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dataset.py
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dataset.py
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# -*- coding: utf-8 -*-
'''
@Time : 2020/05/06 21:09
@Author : Tianxiaomo
@File : dataset.py
@Noice :
@Modificattion :
@Author :
@Time :
@Detail :
'''
import os
import random
import sys
import cv2
import numpy as np
import torch
from torch.utils.data.dataset import Dataset
def rand_uniform_strong(min, max):
if min > max:
swap = min
min = max
max = swap
return random.random() * (max - min) + min
def rand_scale(s):
scale = rand_uniform_strong(1, s)
if random.randint(0, 1) % 2:
return scale
return 1. / scale
def rand_precalc_random(min, max, random_part):
if max < min:
swap = min
min = max
max = swap
return (random_part * (max - min)) + min
def fill_truth_detection(bboxes, num_boxes, classes, flip, dx, dy, sx, sy, net_w, net_h):
if bboxes.shape[0] == 0:
return bboxes, 10000
np.random.shuffle(bboxes)
bboxes[:, 0] -= dx
bboxes[:, 2] -= dx
bboxes[:, 1] -= dy
bboxes[:, 3] -= dy
bboxes[:, 0] = np.clip(bboxes[:, 0], 0, sx)
bboxes[:, 2] = np.clip(bboxes[:, 2], 0, sx)
bboxes[:, 1] = np.clip(bboxes[:, 1], 0, sy)
bboxes[:, 3] = np.clip(bboxes[:, 3], 0, sy)
out_box = list(np.where(((bboxes[:, 1] == sy) & (bboxes[:, 3] == sy)) |
((bboxes[:, 0] == sx) & (bboxes[:, 2] == sx)) |
((bboxes[:, 1] == 0) & (bboxes[:, 3] == 0)) |
((bboxes[:, 0] == 0) & (bboxes[:, 2] == 0)))[0])
list_box = list(range(bboxes.shape[0]))
for i in out_box:
list_box.remove(i)
bboxes = bboxes[list_box]
if bboxes.shape[0] == 0:
return bboxes, 10000
bboxes = bboxes[np.where((bboxes[:, 4] < classes) & (bboxes[:, 4] >= 0))[0]]
if bboxes.shape[0] > num_boxes:
bboxes = bboxes[:num_boxes]
min_w_h = np.array([bboxes[:, 2] - bboxes[:, 0], bboxes[:, 3] - bboxes[:, 1]]).min()
bboxes[:, 0] *= (net_w / sx)
bboxes[:, 2] *= (net_w / sx)
bboxes[:, 1] *= (net_h / sy)
bboxes[:, 3] *= (net_h / sy)
if flip:
temp = net_w - bboxes[:, 0]
bboxes[:, 0] = net_w - bboxes[:, 2]
bboxes[:, 2] = temp
return bboxes, min_w_h
def rect_intersection(a, b):
minx = max(a[0], b[0])
miny = max(a[1], b[1])
maxx = min(a[2], b[2])
maxy = min(a[3], b[3])
return [minx, miny, maxx, maxy]
def image_data_augmentation(mat, w, h, pleft, ptop, swidth, sheight, flip, dhue, dsat, dexp, gaussian_noise, blur,
truth):
try:
img = mat
oh, ow, _ = img.shape
pleft, ptop, swidth, sheight = int(pleft), int(ptop), int(swidth), int(sheight)
# crop
src_rect = [pleft, ptop, swidth + pleft, sheight + ptop] # x1,y1,x2,y2
img_rect = [0, 0, ow, oh]
new_src_rect = rect_intersection(src_rect, img_rect) # 交集
dst_rect = [max(0, -pleft), max(0, -ptop), max(0, -pleft) + new_src_rect[2] - new_src_rect[0],
max(0, -ptop) + new_src_rect[3] - new_src_rect[1]]
# cv2.Mat sized
if (src_rect[0] == 0 and src_rect[1] == 0 and src_rect[2] == img.shape[0] and src_rect[3] == img.shape[1]):
sized = cv2.resize(img, (w, h), cv2.INTER_LINEAR)
else:
cropped = np.zeros([sheight, swidth, 3])
cropped[:, :, ] = np.mean(img, axis=(0, 1))
cropped[dst_rect[1]:dst_rect[3], dst_rect[0]:dst_rect[2]] = \
img[new_src_rect[1]:new_src_rect[3], new_src_rect[0]:new_src_rect[2]]
# resize
sized = cv2.resize(cropped, (w, h), cv2.INTER_LINEAR)
# flip
if flip:
# cv2.Mat cropped
sized = cv2.flip(sized, 1) # 0 - x-axis, 1 - y-axis, -1 - both axes (x & y)
# HSV augmentation
# cv2.COLOR_BGR2HSV, cv2.COLOR_RGB2HSV, cv2.COLOR_HSV2BGR, cv2.COLOR_HSV2RGB
if dsat != 1 or dexp != 1 or dhue != 0:
if img.shape[2] >= 3:
hsv_src = cv2.cvtColor(sized.astype(np.float32), cv2.COLOR_RGB2HSV) # RGB to HSV
hsv = cv2.split(hsv_src)
hsv[1] *= dsat
hsv[2] *= dexp
hsv[0] += 179 * dhue
hsv_src = cv2.merge(hsv)
sized = np.clip(cv2.cvtColor(hsv_src, cv2.COLOR_HSV2RGB), 0, 255) # HSV to RGB (the same as previous)
else:
sized *= dexp
if blur:
if blur == 1:
dst = cv2.GaussianBlur(sized, (17, 17), 0)
# cv2.bilateralFilter(sized, dst, 17, 75, 75)
else:
ksize = (blur / 2) * 2 + 1
dst = cv2.GaussianBlur(sized, (ksize, ksize), 0)
if blur == 1:
img_rect = [0, 0, sized.cols, sized.rows]
for b in truth:
left = (b.x - b.w / 2.) * sized.shape[1]
width = b.w * sized.shape[1]
top = (b.y - b.h / 2.) * sized.shape[0]
height = b.h * sized.shape[0]
roi(left, top, width, height)
roi = roi & img_rect
dst[roi[0]:roi[0] + roi[2], roi[1]:roi[1] + roi[3]] = sized[roi[0]:roi[0] + roi[2],
roi[1]:roi[1] + roi[3]]
sized = dst
if gaussian_noise:
noise = np.array(sized.shape)
gaussian_noise = min(gaussian_noise, 127)
gaussian_noise = max(gaussian_noise, 0)
cv2.randn(noise, 0, gaussian_noise) # mean and variance
sized = sized + noise
except:
print("OpenCV can't augment image: " + str(w) + " x " + str(h))
sized = mat
return sized
def filter_truth(bboxes, dx, dy, sx, sy, xd, yd):
bboxes[:, 0] -= dx
bboxes[:, 2] -= dx
bboxes[:, 1] -= dy
bboxes[:, 3] -= dy
bboxes[:, 0] = np.clip(bboxes[:, 0], 0, sx)
bboxes[:, 2] = np.clip(bboxes[:, 2], 0, sx)
bboxes[:, 1] = np.clip(bboxes[:, 1], 0, sy)
bboxes[:, 3] = np.clip(bboxes[:, 3], 0, sy)
out_box = list(np.where(((bboxes[:, 1] == sy) & (bboxes[:, 3] == sy)) |
((bboxes[:, 0] == sx) & (bboxes[:, 2] == sx)) |
((bboxes[:, 1] == 0) & (bboxes[:, 3] == 0)) |
((bboxes[:, 0] == 0) & (bboxes[:, 2] == 0)))[0])
list_box = list(range(bboxes.shape[0]))
for i in out_box:
list_box.remove(i)
bboxes = bboxes[list_box]
bboxes[:, 0] += xd
bboxes[:, 2] += xd
bboxes[:, 1] += yd
bboxes[:, 3] += yd
return bboxes
def blend_truth_mosaic(out_img, img, bboxes, w, h, cut_x, cut_y, i_mixup,
left_shift, right_shift, top_shift, bot_shift):
left_shift = min(left_shift, w - cut_x)
top_shift = min(top_shift, h - cut_y)
right_shift = min(right_shift, cut_x)
bot_shift = min(bot_shift, cut_y)
if i_mixup == 0:
bboxes = filter_truth(bboxes, left_shift, top_shift, cut_x, cut_y, 0, 0)
out_img[:cut_y, :cut_x] = img[top_shift:top_shift + cut_y, left_shift:left_shift + cut_x]
if i_mixup == 1:
bboxes = filter_truth(bboxes, cut_x - right_shift, top_shift, w - cut_x, cut_y, cut_x, 0)
out_img[:cut_y, cut_x:] = img[top_shift:top_shift + cut_y, cut_x - right_shift:w - right_shift]
if i_mixup == 2:
bboxes = filter_truth(bboxes, left_shift, cut_y - bot_shift, cut_x, h - cut_y, 0, cut_y)
out_img[cut_y:, :cut_x] = img[cut_y - bot_shift:h - bot_shift, left_shift:left_shift + cut_x]
if i_mixup == 3:
bboxes = filter_truth(bboxes, cut_x - right_shift, cut_y - bot_shift, w - cut_x, h - cut_y, cut_x, cut_y)
out_img[cut_y:, cut_x:] = img[cut_y - bot_shift:h - bot_shift, cut_x - right_shift:w - right_shift]
return out_img, bboxes
def draw_box(img, bboxes):
for b in bboxes:
img = cv2.rectangle(img, (b[0], b[1]), (b[2], b[3]), (0, 255, 0), 2)
return img
class Yolo_dataset(Dataset):
def __init__(self, lable_path, cfg, train=True):
print("LABEL PATH : {}".format(lable_path))
super(Yolo_dataset, self).__init__()
if cfg.mixup == 2:
print("cutmix=1 - isn't supported for Detector")
raise
elif cfg.mixup == 2 and cfg.letter_box:
print("Combination: letter_box=1 & mosaic=1 - isn't supported, use only 1 of these parameters")
raise
self.cfg = cfg
self.train = train
truth = {}
f = open(lable_path, 'r', encoding='utf-8')
for line in f.readlines():
data = line.split(" ")
truth[data[0]] = []
for i in data[1:]:
truth[data[0]].append([int(float(j)) for j in i.split(',')])
self.truth = truth
self.imgs = list(self.truth.keys())
def __len__(self):
return len(self.truth.keys())
def __getitem__(self, index):
if not self.train:
return self._get_val_item(index)
img_path = self.imgs[index]
bboxes = np.array(self.truth.get(img_path), dtype=np.float)
# print('\n','-'*50)
# print(self.cfg.dataset_dir)
# print(img_path)
# print('-'*50,'\n')
img_path = os.path.join(self.cfg.dataset_dir, img_path)
use_mixup = self.cfg.mixup
if random.randint(0, 1):
use_mixup = 0
if use_mixup == 3:
min_offset = 0.2
cut_x = random.randint(int(self.cfg.w * min_offset), int(self.cfg.w * (1 - min_offset)))
cut_y = random.randint(int(self.cfg.h * min_offset), int(self.cfg.h * (1 - min_offset)))
r1, r2, r3, r4, r_scale = 0, 0, 0, 0, 0
dhue, dsat, dexp, flip, blur = 0, 0, 0, 0, 0
gaussian_noise = 0
out_img = np.zeros([self.cfg.h, self.cfg.w, 3])
out_bboxes = []
for i in range(use_mixup + 1):
if i != 0:
img_path = random.choice(list(self.truth.keys()))
bboxes = np.array(self.truth.get(img_path), dtype=np.float)
img_path = os.path.join(self.cfg.dataset_dir, img_path)
img = cv2.imread(img_path)
img = cv2.cvtColor(img, cv2.COLOR_BGR2RGB)
if img is None:
continue
oh, ow, oc = img.shape
dh, dw, dc = np.array(np.array([oh, ow, oc]) * self.cfg.jitter, dtype=np.int)
dhue = rand_uniform_strong(-self.cfg.hue, self.cfg.hue)
dsat = rand_scale(self.cfg.saturation)
dexp = rand_scale(self.cfg.exposure)
pleft = random.randint(-dw, dw)
pright = random.randint(-dw, dw)
ptop = random.randint(-dh, dh)
pbot = random.randint(-dh, dh)
flip = random.randint(0, 1) if self.cfg.flip else 0
if (self.cfg.blur):
tmp_blur = random.randint(0, 2) # 0 - disable, 1 - blur background, 2 - blur the whole image
if tmp_blur == 0:
blur = 0
elif tmp_blur == 1:
blur = 1
else:
blur = self.cfg.blur
if self.cfg.gaussian and random.randint(0, 1):
gaussian_noise = self.cfg.gaussian
else:
gaussian_noise = 0
if self.cfg.letter_box:
img_ar = ow / oh
net_ar = self.cfg.w / self.cfg.h
result_ar = img_ar / net_ar
# print(" ow = %d, oh = %d, w = %d, h = %d, img_ar = %f, net_ar = %f, result_ar = %f \n", ow, oh, w, h, img_ar, net_ar, result_ar);
if result_ar > 1: # sheight - should be increased
oh_tmp = ow / net_ar
delta_h = (oh_tmp - oh) / 2
ptop = ptop - delta_h
pbot = pbot - delta_h
# print(" result_ar = %f, oh_tmp = %f, delta_h = %d, ptop = %f, pbot = %f \n", result_ar, oh_tmp, delta_h, ptop, pbot);
else: # swidth - should be increased
ow_tmp = oh * net_ar
delta_w = (ow_tmp - ow) / 2
pleft = pleft - delta_w
pright = pright - delta_w
# printf(" result_ar = %f, ow_tmp = %f, delta_w = %d, pleft = %f, pright = %f \n", result_ar, ow_tmp, delta_w, pleft, pright);
swidth = ow - pleft - pright
sheight = oh - ptop - pbot
truth, min_w_h = fill_truth_detection(bboxes, self.cfg.boxes, self.cfg.classes, flip, pleft, ptop, swidth,
sheight, self.cfg.w, self.cfg.h)
if (min_w_h / 8) < blur and blur > 1: # disable blur if one of the objects is too small
blur = min_w_h / 8
ai = image_data_augmentation(img, self.cfg.w, self.cfg.h, pleft, ptop, swidth, sheight, flip,
dhue, dsat, dexp, gaussian_noise, blur, truth)
if use_mixup == 0:
out_img = ai
out_bboxes = truth
if use_mixup == 1:
if i == 0:
old_img = ai.copy()
old_truth = truth.copy()
elif i == 1:
out_img = cv2.addWeighted(ai, 0.5, old_img, 0.5)
out_bboxes = np.concatenate([old_truth, truth], axis=0)
elif use_mixup == 3:
if flip:
tmp = pleft
pleft = pright
pright = tmp
left_shift = int(min(cut_x, max(0, (-int(pleft) * self.cfg.w / swidth))))
top_shift = int(min(cut_y, max(0, (-int(ptop) * self.cfg.h / sheight))))
right_shift = int(min((self.cfg.w - cut_x), max(0, (-int(pright) * self.cfg.w / swidth))))
bot_shift = int(min(self.cfg.h - cut_y, max(0, (-int(pbot) * self.cfg.h / sheight))))
out_img, out_bbox = blend_truth_mosaic(out_img, ai, truth.copy(), self.cfg.w, self.cfg.h, cut_x,
cut_y, i, left_shift, right_shift, top_shift, bot_shift)
out_bboxes.append(out_bbox)
# print(img_path)
if use_mixup == 3:
out_bboxes = np.concatenate(out_bboxes, axis=0)
out_bboxes1 = np.zeros([self.cfg.boxes, 5])
out_bboxes1[:min(out_bboxes.shape[0], self.cfg.boxes)] = out_bboxes[:min(out_bboxes.shape[0], self.cfg.boxes)]
return out_img, out_bboxes1
def _get_val_item(self, index):
"""
"""
img_path = self.imgs[index]
bboxes_with_cls_id = np.array(self.truth.get(img_path), dtype=np.float)
img = cv2.imread(os.path.join(self.cfg.dataset_dir, img_path))
# img_height, img_width = img.shape[:2]
img = cv2.cvtColor(img, cv2.COLOR_BGR2RGB)
# img = cv2.resize(img, (self.cfg.w, self.cfg.h))
# img = torch.from_numpy(img.transpose(2, 0, 1)).float().div(255.0).unsqueeze(0)
num_objs = len(bboxes_with_cls_id)
target = {}
# boxes to coco format
boxes = bboxes_with_cls_id[...,:4]
boxes[..., 2:] = boxes[..., 2:] - boxes[..., :2] # box width, box height
target['boxes'] = torch.as_tensor(boxes, dtype=torch.float32)
target['labels'] = torch.as_tensor(bboxes_with_cls_id[...,-1].flatten(), dtype=torch.int64)
target['image_id'] = torch.tensor([get_image_id(img_path)])
target['area'] = (target['boxes'][:,3])*(target['boxes'][:,2])
target['iscrowd'] = torch.zeros((num_objs,), dtype=torch.int64)
return img, target
def get_image_id(filename:str) -> int:
"""
Convert a string to a integer.
Make sure that the images and the `image_id`s are in one-one correspondence.
There are already `image_id`s in annotations of the COCO dataset,
in which case this function is unnecessary.
For creating one's own `get_image_id` function, one can refer to
https://github.com/google/automl/blob/master/efficientdet/dataset/create_pascal_tfrecord.py#L86
or refer to the following code (where the filenames are like 'level1_123.jpg')
>>> lv, no = os.path.splitext(os.path.basename(filename))[0].split("_")
>>> lv = lv.replace("level", "")
>>> no = f"{int(no):04d}"
>>> return int(lv+no)
"""
# raise NotImplementedError("Create your own 'get_image_id' function"))
# lv, no = os.path.splitext(os.path.basename(filename))[0].split("_")
# lv = lv.replace("level", "")
# no = f"{int(no):04d}"
# return int(lv+no)
no = os.path.splitext(os.path.basename(filename))[0]
return int(no)
if __name__ == "__main__":
from cfg import Cfg
import matplotlib.pyplot as plt
random.seed(2020)
np.random.seed(2020)
Cfg.dataset_dir = '/mnt/e/Dataset'
dataset = Yolo_dataset(Cfg.train_label, Cfg)
for i in range(100):
out_img, out_bboxes = dataset.__getitem__(i)
a = draw_box(out_img.copy(), out_bboxes.astype(np.int32))
plt.imshow(a.astype(np.int32))
plt.show()