be a list or tuple!')
elif len(init_crop_size) != 2:
raise ValueError('Length of init_crop_size should be 2!')
elif not (init_crop_size[0] <= 1 and init_crop_size[0] >= 0 and init_crop_size[1] <= 1 and init_crop_size[1] >= 0):
raise ValueError('Elements of init_crop_size should be within [0, 1]!')
self.prob = prob
self.init_crop_size = init_crop_size
def __call__(self, image, target):
if random.random() >= self.prob:
return image, target
if isinstance(target, list):
target0 = target[0]
else:
target0 = target
while True:
# Initial Crop Region
crop_region = self.initial_crop_region(image)
# Adjust Crop Region
crop_region, keep_target = self.adjust_crop_region(crop_region, target0)
if crop_region is None and keep_target is None:
continue
if isinstance(target, list):
# check empty char
new_t1 = target[1].crop(crop_region)
if len(new_t1) < 1: return image, target
image = image.crop(crop_region.numpy())
if isinstance(target, list):
target0 = keep_target.crop(crop_region)
others = [t.crop(crop_region, remove_empty=True) for t in target[1:]]
target = [target0] + others
else:
target = keep_target.crop(crop_region)
return image, target
def initial_crop_region(self, image):
width, height = image.size
ratio_w, ratio_h = torch.empty(2).uniform_(self.init_crop_size[0], self.init_crop_size[1])
crop_width, crop_height = int(width*ratio_w), int(height*ratio_h)
crop_xmin = torch.randint(width-crop_width, (1,))
crop_ymin = torch.randint(height-crop_height, (1,))
crop_xmax = crop_xmin + crop_width
crop_ymax = crop_ymin + crop_height
crop_region = torch.Tensor([crop_xmin, crop_ymin, crop_xmax, crop_ymax])
return crop_region
def intersect_area(self, bbox, bboxes):
inter_xmin = torch.max(bbox[0], bboxes[:, 0])
inter_ymin = torch.max(bbox[1], bboxes[:, 1])
inter_xmax = torch.min(bbox[2], bboxes[:, 2])
inter_ymax = torch.min(bbox[3], bboxes[:, 3])
inter_width = torch.max(torch.Tensor([0]), inter_xmax-inter_xmin)
inter_height = torch.max(torch.Tensor([0]), inter_ymax-inter_ymin)
return inter_width*inter_height
def adjust_crop_region(self, crop_region, target):
keep_indies_ = torch.zeros((len(target)), dtype=torch.uint8)
while True:
inter_area = self.intersect_area(crop_region, target.bbox)
keep_indies = (inter_area > 0)
if torch.sum(keep_indies) == 0:
return None, None
keep_target = target[keep_indies]
if keep_indies.equal(keep_indies_):
return crop_region, keep_target
keep_bbox = keep_target.bbox
crop_xmin = torch.min(crop_region[0], torch.min(keep_bbox[:, 0]))
crop_ymin = torch.min(crop_region[1], torch.min(keep_bbox[:, 1]))
crop_xmax = torch.max(crop_region[2], torch.max(keep_bbox[:, 2]))
crop_ymax = torch.max(crop_region[3], torch.max(keep_bbox[:, 3]))
crop_region = torch.Tensor([crop_xmin, crop_ymin, crop_xmax, crop_ymax])
keep_indies_ = keep_indies
class RandomBrightness(object):
def __init__(self, prob=0.5):
self.prob = prob
def __call__(self, image, target):
if random.random() < self.prob:
brightness_factor = random.uniform(0.5, 2)
image = F.adjust_brightness(image, brightness_factor)
return image, target
class RandomContrast(object):
def __init__(self, prob=0.5):
self.prob = prob
def __call__(self, image, target):
if random.random() < self.prob:
contrast_factor = random.uniform(0.5, 2)
image = F.adjust_contrast(image, contrast_factor)
return image, target
class RandomHue(object):
def __init__(self, prob=0.5):
self.prob = prob
def __call__(self, image, target):
if random.random() < self.prob:
hue_factor = random.uniform(-0.25, 0.25)
image = F.adjust_hue(image, hue_factor)
return image, target
class RandomSaturation(object):
def __init__(self, prob=0.5):
self.prob = prob
def __call__(self, image, target):
if random.random() < self.prob:
saturation_factor = random.uniform(0.5, 2)
image = F.adjust_saturation(image, saturation_factor)
return image, target
class RandomGamma(object):
def __init__(self, prob=0.5):
self.prob = prob
def __call__(self, image, target):
if random.random() < self.prob:
gamma_factor = random.uniform(0.5, 2)
image = F.adjust_gamma(image, gamma_factor)
return image, target
class RandomRotation(object):
def __init__(self, prob = 0.3, degree = 5):
self.prob = prob
self.degree = degree
def kes_encode(self, kes):
kes_encode = []
for i in kes:
mnx = i[0]
mny = i[1]
assert(len(i)%3 == 0)
npts = int(len(i)/3-2)
for index in range(npts):
i[3+index*3] = (i[3+index*3]+mnx)/2
i[4+index*3] = (i[4+index*3]+mny)/2
kes_encode.append(i)
return kes_encode
def kes_gen(self, kes):
kes_gen_out = []
for i in kes:
mnx = i[0]
mny = i[1]
cx= i[27]
cy= i[28]
assert(len(i)%3 == 0)
ot = [mnx, i[3],i[6],i[9],i[12], cx,\
mny, i[16],i[19],i[22],i[25], cy]
kes_gen_out.append(ot)
return kes_gen_out
def __call__(self, image, target):
if random.random() < self.prob:
image1 = image
target1 = target
img = np.array(image)
w = image.size[0]
h = image.size[1]
pri_points = []
for i in range(len(target.extra_fields['masks'].instances)):
assert(len(target.extra_fields['masks'].instances[i].polygons)==1), 'one text instance should have only one polygon.'
tensor_box = target.extra_fields['masks'].instances[i].polygons[0].polygons
points_x = np.array([tensor_box[0][0],tensor_box[0][2],tensor_box[0][4],tensor_box[0][6]])
points_y = np.array([tensor_box[0][1],tensor_box[0][3],tensor_box[0][5],tensor_box[0][7]])
smaller_x = np.where(points_x <= 0)
larger_x = np.where(points_x >= w)
smaller_y = np.where(points_y <= 0)
larger_y = np.where(points_y >= h)
points_x[smaller_x] = 1
points_x[larger_x] = w - 1
points_y[smaller_y] = 1
points_y[larger_y] = h -1
pri_points.append((int(points_x[0]),int(points_y[0])))
pri_points.append((int(points_x[1]),int(points_y[1])))
pri_points.append((int(points_x[2]),int(points_y[2])))
pri_points.append((int(points_x[3]),int(points_y[3])))
#get the transform image and points
height, width = img.shape[:2]
# if ROTATE_DEGREE = (0,30,60,90,210,150,180,210,240,270,300,330,360)
#de_ro = random.choice(self.degree)
#matrix = cv2.getRotationMatrix2D((width / 2, height / 2) ,de_ro, 1.0)
# if ROTATE_DEGREE = 10
matrix = cv2.getRotationMatrix2D((width / 2, height / 2), random.uniform(-self.degree[0],self.degree[0]), 1.0)
cos = np.abs(matrix[0,0])
sin = np.abs(matrix[0,1])
new_W = int((height * sin) + (width * cos))
new_H = int((height * cos) + (width * sin))
matrix[0,2] += (new_W/2) - width/2
matrix[1,2] += ((new_H/2)) - height/2
img = cv2.warpAffine(img, matrix, (new_W,new_H))
change_points = []
for i in range(int(len(pri_points))):
x_r,y_r = cv2.transform(np.array([[pri_points[i]]]),matrix).squeeze()
change_points.append([x_r,y_r])
image = Image.fromarray(img)
keypoints_len = len(change_points)
tran_boxes = []
n = keypoints_len/4
for i in range(int(n)):
tran_boxes.append(change_points[0 + i*4: 4 + i*4])
tran_boxes = np.array(tran_boxes).reshape(-1,2)
tran_x = []
tran_y = []
for k in range(len(tran_boxes)):
tran_x.append(int(tran_boxes[k][0]))
tran_y.append(int(tran_boxes[k][1]))
max_x = max(tran_x)
min_x = min(tran_x)
max_y = max(tran_y)
min_y = min(tran_x)
ctr_x = new_W / 2
ctr_y = new_H / 2
origin_xmin = ctr_x - width / 2
origin_xmax = ctr_x + width / 2
origin_ymin = ctr_y - height / 2
origin_ymax = ctr_y + height / 2
cut_xmax = origin_xmax
cut_xmin = origin_xmin
cut_ymax = origin_ymax
cut_ymin = origin_ymin
if max_x >= origin_xmax:
cut_xmax = max_x
if min_x <= origin_xmin:
cut_xmin = min_x
if max_y >= origin_ymax:
cut_ymax = max_y
if min_y <= origin_ymin:
cut_ymin = min_y
for i in range(len(tran_boxes)):
tran_x[i] = tran_x[i] - cut_xmin
tran_y[i] = tran_y[i] - cut_ymin
image = image.crop((cut_xmin,cut_ymin,cut_xmax,cut_ymax))
tran_x = np.array(tran_x)
tran_y = np.array(tran_y)
boxes = []
masks = []
mty = []
kes = []
#GET FORMAT OF BOXES,MASKS
for idx in range(int(tran_x.size/4)):
x_points = [tran_x[4 * idx], tran_x[4*idx+1],tran_x[4*idx+2],tran_x[4*idx+3]]
y_points = [tran_y[4 * idx], tran_y[4*idx+1],tran_y[4*idx+2],tran_y[4*idx+3]]
l1 = LineString([(x_points[0], y_points[0]), (x_points[2], y_points[2])])
l2 = LineString([(x_points[1], y_points[1]), (x_points[3], y_points[3])])
p_l1l2 = l1.intersection(l2)
poly1 = Polygon([(x_points[0], y_points[0]), (x_points[1], y_points[1]),
(x_points[2], y_points[2]), (x_points[3], y_points[3])])
if not poly1.is_valid:
continue
if not p_l1l2.within(poly1):
continue
if poly1.area <= 10:
continue
x_min = min(x_points)
x_max = max(x_points)
y_min = min(y_points)
y_max = max(y_points)
width = max(0, x_max - x_min + 1)
height = max(0, y_max - y_min + 1)
if width == 0 or height == 0:
continue
boxes.append([x_min,y_min,width,height])
#get mask format
one_point = [[tran_x[4*idx],tran_y[4*idx],tran_x[4*idx+1],tran_y[4*idx+1],tran_x[4*idx+2],tran_y[4*idx+2],tran_x[4*idx+3],tran_y[4*idx+3]]]
masks.append(one_point)
#get matchtype format
mean_x = np.mean(x_points)
mean_y = np.mean(y_points)
xt_sort = np.sort(x_points)
yt_sort = np.sort(y_points)
xt_argsort = list(np.argsort(x_points))
yt_argsort = list(np.argsort(y_points))
ldx = []
for ildx in range(4):
ldx.append(yt_argsort.index(xt_argsort[ildx]))
all_types = [[1,2,3,4],[1,2,4,3],[1,3,2,4],[1,3,4,2],[1,4,2,3],[1,4,3,2],\
[2,1,3,4],[2,1,4,3],[2,3,1,4],[2,3,4,1],[2,4,1,3],[2,4,3,1],\
[3,1,2,4],[3,1,4,2],[3,2,1,4],[3,2,4,1],[3,4,1,2],[3,4,2,1],\
[4,1,2,3],[4,1,3,2],[4,2,1,3],[4,2,3,1],[4,3,1,2],[4,3,2,1]]
all_types = [[all_types[iat][0]-1,all_types[iat][1]-1,all_types[iat][2]-1,all_types[iat][3]-1] for iat in range(24)]
match_type = all_types.index(ldx)
mty.append(match_type)
half_x = (xt_sort + mean_x) / 2
half_y = (yt_sort + mean_y) / 2
keypoints = []
keypoints.append(mean_x)
keypoints.append(mean_y)
keypoints.append(2)
for i in range(4):
keypoints.append(half_x[i])
keypoints.append(mean_y)
keypoints.append(2)
for i in range(4):
keypoints.append(mean_x)
keypoints.append(half_y[i])
keypoints.append(2)
try:
keypoints.append(int(p_l1l2.x))
keypoints.append(int(p_l1l2.y))
keypoints.append(2)
except Exception as e:
continue
kes.append(keypoints)
#IF ENCOUNTER THAT NO BOX IN A TRANSFORMED IMAGE, RETURN PRIMARY IMAGE AND TARGET
if kes == []:
image = image1
target = target1
return image,target
classes = []
for i in range(len(boxes)):
classes.append(1)
classes = torch.tensor(classes)
#GET NEW TARGET
boxes = torch.as_tensor(boxes).reshape(-1, 4)
target = BoxList(boxes, image.size, mode="xywh").convert("xyxy")
target.add_field("labels",classes)
masks = SegmentationMask(masks, image.size)
target.add_field("masks", masks)
return image,target
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