line_dataset.py 21 KB

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  1. import cv2
  2. import imageio
  3. import numpy as np
  4. from skimage.draw import ellipse
  5. from torch.utils.data.dataset import T_co
  6. from libs.vision_libs.utils import draw_keypoints
  7. from models.base.base_dataset import BaseDataset
  8. import json
  9. import os
  10. import PIL
  11. import matplotlib as mpl
  12. from torchvision.utils import draw_bounding_boxes
  13. import torchvision.transforms.v2 as transforms
  14. import torch
  15. import matplotlib.pyplot as plt
  16. from models.base.transforms import get_transforms
  17. from utils.data_process.mask.show_mask import save_full_mask
  18. from utils.data_process.show_prams import print_params
  19. def validate_keypoints(keypoints, image_width, image_height):
  20. for kp in keypoints:
  21. x, y, v = kp
  22. if not (0 <= x < image_width and 0 <= y < image_height):
  23. raise ValueError(f"Key point ({x}, {y}) is out of bounds for image size ({image_width}, {image_height})")
  24. """
  25. 直接读取xanlabel标注的数据集json格式
  26. """
  27. class LineDataset(BaseDataset):
  28. def __init__(self, dataset_path, data_type, transforms=None, augmentation=False, dataset_type=None, img_type='rgb',
  29. target_type='pixel'):
  30. super().__init__(dataset_path)
  31. self.data_path = dataset_path
  32. self.data_type = data_type
  33. print(f'data_path:{dataset_path}')
  34. self.transforms = transforms
  35. self.img_path = os.path.join(dataset_path, "images/" + dataset_type)
  36. self.lbl_path = os.path.join(dataset_path, "labels/" + dataset_type)
  37. self.imgs = os.listdir(self.img_path)
  38. self.lbls = os.listdir(self.lbl_path)
  39. self.target_type = target_type
  40. self.img_type = img_type
  41. self.augmentation = augmentation
  42. print(f'augmentation:{augmentation}')
  43. # self.default_transform = DefaultTransform()
  44. def __getitem__(self, index) -> T_co:
  45. img_path = os.path.join(self.img_path, self.imgs[index])
  46. if self.data_type == 'tiff':
  47. lbl_path = os.path.join(self.lbl_path, self.imgs[index][:-4] + 'json')
  48. img = imageio.v3.imread(img_path)[:, :, 0]
  49. print(f'img shape:{img.shape}')
  50. w, h = img.shape[:2]
  51. img = img.reshape(w, h, 1)
  52. img_3channel = np.zeros((w, h, 3), dtype=img.dtype)
  53. img_3channel[:, :, 2] = img[:, :, 0]
  54. img = torch.from_numpy(img_3channel).permute(2, 1, 0)
  55. else:
  56. lbl_path = os.path.join(self.lbl_path, self.imgs[index][:-3] + 'json')
  57. img = PIL.Image.open(img_path).convert('RGB')
  58. w, h = img.size
  59. # wire_labels, target = self.read_target(item=index, lbl_path=lbl_path, shape=(h, w))
  60. target = self.read_target(item=index, lbl_path=lbl_path, shape=(h, w))
  61. self.transforms = get_transforms(augmention=self.augmentation)
  62. img, target = self.transforms(img, target)
  63. return img, target
  64. def __len__(self):
  65. return len(self.imgs)
  66. def read_target(self, item, lbl_path, shape, extra=None):
  67. # print(f'shape:{shape}')
  68. # print(f'lbl_path:{lbl_path}')
  69. with open(lbl_path, 'r') as file:
  70. lable_all = json.load(file)
  71. objs = lable_all["shapes"]
  72. point_pairs = objs[0]['points']
  73. # print(f'point_pairs:{point_pairs}')
  74. target = {}
  75. target["image_id"] = torch.tensor(item)
  76. #boxes, line_point_pairs, points, labels, mask_ends, mask_params
  77. boxes, lines, points, labels, arc_ends, arc_params = get_boxes_lines(objs, shape)
  78. # print_params(arc_ends, arc_params)
  79. if points is not None:
  80. target["points"] = points
  81. # if lines is not None:
  82. # a = torch.full((lines.shape[0],), 2).unsqueeze(1)
  83. # lines = torch.cat((lines, a), dim=1)
  84. # target["lines"] = lines.to(torch.float32).view(-1, 2, 3)
  85. if lines is not None:
  86. label_3d = labels.view(-1, 1, 1).expand(-1, 2, -1) # [N] -> [N,2,1]
  87. line1 = torch.cat([lines, label_3d], dim=-1) # [N,2,3]
  88. target["lines"] = line1.to(torch.float32)
  89. if arc_ends is not None:
  90. target['mask_ends'] = arc_ends
  91. if arc_params is not None:
  92. target['mask_params'] = arc_params
  93. # arc_angles = compute_arc_angles(arc_ends, arc_params)
  94. # # print_params(arc_angles)
  95. # arc_masks = []
  96. #
  97. #
  98. #
  99. # for i in range(len(arc_params)):
  100. # arc_param_i = arc_params[i].view(-1) # shape (5,)
  101. # arc_angle_i = arc_angles[i].view(-1) # shape (2,)
  102. # arc7 = torch.cat([arc_param_i, arc_angle_i], dim=0) # shape (7,)
  103. #
  104. #
  105. # # print_params(arc7)
  106. # mask = arc_to_mask(arc7, shape, line_width=1)
  107. #
  108. # arc_masks.append(mask)
  109. # # arc7=arc_params[i] + arc_angles[i].tolist()
  110. # # arc_masks.append(arc_to_mask(arc7, shape, line_width=1))
  111. #
  112. # # print(f'circle_masks:{torch.stack(arc_masks, dim=0).shape}')
  113. #
  114. # target['circle_masks'] = torch.stack(arc_masks, dim=0)
  115. # save_full_mask(target['circle_masks'], "arc_masks",
  116. # "/home/zhaoyinghan/py_ws/code/circle_huayan/MultiVisionModels/models/line_detect/out_feature_dataset")
  117. target["boxes"] = boxes
  118. target["labels"] = labels
  119. # target["boxes"], lines,target["points"], target["labels"] = get_boxes_lines(objs,shape)
  120. # print(f'lines:{lines}')
  121. # target["labels"] = torch.ones(len(target["boxes"]), dtype=torch.int64)
  122. # print(f'target points:{target["points"]}')
  123. # target["lines"] = lines.to(torch.float32).view(-1,2,3)
  124. # print(f'')
  125. # print(f'lines:{target["lines"].shape}')
  126. target["img_size"] = shape
  127. # validate_keypoints(lines, shape[0], shape[1])
  128. return target
  129. def show(self, idx, show_type='all'):
  130. image, target = self.__getitem__(idx)
  131. cmap = plt.get_cmap("jet")
  132. norm = mpl.colors.Normalize(vmin=0.4, vmax=1.0)
  133. sm = plt.cm.ScalarMappable(cmap=cmap, norm=norm)
  134. sm.set_array([])
  135. img = image
  136. # print(f'img:{img.shape}')
  137. if show_type == 'arc_yuan_point_ellipse':
  138. arc_ends = target['mask_ends']
  139. arc_params = target['mask_params']
  140. fig, ax = plt.subplots()
  141. ax.imshow(img.permute(1, 2, 0))
  142. for params in arc_params:
  143. if torch.all(params == 0):
  144. continue
  145. x, y, a, b, q = params
  146. theta = np.radians(q)
  147. phi = np.linspace(0, 2 * np.pi, 500)
  148. x_ellipse = x + a * np.cos(phi) * np.cos(theta) - b * np.sin(phi) * np.sin(theta)
  149. y_ellipse = y + a * np.cos(phi) * np.sin(theta) + b * np.sin(phi) * np.cos(theta)
  150. plt.plot(x_ellipse, y_ellipse, 'b-', linewidth=2)
  151. for point2 in arc_ends:
  152. if torch.all(point2 == 0):
  153. continue
  154. ends_np = point2.cpu().numpy()
  155. ax.plot(ends_np[:, 0], ends_np[:, 1], 'ro', markersize=6, label='Arc Endpoints')
  156. ax.legend()
  157. plt.axis('image') # 保持比例一致
  158. plt.show()
  159. if show_type == 'circle_masks':
  160. boxed_image = draw_bounding_boxes((img * 255).to(torch.uint8), target["boxes"],
  161. colors="yellow", width=1)
  162. # arc = target['arc']
  163. arc_mask = target['circle_masks']
  164. # print(f'taget circle:{arc.shape}')
  165. print(f'target circle_masks:{arc_mask.shape}')
  166. combined = torch.cat(list(arc_mask), dim=1)
  167. plt.imshow(combined)
  168. plt.show()
  169. if show_type == 'circle_masks11':
  170. boxed_image = draw_bounding_boxes((img * 255).to(torch.uint8), target["boxes"],
  171. colors="yellow", width=1)
  172. circle = target['circles']
  173. circle_mask = target['circle_masks']
  174. print(f'taget circle:{circle.shape}')
  175. print(f'target circle_masks:{circle_mask.shape}')
  176. plt.imshow(circle_mask.squeeze(0))
  177. keypoint_img = draw_keypoints(boxed_image, circle, colors='red', width=3)
  178. # plt.imshow(keypoint_img.permute(1, 2, 0).numpy())
  179. plt.show()
  180. # if show_type=='lines':
  181. # keypoint_img=draw_keypoints((img * 255).to(torch.uint8),target['lines'],colors='red',width=3)
  182. # plt.imshow(keypoint_img.permute(1, 2, 0).numpy())
  183. # plt.show()
  184. if show_type == 'points':
  185. # print(f'points:{target['points'].shape}')
  186. keypoint_img = draw_keypoints((img * 255).to(torch.uint8), target['points'].unsqueeze(1), colors='red',
  187. width=3)
  188. plt.imshow(keypoint_img.permute(1, 2, 0).numpy())
  189. plt.show()
  190. if show_type == 'boxes':
  191. boxed_image = draw_bounding_boxes((img * 255).to(torch.uint8), target["boxes"],
  192. colors="yellow", width=1)
  193. plt.imshow(boxed_image.permute(1, 2, 0).numpy())
  194. plt.show()
  195. def show_img(self, img_path):
  196. pass
  197. def draw_el(all):
  198. # 解析椭圆参数
  199. if isinstance(all, torch.Tensor):
  200. all = all.cpu().numpy()
  201. x, y, a, b, q, q1, q2 = all
  202. theta = np.radians(q)
  203. phi1 = np.radians(q1) # 第一个点的参数角
  204. phi2 = np.radians(q2) # 第二个点的参数角
  205. # 生成椭圆上的点
  206. phi = np.linspace(0, 2 * np.pi, 500)
  207. x_ellipse = x + a * np.cos(phi) * np.cos(theta) - b * np.sin(phi) * np.sin(theta)
  208. y_ellipse = y + a * np.cos(phi) * np.sin(theta) + b * np.sin(phi) * np.cos(theta)
  209. # 计算两个指定点的坐标
  210. def param_to_point(phi, xc, yc, a, b, theta):
  211. x = xc + a * np.cos(phi) * np.cos(theta) - b * np.sin(phi) * np.sin(theta)
  212. y = yc + a * np.cos(phi) * np.sin(theta) + b * np.sin(phi) * np.cos(theta)
  213. return x, y
  214. P1 = param_to_point(phi1, x, y, a, b, theta)
  215. P2 = param_to_point(phi2, x, y, a, b, theta)
  216. # 创建画布并显示背景图片(使用传入的background_img,shape为[H, W, C])
  217. plt.figure(figsize=(10, 10))
  218. # plt.imshow(background_img) # 直接显示背景图
  219. # 绘制椭圆及相关元素
  220. plt.plot(x_ellipse, y_ellipse, 'b-', linewidth=2)
  221. plt.plot(x, y, 'ko', markersize=8)
  222. plt.plot(P1[0], P1[1], 'ro', markersize=10)
  223. plt.plot(P2[0], P2[1], 'go', markersize=10)
  224. plt.show()
  225. def arc_to_mask(arc7, shape, line_width=1):
  226. """
  227. Generate a binary mask of an elliptical arc.
  228. Args:
  229. xc, yc (float): 椭圆中心
  230. a, b (float): 长半轴、短半轴 (a >= b)
  231. theta (float): 椭圆旋转角度(**弧度**,逆时针,相对于 x 轴)
  232. phi1, phi2 (float): 起始和终止参数角(**弧度**,在 [0, 2π) 内)
  233. H, W (int): 输出 mask 的高度和宽度
  234. line_width (int): 弧线宽度(像素)
  235. Returns:
  236. mask (Tensor): [H, W], dtype=torch.uint8, 0/255
  237. """
  238. # print_params(arc7)
  239. # 确保 phi1 -> phi2 是正向(可处理跨 2π 的情况)
  240. if torch.all(arc7 == 0):
  241. return torch.zeros(shape, dtype=torch.uint8)
  242. xc, yc, a, b, theta, phi1, phi2 = arc7
  243. H, W = shape
  244. if phi2 < phi1:
  245. phi2 += 2 * np.pi
  246. # 生成参数角(足够密集,避免断线)
  247. num_points = max(int(200 * abs(phi2 - phi1) / (2 * np.pi)), 10)
  248. phi = np.linspace(phi1, phi2, num_points)
  249. # 椭圆参数方程(先在未旋转坐标系下计算)
  250. x_local = a * np.cos(phi)
  251. y_local = b * np.sin(phi)
  252. # 应用旋转和平移
  253. cos_t = np.cos(theta)
  254. sin_t = np.sin(theta)
  255. x_rot = x_local * cos_t - y_local * sin_t + xc
  256. y_rot = x_local * cos_t + y_local * sin_t + yc
  257. # 转为整数坐标(OpenCV 需要 int32)
  258. points = np.stack([x_rot, y_rot], axis=1).astype(np.int32)
  259. # 创建空白图像
  260. img = np.zeros((H, W), dtype=np.uint8)
  261. # 绘制折线(antialias=False 更适合 mask)
  262. cv2.polylines(img, [points], isClosed=False, color=255, thickness=line_width, lineType=cv2.LINE_AA)
  263. return torch.from_numpy(img).float() # [H, W], values: 0 or 255
  264. def compute_arc_angles(gt_mask_ends, gt_mask_params):
  265. """
  266. 给定椭圆上的一个点,计算其对应的参数角 phi(弧度)。
  267. Parameters:
  268. point: tuple or array-like, (x, y)
  269. ellipse_param: tuple or array-like, (xc, yc, a, b, theta)
  270. Returns:
  271. phi: float, in [0, 2*pi)
  272. """
  273. # print_params(gt_mask_ends, gt_mask_params)
  274. results = []
  275. if not isinstance(gt_mask_params, torch.Tensor):
  276. gt_mask_params_tensor = torch.tensor(gt_mask_params, dtype=gt_mask_ends.dtype, device=gt_mask_ends.device)
  277. else:
  278. gt_mask_params_tensor = gt_mask_params.clone().detach().to(gt_mask_ends)
  279. for ends_img, params_img in zip(gt_mask_ends, gt_mask_params_tensor):
  280. # print(f'params_img:{params_img}')
  281. if torch.norm(params_img) < 1e-6: # L2 norm near zero
  282. results.append(torch.zeros(2, device=params_img.device, dtype=params_img.dtype))
  283. continue
  284. x, y = ends_img
  285. xc, yc, a, b, theta = params_img
  286. # 1. 平移到中心
  287. dx = x - xc
  288. dy = y - yc
  289. # 2. 逆旋转(旋转 -theta)
  290. cos_t = torch.cos(theta)
  291. sin_t = torch.sin(theta)
  292. X = dx * cos_t + dy * sin_t
  293. Y = -dx * sin_t + dy * cos_t
  294. # 3. 归一化到单位圆(除以 a, b)
  295. cos_phi = X / a
  296. sin_phi = Y / b
  297. # 4. 用 atan2 求角度(自动处理象限)
  298. phi = torch.atan2(sin_phi, cos_phi)
  299. # 5. 转换到 [0, 2π)
  300. phi = torch.where(phi < 0, phi + 2 * torch.pi, phi)
  301. results.append(phi)
  302. return results
  303. def points_to_ellipse(points):
  304. """
  305. 根据提供的四个点估计椭圆参数。
  306. :param points: Tensor of shape (4, 2) 表示椭圆上的四个点
  307. :return: 返回 (cx, cy, r1, r2, orientation) 其中 cx, cy 是中心坐标,r1, r2 分别是长轴和短轴半径,orientation 是椭圆的方向(弧度)
  308. """
  309. # 转换为numpy数组进行计算
  310. pts = points.numpy()
  311. pts = pts.reshape(-1, 2)
  312. center = np.mean(pts, axis=0)
  313. A = np.hstack(
  314. [pts[:, 0:1] ** 2, pts[:, 0:1] * pts[:, 1:2], pts[:, 1:2] ** 2, pts[:, :2], np.ones((pts.shape[0], 1))])
  315. b = np.ones(pts.shape[0])
  316. x = np.linalg.lstsq(A, b, rcond=None)[0]
  317. # 解析解参见 https://en.wikipedia.org/wiki/Ellipse#General_ellipse
  318. a, b, c, d, f, g = x.ravel()
  319. numerator = 2 * (a * f * f + c * d * d + g * b * b - 2 * b * d * f - a * c * g)
  320. denominator1 = (b * b - a * c) * ((c - a) * np.sqrt(1 + 4 * b * b / ((a - c) * (a - c))) - (c + a))
  321. denominator2 = (b * b - a * c) * ((a - c) * np.sqrt(1 + 4 * b * b / ((a - c) * (a - c))) - (c + a))
  322. major_axis = np.sqrt(numerator / denominator1)
  323. minor_axis = np.sqrt(numerator / denominator2)
  324. distances = np.linalg.norm(pts - center, axis=1)
  325. long_axis_length = np.max(distances) * 2
  326. short_axis_length = np.min(distances) * 2
  327. orientation = np.arctan2(pts[1, 1] - pts[0, 1], pts[1, 0] - pts[0, 0])
  328. return center[0], center[1], long_axis_length / 2, short_axis_length / 2, orientation
  329. def generate_ellipse_mask(shape, ellipse_params):
  330. """
  331. 在指定形状的图像上生成椭圆mask。
  332. :param shape: 输出mask的形状 (HxW)
  333. :param ellipse_params: 椭圆参数 (cx, cy, rx, ry, orientation)
  334. :return: 椭圆mask
  335. """
  336. cx, cy, rx, ry, orientation = ellipse_params
  337. img = np.zeros(shape, dtype=np.uint8)
  338. cx, cy, rx, ry = int(cx), int(cy), int(rx), int(ry)
  339. rr, cc = ellipse(cy, cx, ry, rx, shape)
  340. img[rr, cc] = 1
  341. return img
  342. def sort_points_clockwise(points):
  343. points = np.array(points)
  344. top_left_idx = np.lexsort((points[:, 0], points[:, 1]))[0]
  345. reference_point = points[top_left_idx]
  346. def angle_to_reference(point):
  347. return np.arctan2(point[1] - reference_point[1], point[0] - reference_point[0])
  348. angles = np.apply_along_axis(angle_to_reference, 1, points)
  349. angles[angles < 0] += 2 * np.pi
  350. sorted_indices = np.argsort(angles)
  351. sorted_points = points[sorted_indices]
  352. return sorted_points.tolist()
  353. def get_boxes_lines(objs, shape):
  354. boxes = []
  355. labels = []
  356. h, w = shape
  357. line_point_pairs = []
  358. points = []
  359. mask_ends = []
  360. mask_params = []
  361. for obj in objs:
  362. # plt.plot([a[1], b[1]], [a[0], b[0]], c="red", linewidth=1) # a[1], b[1]无明确大小
  363. # print(f"points:{obj['points']}")
  364. label = obj['label']
  365. if label == 'line' or label == 'dseam1':
  366. a, b = obj['points'][0], obj['points'][1]
  367. # line_point_pairs.append(a)
  368. # line_point_pairs.append(b)
  369. line_point_pairs.append([a, b])
  370. xmin = max(0, (min(a[0], b[0]) - 6))
  371. xmax = min(w, (max(a[0], b[0]) + 6))
  372. ymin = max(0, (min(a[1], b[1]) - 6))
  373. ymax = min(h, (max(a[1], b[1]) + 6))
  374. boxes.append([xmin, ymin, xmax, ymax])
  375. labels.append(torch.tensor(2))
  376. points.append(torch.tensor([0.0]))
  377. mask_ends.append([[0, 0], [0, 0]])
  378. mask_params.append([0, 0, 0, 0, 0])
  379. # circle_4points.append([[0, 0], [0, 0], [0, 0], [0, 0]])
  380. elif label == 'point':
  381. p = obj['points'][0]
  382. xmin = max(0, p[0] - 12)
  383. xmax = min(w, p[0] + 12)
  384. ymin = max(0, p[1] - 12)
  385. ymax = min(h, p[1] + 12)
  386. points.append(p)
  387. labels.append(torch.tensor(1))
  388. boxes.append([xmin, ymin, xmax, ymax])
  389. line_point_pairs.append([[0, 0], [0, 0]])
  390. mask_ends.append([[0, 0], [0, 0]])
  391. mask_params.append([0, 0, 0, 0, 0])
  392. # circle_4points.append([[0, 0], [0, 0], [0, 0], [0, 0]])
  393. # elif label == 'arc':
  394. # arc_points = obj['points']
  395. # arc_params = obj['params']
  396. # arc_ends = obj['ends']
  397. # line_mask.append(arc_points)
  398. # mask_ends.append(arc_ends)
  399. # mask_params.append(arc_params)
  400. #
  401. # xs = [p[0] for p in arc_points]
  402. # ys = [p[1] for p in arc_points]
  403. # xmin, xmax = min(xs), max(xs)
  404. # ymin, ymax = min(ys), max(ys)
  405. #
  406. # boxes.append([xmin, ymin, xmax, ymax])
  407. # labels.append(torch.tensor(3))
  408. #
  409. # points.append(torch.tensor([0.0]))
  410. # line_point_pairs.append([[0, 0], [0, 0]])
  411. # circle_4points.append([[0, 0], [0, 0], [0, 0], [0, 0]])
  412. elif label == 'arc':
  413. arc_params = obj['params']
  414. arc_ends = obj['ends']
  415. mask_ends.append(arc_ends)
  416. mask_params.append(arc_params)
  417. arc3points = obj['points']
  418. xs = [p[0] for p in arc3points]
  419. ys = [p[1] for p in arc3points]
  420. xmin_raw = min(xs)
  421. xmax_raw = max(xs)
  422. ymin_raw = min(ys)
  423. ymax_raw = max(ys)
  424. xmin = max(xmin_raw - 40, 0)
  425. xmax = min(xmax_raw + 40, w)
  426. ymin = max(ymin_raw - 40, 0)
  427. ymax = min(ymax_raw + 40, h)
  428. boxes.append([xmin, ymin, xmax, ymax])
  429. labels.append(torch.tensor(4))
  430. points.append(torch.tensor([0.0]))
  431. line_point_pairs.append([[0, 0], [0, 0]])
  432. boxes = torch.tensor(boxes, dtype=torch.float32)
  433. print(f'boxes:{boxes.shape}')
  434. labels = torch.tensor(labels)
  435. if points:
  436. points = torch.tensor(points, dtype=torch.float32)
  437. else:
  438. points = None
  439. if line_point_pairs:
  440. line_point_pairs = torch.tensor(line_point_pairs, dtype=torch.float32)
  441. else:
  442. line_point_pairs = None
  443. if mask_ends:
  444. mask_ends = torch.tensor(mask_ends, dtype=torch.float32)
  445. else:
  446. mask_ends = None
  447. if mask_params:
  448. mask_params = torch.tensor(mask_params, dtype=torch.float32)
  449. else:
  450. mask_params = None
  451. return boxes, line_point_pairs, points, labels, mask_ends, mask_params
  452. if __name__ == '__main__':
  453. path = r'\\192.168.50.222/share/zyh/master_dataset/pokou/251115/a_dataset_pokou_mask'
  454. dataset = LineDataset(dataset_path=path, dataset_type='train', augmentation=False, data_type='jpg')
  455. dataset.show(19, show_type='arc_yuan_point_ellipse')