engine.py 62 KB

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  1. import torch
  2. import torch.distributed as dist
  3. import time
  4. import os
  5. import numpy as np
  6. import random
  7. # ----------------- Extra Components -----------------
  8. from utils import distributed_utils
  9. from utils.misc import ModelEMA, CollateFunc, build_dataloader
  10. from utils.vis_tools import vis_data
  11. # ----------------- Evaluator Components -----------------
  12. from evaluator.build import build_evluator
  13. # ----------------- Optimizer & LrScheduler Components -----------------
  14. from utils.solver.optimizer import build_yolo_optimizer, build_detr_optimizer
  15. from utils.solver.lr_scheduler import build_lr_scheduler
  16. # ----------------- Dataset Components -----------------
  17. from dataset.build import build_dataset, build_transform
  18. # YOLOv8-style Trainer
  19. class Yolov8Trainer(object):
  20. def __init__(self, args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size):
  21. # ------------------- basic parameters -------------------
  22. self.args = args
  23. self.epoch = 0
  24. self.best_map = -1.
  25. self.last_opt_step = 0
  26. self.no_aug_epoch = args.no_aug_epoch
  27. self.clip_grad = 10
  28. self.device = device
  29. self.criterion = criterion
  30. self.world_size = world_size
  31. self.heavy_eval = False
  32. self.second_stage = False
  33. # path to save model
  34. self.path_to_save = os.path.join(args.save_folder, args.dataset, args.model)
  35. os.makedirs(self.path_to_save, exist_ok=True)
  36. # ---------------------------- Hyperparameters refer to YOLOv8 ----------------------------
  37. self.optimizer_dict = {'optimizer': 'sgd', 'momentum': 0.937, 'weight_decay': 5e-4, 'lr0': 0.01}
  38. self.ema_dict = {'ema_decay': 0.9999, 'ema_tau': 2000}
  39. self.lr_schedule_dict = {'scheduler': 'linear', 'lrf': 0.01}
  40. self.warmup_dict = {'warmup_momentum': 0.8, 'warmup_bias_lr': 0.1}
  41. # ---------------------------- Build Dataset & Model & Trans. Config ----------------------------
  42. self.data_cfg = data_cfg
  43. self.model_cfg = model_cfg
  44. self.trans_cfg = trans_cfg
  45. # ---------------------------- Build Transform ----------------------------
  46. self.train_transform, self.trans_cfg = build_transform(
  47. args=args, trans_config=self.trans_cfg, max_stride=model_cfg['max_stride'], is_train=True)
  48. self.val_transform, _ = build_transform(
  49. args=args, trans_config=self.trans_cfg, max_stride=model_cfg['max_stride'], is_train=False)
  50. # ---------------------------- Build Dataset & Dataloader ----------------------------
  51. self.dataset, self.dataset_info = build_dataset(self.args, self.data_cfg, self.trans_cfg, self.train_transform, is_train=True)
  52. self.train_loader = build_dataloader(self.args, self.dataset, self.args.batch_size // self.world_size, CollateFunc())
  53. # ---------------------------- Build Evaluator ----------------------------
  54. self.evaluator = build_evluator(self.args, self.data_cfg, self.val_transform, self.device)
  55. # ---------------------------- Build Grad. Scaler ----------------------------
  56. self.scaler = torch.cuda.amp.GradScaler(enabled=self.args.fp16)
  57. # ---------------------------- Build Optimizer ----------------------------
  58. accumulate = max(1, round(64 / self.args.batch_size))
  59. print('Grad Accumulate: {}'.format(accumulate))
  60. self.optimizer_dict['weight_decay'] *= self.args.batch_size * accumulate / 64
  61. self.optimizer, self.start_epoch = build_yolo_optimizer(self.optimizer_dict, model, self.args.resume)
  62. # ---------------------------- Build LR Scheduler ----------------------------
  63. self.lr_scheduler, self.lf = build_lr_scheduler(self.lr_schedule_dict, self.optimizer, self.args.max_epoch)
  64. self.lr_scheduler.last_epoch = self.start_epoch - 1 # do not move
  65. if self.args.resume:
  66. self.lr_scheduler.step()
  67. # ---------------------------- Build Model-EMA ----------------------------
  68. if self.args.ema and distributed_utils.get_rank() in [-1, 0]:
  69. print('Build ModelEMA ...')
  70. self.model_ema = ModelEMA(self.ema_dict, model, self.start_epoch * len(self.train_loader))
  71. else:
  72. self.model_ema = None
  73. def train(self, model):
  74. for epoch in range(self.start_epoch, self.args.max_epoch):
  75. if self.args.distributed:
  76. self.train_loader.batch_sampler.sampler.set_epoch(epoch)
  77. # check second stage
  78. if epoch >= (self.args.max_epoch - self.no_aug_epoch - 1) and not self.second_stage:
  79. self.check_second_stage()
  80. # save model of the last mosaic epoch
  81. weight_name = '{}_last_mosaic_epoch.pth'.format(self.args.model)
  82. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  83. if not os.path.exists(checkpoint_path):
  84. print('Saving state of the last Mosaic epoch-{}.'.format(self.epoch + 1))
  85. torch.save({'model': model.state_dict(),
  86. 'mAP': round(self.evaluator.map*100, 1),
  87. 'optimizer': self.optimizer.state_dict(),
  88. 'epoch': self.epoch,
  89. 'args': self.args},
  90. checkpoint_path)
  91. # train one epoch
  92. self.epoch = epoch
  93. self.train_one_epoch(model)
  94. # eval one epoch
  95. if self.heavy_eval:
  96. model_eval = model.module if self.args.distributed else model
  97. self.eval(model_eval)
  98. else:
  99. model_eval = model.module if self.args.distributed else model
  100. if (epoch % self.args.eval_epoch) == 0 or (epoch == self.args.max_epoch - 1):
  101. self.eval(model_eval)
  102. def eval(self, model):
  103. # chech model
  104. model_eval = model if self.model_ema is None else self.model_ema.ema
  105. if distributed_utils.is_main_process():
  106. # check evaluator
  107. if self.evaluator is None:
  108. print('No evaluator ... save model and go on training.')
  109. print('Saving state, epoch: {}'.format(self.epoch + 1))
  110. weight_name = '{}_no_eval.pth'.format(self.args.model)
  111. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  112. torch.save({'model': model_eval.state_dict(),
  113. 'mAP': -1.,
  114. 'optimizer': self.optimizer.state_dict(),
  115. 'epoch': self.epoch,
  116. 'args': self.args},
  117. checkpoint_path)
  118. else:
  119. print('eval ...')
  120. # set eval mode
  121. model_eval.trainable = False
  122. model_eval.eval()
  123. # evaluate
  124. with torch.no_grad():
  125. self.evaluator.evaluate(model_eval)
  126. # save model
  127. cur_map = self.evaluator.map
  128. if cur_map > self.best_map:
  129. # update best-map
  130. self.best_map = cur_map
  131. # save model
  132. print('Saving state, epoch:', self.epoch + 1)
  133. weight_name = '{}_best.pth'.format(self.args.model)
  134. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  135. torch.save({'model': model_eval.state_dict(),
  136. 'mAP': round(self.best_map*100, 1),
  137. 'optimizer': self.optimizer.state_dict(),
  138. 'epoch': self.epoch,
  139. 'args': self.args},
  140. checkpoint_path)
  141. # set train mode.
  142. model_eval.trainable = True
  143. model_eval.train()
  144. if self.args.distributed:
  145. # wait for all processes to synchronize
  146. dist.barrier()
  147. def train_one_epoch(self, model):
  148. # basic parameters
  149. epoch_size = len(self.train_loader)
  150. img_size = self.args.img_size
  151. t0 = time.time()
  152. nw = epoch_size * self.args.wp_epoch
  153. accumulate = accumulate = max(1, round(64 / self.args.batch_size))
  154. # train one epoch
  155. for iter_i, (images, targets) in enumerate(self.train_loader):
  156. ni = iter_i + self.epoch * epoch_size
  157. # Warmup
  158. if ni <= nw:
  159. xi = [0, nw] # x interp
  160. accumulate = max(1, np.interp(ni, xi, [1, 64 / self.args.batch_size]).round())
  161. for j, x in enumerate(self.optimizer.param_groups):
  162. # bias lr falls from 0.1 to lr0, all other lrs rise from 0.0 to lr0
  163. x['lr'] = np.interp(
  164. ni, xi, [self.warmup_dict['warmup_bias_lr'] if j == 0 else 0.0, x['initial_lr'] * self.lf(self.epoch)])
  165. if 'momentum' in x:
  166. x['momentum'] = np.interp(ni, xi, [self.warmup_dict['warmup_momentum'], self.optimizer_dict['momentum']])
  167. # to device
  168. images = images.to(self.device, non_blocking=True).float() / 255.
  169. # Multi scale
  170. if self.args.multi_scale:
  171. images, targets, img_size = self.rescale_image_targets(
  172. images, targets, self.model_cfg['stride'], self.args.min_box_size, self.model_cfg['multi_scale'])
  173. else:
  174. targets = self.refine_targets(targets, self.args.min_box_size)
  175. # visualize train targets
  176. if self.args.vis_tgt:
  177. vis_data(images*255, targets)
  178. # inference
  179. with torch.cuda.amp.autocast(enabled=self.args.fp16):
  180. outputs = model(images)
  181. # loss
  182. loss_dict = self.criterion(outputs=outputs, targets=targets, epoch=self.epoch)
  183. losses = loss_dict['losses']
  184. losses *= images.shape[0] # loss * bs
  185. # reduce
  186. loss_dict_reduced = distributed_utils.reduce_dict(loss_dict)
  187. # gradient averaged between devices in DDP mode
  188. losses *= distributed_utils.get_world_size()
  189. # backward
  190. self.scaler.scale(losses).backward()
  191. # Optimize
  192. if ni - self.last_opt_step >= accumulate:
  193. if self.clip_grad > 0:
  194. # unscale gradients
  195. self.scaler.unscale_(self.optimizer)
  196. # clip gradients
  197. torch.nn.utils.clip_grad_norm_(model.parameters(), max_norm=self.clip_grad)
  198. # optimizer.step
  199. self.scaler.step(self.optimizer)
  200. self.scaler.update()
  201. self.optimizer.zero_grad()
  202. # ema
  203. if self.model_ema is not None:
  204. self.model_ema.update(model)
  205. self.last_opt_step = ni
  206. # display
  207. if distributed_utils.is_main_process() and iter_i % 10 == 0:
  208. t1 = time.time()
  209. cur_lr = [param_group['lr'] for param_group in self.optimizer.param_groups]
  210. # basic infor
  211. log = '[Epoch: {}/{}]'.format(self.epoch+1, self.args.max_epoch)
  212. log += '[Iter: {}/{}]'.format(iter_i, epoch_size)
  213. log += '[lr: {:.6f}]'.format(cur_lr[2])
  214. # loss infor
  215. for k in loss_dict_reduced.keys():
  216. log += '[{}: {:.2f}]'.format(k, loss_dict_reduced[k])
  217. # other infor
  218. log += '[time: {:.2f}]'.format(t1 - t0)
  219. log += '[size: {}]'.format(img_size)
  220. # print log infor
  221. print(log, flush=True)
  222. t0 = time.time()
  223. self.lr_scheduler.step()
  224. def check_second_stage(self):
  225. # set second stage
  226. print('============== Second stage of Training ==============')
  227. self.second_stage = True
  228. # close mosaic augmentation
  229. if self.train_loader.dataset.mosaic_prob > 0.:
  230. print(' - Close < Mosaic Augmentation > ...')
  231. self.train_loader.dataset.mosaic_prob = 0.
  232. self.heavy_eval = True
  233. # close mixup augmentation
  234. if self.train_loader.dataset.mixup_prob > 0.:
  235. print(' - Close < Mixup Augmentation > ...')
  236. self.train_loader.dataset.mixup_prob = 0.
  237. self.heavy_eval = True
  238. # close rotation augmentation
  239. if 'degrees' in self.trans_cfg.keys() and self.trans_cfg['degrees'] > 0.0:
  240. print(' - Close < degress of rotation > ...')
  241. self.trans_cfg['degrees'] = 0.0
  242. if 'shear' in self.trans_cfg.keys() and self.trans_cfg['shear'] > 0.0:
  243. print(' - Close < shear of rotation >...')
  244. self.trans_cfg['shear'] = 0.0
  245. if 'perspective' in self.trans_cfg.keys() and self.trans_cfg['perspective'] > 0.0:
  246. print(' - Close < perspective of rotation > ...')
  247. self.trans_cfg['perspective'] = 0.0
  248. # close random affine
  249. if 'translate' in self.trans_cfg.keys() and self.trans_cfg['translate'] > 0.0:
  250. print(' - Close < translate of affine > ...')
  251. self.trans_cfg['translate'] = 0.0
  252. if 'scale' in self.trans_cfg.keys():
  253. print(' - Close < scale of affine >...')
  254. self.trans_cfg['scale'] = [1.0, 1.0]
  255. # build a new transform for second stage
  256. print(' - Rebuild transforms ...')
  257. self.train_transform, self.trans_cfg = build_transform(
  258. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=True)
  259. self.train_loader.dataset.transform = self.train_transform
  260. def refine_targets(self, targets, min_box_size):
  261. # rescale targets
  262. for tgt in targets:
  263. boxes = tgt["boxes"].clone()
  264. labels = tgt["labels"].clone()
  265. # refine tgt
  266. tgt_boxes_wh = boxes[..., 2:] - boxes[..., :2]
  267. min_tgt_size = torch.min(tgt_boxes_wh, dim=-1)[0]
  268. keep = (min_tgt_size >= min_box_size)
  269. tgt["boxes"] = boxes[keep]
  270. tgt["labels"] = labels[keep]
  271. return targets
  272. def rescale_image_targets(self, images, targets, stride, min_box_size, multi_scale_range=[0.5, 1.5]):
  273. """
  274. Deployed for Multi scale trick.
  275. """
  276. if isinstance(stride, int):
  277. max_stride = stride
  278. elif isinstance(stride, list):
  279. max_stride = max(stride)
  280. # During training phase, the shape of input image is square.
  281. old_img_size = images.shape[-1]
  282. new_img_size = random.randrange(old_img_size * multi_scale_range[0], old_img_size * multi_scale_range[1] + max_stride)
  283. new_img_size = new_img_size // max_stride * max_stride # size
  284. if new_img_size / old_img_size != 1:
  285. # interpolate
  286. images = torch.nn.functional.interpolate(
  287. input=images,
  288. size=new_img_size,
  289. mode='bilinear',
  290. align_corners=False)
  291. # rescale targets
  292. for tgt in targets:
  293. boxes = tgt["boxes"].clone()
  294. labels = tgt["labels"].clone()
  295. boxes = torch.clamp(boxes, 0, old_img_size)
  296. # rescale box
  297. boxes[:, [0, 2]] = boxes[:, [0, 2]] / old_img_size * new_img_size
  298. boxes[:, [1, 3]] = boxes[:, [1, 3]] / old_img_size * new_img_size
  299. # refine tgt
  300. tgt_boxes_wh = boxes[..., 2:] - boxes[..., :2]
  301. min_tgt_size = torch.min(tgt_boxes_wh, dim=-1)[0]
  302. keep = (min_tgt_size >= min_box_size)
  303. tgt["boxes"] = boxes[keep]
  304. tgt["labels"] = labels[keep]
  305. return images, targets, new_img_size
  306. # YOLOX-syle Trainer
  307. class YoloxTrainer(object):
  308. def __init__(self, args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size):
  309. # ------------------- basic parameters -------------------
  310. self.args = args
  311. self.epoch = 0
  312. self.best_map = -1.
  313. self.device = device
  314. self.criterion = criterion
  315. self.world_size = world_size
  316. self.grad_accumulate = args.grad_accumulate
  317. self.no_aug_epoch = args.no_aug_epoch
  318. self.heavy_eval = False
  319. self.second_stage = False
  320. # path to save model
  321. self.path_to_save = os.path.join(args.save_folder, args.dataset, args.model)
  322. os.makedirs(self.path_to_save, exist_ok=True)
  323. # ---------------------------- Hyperparameters refer to YOLOX ----------------------------
  324. self.optimizer_dict = {'optimizer': 'sgd', 'momentum': 0.9, 'weight_decay': 5e-4, 'lr0': 0.01}
  325. self.ema_dict = {'ema_decay': 0.9998, 'ema_tau': 2000}
  326. self.lr_schedule_dict = {'scheduler': 'cosine', 'lrf': 0.05}
  327. self.warmup_dict = {'warmup_momentum': 0.8, 'warmup_bias_lr': 0.1}
  328. # ---------------------------- Build Dataset & Model & Trans. Config ----------------------------
  329. self.data_cfg = data_cfg
  330. self.model_cfg = model_cfg
  331. self.trans_cfg = trans_cfg
  332. # ---------------------------- Build Transform ----------------------------
  333. self.train_transform, self.trans_cfg = build_transform(
  334. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=True)
  335. self.val_transform, _ = build_transform(
  336. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=False)
  337. # ---------------------------- Build Dataset & Dataloader ----------------------------
  338. self.dataset, self.dataset_info = build_dataset(self.args, self.data_cfg, self.trans_cfg, self.train_transform, is_train=True)
  339. self.train_loader = build_dataloader(self.args, self.dataset, self.args.batch_size // self.world_size, CollateFunc())
  340. # ---------------------------- Build Evaluator ----------------------------
  341. self.evaluator = build_evluator(self.args, self.data_cfg, self.val_transform, self.device)
  342. # ---------------------------- Build Grad. Scaler ----------------------------
  343. self.scaler = torch.cuda.amp.GradScaler(enabled=self.args.fp16)
  344. # ---------------------------- Build Optimizer ----------------------------
  345. self.optimizer_dict['lr0'] *= self.args.batch_size * self.grad_accumulate / 64
  346. self.optimizer, self.start_epoch = build_yolo_optimizer(self.optimizer_dict, model, self.args.resume)
  347. # ---------------------------- Build LR Scheduler ----------------------------
  348. self.lr_scheduler, self.lf = build_lr_scheduler(self.lr_schedule_dict, self.optimizer, self.args.max_epoch - self.no_aug_epoch)
  349. self.lr_scheduler.last_epoch = self.start_epoch - 1 # do not move
  350. if self.args.resume:
  351. self.lr_scheduler.step()
  352. # ---------------------------- Build Model-EMA ----------------------------
  353. if self.args.ema and distributed_utils.get_rank() in [-1, 0]:
  354. print('Build ModelEMA ...')
  355. self.model_ema = ModelEMA(self.ema_dict, model, self.start_epoch * len(self.train_loader))
  356. else:
  357. self.model_ema = None
  358. def train(self, model):
  359. for epoch in range(self.start_epoch, self.args.max_epoch):
  360. if self.args.distributed:
  361. self.train_loader.batch_sampler.sampler.set_epoch(epoch)
  362. # check second stage
  363. if epoch >= (self.args.max_epoch - self.no_aug_epoch - 1) and not self.second_stage:
  364. self.check_second_stage()
  365. # save model of the last mosaic epoch
  366. weight_name = '{}_last_mosaic_epoch.pth'.format(self.args.model)
  367. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  368. if not os.path.exists(checkpoint_path):
  369. print('Saving state of the last Mosaic epoch-{}.'.format(self.epoch + 1))
  370. torch.save({'model': model.state_dict(),
  371. 'mAP': round(self.evaluator.map*100, 1),
  372. 'optimizer': self.optimizer.state_dict(),
  373. 'epoch': self.epoch,
  374. 'args': self.args},
  375. checkpoint_path)
  376. # train one epoch
  377. self.epoch = epoch
  378. self.train_one_epoch(model)
  379. # eval one epoch
  380. if self.heavy_eval:
  381. model_eval = model.module if self.args.distributed else model
  382. self.eval(model_eval)
  383. else:
  384. model_eval = model.module if self.args.distributed else model
  385. if (epoch % self.args.eval_epoch) == 0 or (epoch == self.args.max_epoch - 1):
  386. self.eval(model_eval)
  387. def eval(self, model):
  388. # chech model
  389. model_eval = model if self.model_ema is None else self.model_ema.ema
  390. if distributed_utils.is_main_process():
  391. # check evaluator
  392. if self.evaluator is None:
  393. print('No evaluator ... save model and go on training.')
  394. print('Saving state, epoch: {}'.format(self.epoch + 1))
  395. weight_name = '{}_no_eval.pth'.format(self.args.model)
  396. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  397. torch.save({'model': model_eval.state_dict(),
  398. 'mAP': -1.,
  399. 'optimizer': self.optimizer.state_dict(),
  400. 'epoch': self.epoch,
  401. 'args': self.args},
  402. checkpoint_path)
  403. else:
  404. print('eval ...')
  405. # set eval mode
  406. model_eval.trainable = False
  407. model_eval.eval()
  408. # evaluate
  409. with torch.no_grad():
  410. self.evaluator.evaluate(model_eval)
  411. # save model
  412. cur_map = self.evaluator.map
  413. if cur_map > self.best_map:
  414. # update best-map
  415. self.best_map = cur_map
  416. # save model
  417. print('Saving state, epoch:', self.epoch + 1)
  418. weight_name = '{}_best.pth'.format(self.args.model)
  419. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  420. torch.save({'model': model_eval.state_dict(),
  421. 'mAP': round(self.best_map*100, 1),
  422. 'optimizer': self.optimizer.state_dict(),
  423. 'epoch': self.epoch,
  424. 'args': self.args},
  425. checkpoint_path)
  426. # set train mode.
  427. model_eval.trainable = True
  428. model_eval.train()
  429. if self.args.distributed:
  430. # wait for all processes to synchronize
  431. dist.barrier()
  432. def train_one_epoch(self, model):
  433. # basic parameters
  434. epoch_size = len(self.train_loader)
  435. img_size = self.args.img_size
  436. t0 = time.time()
  437. nw = epoch_size * self.args.wp_epoch
  438. # Train one epoch
  439. for iter_i, (images, targets) in enumerate(self.train_loader):
  440. ni = iter_i + self.epoch * epoch_size
  441. # Warmup
  442. if ni <= nw:
  443. xi = [0, nw] # x interp
  444. for j, x in enumerate(self.optimizer.param_groups):
  445. # bias lr falls from 0.1 to lr0, all other lrs rise from 0.0 to lr0
  446. x['lr'] = np.interp(
  447. ni, xi, [self.warmup_dict['warmup_bias_lr'] if j == 0 else 0.0, x['initial_lr'] * self.lf(self.epoch)])
  448. if 'momentum' in x:
  449. x['momentum'] = np.interp(ni, xi, [self.warmup_dict['warmup_momentum'], self.optimizer_dict['momentum']])
  450. # To device
  451. images = images.to(self.device, non_blocking=True).float() / 255.
  452. # Multi scale
  453. if self.args.multi_scale and ni % 10 == 0:
  454. images, targets, img_size = self.rescale_image_targets(
  455. images, targets, self.model_cfg['stride'], self.args.min_box_size, self.model_cfg['multi_scale'])
  456. else:
  457. targets = self.refine_targets(targets, self.args.min_box_size)
  458. # Visualize train targets
  459. if self.args.vis_tgt:
  460. vis_data(images*255, targets)
  461. # Inference
  462. with torch.cuda.amp.autocast(enabled=self.args.fp16):
  463. outputs = model(images)
  464. # Compute loss
  465. loss_dict = self.criterion(outputs=outputs, targets=targets, epoch=self.epoch)
  466. losses = loss_dict['losses']
  467. # Grad Accu
  468. if self.grad_accumulate > 1:
  469. losses /= self.grad_accumulate
  470. loss_dict_reduced = distributed_utils.reduce_dict(loss_dict)
  471. # Backward
  472. self.scaler.scale(losses).backward()
  473. # Optimize
  474. if ni % self.grad_accumulate == 0:
  475. self.scaler.step(self.optimizer)
  476. self.scaler.update()
  477. self.optimizer.zero_grad()
  478. # ema
  479. if self.model_ema is not None:
  480. self.model_ema.update(model)
  481. # Logs
  482. if distributed_utils.is_main_process() and iter_i % 10 == 0:
  483. t1 = time.time()
  484. cur_lr = [param_group['lr'] for param_group in self.optimizer.param_groups]
  485. # basic infor
  486. log = '[Epoch: {}/{}]'.format(self.epoch+1, self.args.max_epoch)
  487. log += '[Iter: {}/{}]'.format(iter_i, epoch_size)
  488. log += '[lr: {:.6f}]'.format(cur_lr[2])
  489. # loss infor
  490. for k in loss_dict_reduced.keys():
  491. loss_val = loss_dict_reduced[k]
  492. if k == 'losses':
  493. loss_val *= self.grad_accumulate
  494. log += '[{}: {:.2f}]'.format(k, loss_val)
  495. # other infor
  496. log += '[time: {:.2f}]'.format(t1 - t0)
  497. log += '[size: {}]'.format(img_size)
  498. # print log infor
  499. print(log, flush=True)
  500. t0 = time.time()
  501. # LR Schedule
  502. if not self.second_stage:
  503. self.lr_scheduler.step()
  504. def check_second_stage(self):
  505. # set second stage
  506. print('============== Second stage of Training ==============')
  507. self.second_stage = True
  508. # close mosaic augmentation
  509. if self.train_loader.dataset.mosaic_prob > 0.:
  510. print(' - Close < Mosaic Augmentation > ...')
  511. self.train_loader.dataset.mosaic_prob = 0.
  512. self.heavy_eval = True
  513. # close mixup augmentation
  514. if self.train_loader.dataset.mixup_prob > 0.:
  515. print(' - Close < Mixup Augmentation > ...')
  516. self.train_loader.dataset.mixup_prob = 0.
  517. self.heavy_eval = True
  518. # close rotation augmentation
  519. if 'degrees' in self.trans_cfg.keys() and self.trans_cfg['degrees'] > 0.0:
  520. print(' - Close < degress of rotation > ...')
  521. self.trans_cfg['degrees'] = 0.0
  522. if 'shear' in self.trans_cfg.keys() and self.trans_cfg['shear'] > 0.0:
  523. print(' - Close < shear of rotation >...')
  524. self.trans_cfg['shear'] = 0.0
  525. if 'perspective' in self.trans_cfg.keys() and self.trans_cfg['perspective'] > 0.0:
  526. print(' - Close < perspective of rotation > ...')
  527. self.trans_cfg['perspective'] = 0.0
  528. # close random affine
  529. if 'translate' in self.trans_cfg.keys() and self.trans_cfg['translate'] > 0.0:
  530. print(' - Close < translate of affine > ...')
  531. self.trans_cfg['translate'] = 0.0
  532. if 'scale' in self.trans_cfg.keys():
  533. print(' - Close < scale of affine >...')
  534. self.trans_cfg['scale'] = [1.0, 1.0]
  535. # build a new transform for second stage
  536. print(' - Rebuild transforms ...')
  537. self.train_transform, self.trans_cfg = build_transform(
  538. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=True)
  539. self.train_loader.dataset.transform = self.train_transform
  540. def refine_targets(self, targets, min_box_size):
  541. # rescale targets
  542. for tgt in targets:
  543. boxes = tgt["boxes"].clone()
  544. labels = tgt["labels"].clone()
  545. # refine tgt
  546. tgt_boxes_wh = boxes[..., 2:] - boxes[..., :2]
  547. min_tgt_size = torch.min(tgt_boxes_wh, dim=-1)[0]
  548. keep = (min_tgt_size >= min_box_size)
  549. tgt["boxes"] = boxes[keep]
  550. tgt["labels"] = labels[keep]
  551. return targets
  552. def rescale_image_targets(self, images, targets, stride, min_box_size, multi_scale_range=[0.5, 1.5]):
  553. """
  554. Deployed for Multi scale trick.
  555. """
  556. if isinstance(stride, int):
  557. max_stride = stride
  558. elif isinstance(stride, list):
  559. max_stride = max(stride)
  560. # During training phase, the shape of input image is square.
  561. old_img_size = images.shape[-1]
  562. new_img_size = random.randrange(old_img_size * multi_scale_range[0], old_img_size * multi_scale_range[1] + max_stride)
  563. new_img_size = new_img_size // max_stride * max_stride # size
  564. if new_img_size / old_img_size != 1:
  565. # interpolate
  566. images = torch.nn.functional.interpolate(
  567. input=images,
  568. size=new_img_size,
  569. mode='bilinear',
  570. align_corners=False)
  571. # rescale targets
  572. for tgt in targets:
  573. boxes = tgt["boxes"].clone()
  574. labels = tgt["labels"].clone()
  575. boxes = torch.clamp(boxes, 0, old_img_size)
  576. # rescale box
  577. boxes[:, [0, 2]] = boxes[:, [0, 2]] / old_img_size * new_img_size
  578. boxes[:, [1, 3]] = boxes[:, [1, 3]] / old_img_size * new_img_size
  579. # refine tgt
  580. tgt_boxes_wh = boxes[..., 2:] - boxes[..., :2]
  581. min_tgt_size = torch.min(tgt_boxes_wh, dim=-1)[0]
  582. keep = (min_tgt_size >= min_box_size)
  583. tgt["boxes"] = boxes[keep]
  584. tgt["labels"] = labels[keep]
  585. return images, targets, new_img_size
  586. # RTMDet-syle Trainer
  587. class RTMTrainer(object):
  588. def __init__(self, args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size):
  589. # ------------------- basic parameters -------------------
  590. self.args = args
  591. self.epoch = 0
  592. self.best_map = -1.
  593. self.device = device
  594. self.criterion = criterion
  595. self.world_size = world_size
  596. self.grad_accumulate = args.grad_accumulate
  597. self.clip_grad = 35
  598. self.heavy_eval = False
  599. # weak augmentatino stage
  600. self.second_stage = False
  601. self.third_stage = False
  602. self.second_stage_epoch = args.no_aug_epoch
  603. self.third_stage_epoch = args.no_aug_epoch // 3
  604. # path to save model
  605. self.path_to_save = os.path.join(args.save_folder, args.dataset, args.model)
  606. os.makedirs(self.path_to_save, exist_ok=True)
  607. # ---------------------------- Hyperparameters refer to RTMDet ----------------------------
  608. self.optimizer_dict = {'optimizer': 'adamw', 'momentum': None, 'weight_decay': 5e-2, 'lr0': 0.001}
  609. self.ema_dict = {'ema_decay': 0.9998, 'ema_tau': 2000}
  610. self.lr_schedule_dict = {'scheduler': 'cosine', 'lrf': 0.05}
  611. self.warmup_dict = {'warmup_momentum': 0.8, 'warmup_bias_lr': 0.1}
  612. # ---------------------------- Build Dataset & Model & Trans. Config ----------------------------
  613. self.data_cfg = data_cfg
  614. self.model_cfg = model_cfg
  615. self.trans_cfg = trans_cfg
  616. # ---------------------------- Build Transform ----------------------------
  617. self.train_transform, self.trans_cfg = build_transform(
  618. args=args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=True)
  619. self.val_transform, _ = build_transform(
  620. args=args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=False)
  621. # ---------------------------- Build Dataset & Dataloader ----------------------------
  622. self.dataset, self.dataset_info = build_dataset(args, self.data_cfg, self.trans_cfg, self.train_transform, is_train=True)
  623. self.train_loader = build_dataloader(args, self.dataset, self.args.batch_size // self.world_size, CollateFunc())
  624. # ---------------------------- Build Evaluator ----------------------------
  625. self.evaluator = build_evluator(args, self.data_cfg, self.val_transform, self.device)
  626. # ---------------------------- Build Grad. Scaler ----------------------------
  627. self.scaler = torch.cuda.amp.GradScaler(enabled=args.fp16)
  628. # ---------------------------- Build Optimizer ----------------------------
  629. self.optimizer_dict['lr0'] *= args.batch_size * self.grad_accumulate / 64
  630. self.optimizer, self.start_epoch = build_yolo_optimizer(self.optimizer_dict, model, args.resume)
  631. # ---------------------------- Build LR Scheduler ----------------------------
  632. self.lr_scheduler, self.lf = build_lr_scheduler(self.lr_schedule_dict, self.optimizer, args.max_epoch - args.no_aug_epoch)
  633. self.lr_scheduler.last_epoch = self.start_epoch - 1 # do not move
  634. if self.args.resume:
  635. self.lr_scheduler.step()
  636. # ---------------------------- Build Model-EMA ----------------------------
  637. if self.args.ema and distributed_utils.get_rank() in [-1, 0]:
  638. print('Build ModelEMA ...')
  639. self.model_ema = ModelEMA(self.ema_dict, model, self.start_epoch * len(self.train_loader))
  640. else:
  641. self.model_ema = None
  642. def train(self, model):
  643. for epoch in range(self.start_epoch, self.args.max_epoch):
  644. if self.args.distributed:
  645. self.train_loader.batch_sampler.sampler.set_epoch(epoch)
  646. # check second stage
  647. if epoch >= (self.args.max_epoch - self.second_stage_epoch - 1) and not self.second_stage:
  648. self.check_second_stage()
  649. # save model of the last mosaic epoch
  650. weight_name = '{}_last_mosaic_epoch.pth'.format(self.args.model)
  651. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  652. print('Saving state of the last Mosaic epoch-{}.'.format(self.epoch + 1))
  653. torch.save({'model': model.state_dict(),
  654. 'mAP': round(self.evaluator.map*100, 1),
  655. 'optimizer': self.optimizer.state_dict(),
  656. 'epoch': self.epoch,
  657. 'args': self.args},
  658. checkpoint_path)
  659. # check third stage
  660. if epoch >= (self.args.max_epoch - self.third_stage_epoch - 1) and not self.third_stage:
  661. self.check_third_stage()
  662. # save model of the last mosaic epoch
  663. weight_name = '{}_last_weak_augment_epoch.pth'.format(self.args.model)
  664. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  665. print('Saving state of the last weak augment epoch-{}.'.format(self.epoch + 1))
  666. torch.save({'model': model.state_dict(),
  667. 'mAP': round(self.evaluator.map*100, 1),
  668. 'optimizer': self.optimizer.state_dict(),
  669. 'epoch': self.epoch,
  670. 'args': self.args},
  671. checkpoint_path)
  672. # train one epoch
  673. self.epoch = epoch
  674. self.train_one_epoch(model)
  675. # eval one epoch
  676. if self.heavy_eval:
  677. model_eval = model.module if self.args.distributed else model
  678. self.eval(model_eval)
  679. else:
  680. model_eval = model.module if self.args.distributed else model
  681. if (epoch % self.args.eval_epoch) == 0 or (epoch == self.args.max_epoch - 1):
  682. self.eval(model_eval)
  683. def eval(self, model):
  684. # chech model
  685. model_eval = model if self.model_ema is None else self.model_ema.ema
  686. if distributed_utils.is_main_process():
  687. # check evaluator
  688. if self.evaluator is None:
  689. print('No evaluator ... save model and go on training.')
  690. print('Saving state, epoch: {}'.format(self.epoch + 1))
  691. weight_name = '{}_no_eval.pth'.format(self.args.model)
  692. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  693. torch.save({'model': model_eval.state_dict(),
  694. 'mAP': -1.,
  695. 'optimizer': self.optimizer.state_dict(),
  696. 'epoch': self.epoch,
  697. 'args': self.args},
  698. checkpoint_path)
  699. else:
  700. print('eval ...')
  701. # set eval mode
  702. model_eval.trainable = False
  703. model_eval.eval()
  704. # evaluate
  705. with torch.no_grad():
  706. self.evaluator.evaluate(model_eval)
  707. # save model
  708. cur_map = self.evaluator.map
  709. if cur_map > self.best_map:
  710. # update best-map
  711. self.best_map = cur_map
  712. # save model
  713. print('Saving state, epoch:', self.epoch + 1)
  714. weight_name = '{}_best.pth'.format(self.args.model)
  715. checkpoint_path = os.path.join(self.path_to_save, weight_name)
  716. torch.save({'model': model_eval.state_dict(),
  717. 'mAP': round(self.best_map*100, 1),
  718. 'optimizer': self.optimizer.state_dict(),
  719. 'epoch': self.epoch,
  720. 'args': self.args},
  721. checkpoint_path)
  722. # set train mode.
  723. model_eval.trainable = True
  724. model_eval.train()
  725. if self.args.distributed:
  726. # wait for all processes to synchronize
  727. dist.barrier()
  728. def train_one_epoch(self, model):
  729. # basic parameters
  730. epoch_size = len(self.train_loader)
  731. img_size = self.args.img_size
  732. t0 = time.time()
  733. nw = epoch_size * self.args.wp_epoch
  734. # Train one epoch
  735. for iter_i, (images, targets) in enumerate(self.train_loader):
  736. ni = iter_i + self.epoch * epoch_size
  737. # Warmup
  738. if ni <= nw:
  739. xi = [0, nw] # x interp
  740. for j, x in enumerate(self.optimizer.param_groups):
  741. # bias lr falls from 0.1 to lr0, all other lrs rise from 0.0 to lr0
  742. x['lr'] = np.interp(
  743. ni, xi, [self.warmup_dict['warmup_bias_lr'] if j == 0 else 0.0, x['initial_lr'] * self.lf(self.epoch)])
  744. if 'momentum' in x:
  745. x['momentum'] = np.interp(ni, xi, [self.warmup_dict['warmup_momentum'], self.optimizer_dict['momentum']])
  746. # To device
  747. images = images.to(self.device, non_blocking=True).float() / 255.
  748. # Multi scale
  749. if self.args.multi_scale:
  750. images, targets, img_size = self.rescale_image_targets(
  751. images, targets, self.model_cfg['stride'], self.args.min_box_size, self.model_cfg['multi_scale'])
  752. else:
  753. targets = self.refine_targets(targets, self.args.min_box_size)
  754. # Visualize train targets
  755. if self.args.vis_tgt:
  756. vis_data(images*255, targets)
  757. # Inference
  758. with torch.cuda.amp.autocast(enabled=self.args.fp16):
  759. outputs = model(images)
  760. # Compute loss
  761. loss_dict = self.criterion(outputs=outputs, targets=targets, epoch=self.epoch)
  762. losses = loss_dict['losses']
  763. # Grad Accumulate
  764. if self.grad_accumulate > 1:
  765. losses /= self.grad_accumulate
  766. loss_dict_reduced = distributed_utils.reduce_dict(loss_dict)
  767. # Backward
  768. self.scaler.scale(losses).backward()
  769. # Optimize
  770. if ni % self.grad_accumulate == 0:
  771. if self.clip_grad > 0:
  772. # unscale gradients
  773. self.scaler.unscale_(self.optimizer)
  774. # clip gradients
  775. torch.nn.utils.clip_grad_norm_(model.parameters(), max_norm=self.clip_grad)
  776. # optimizer.step
  777. self.scaler.step(self.optimizer)
  778. self.scaler.update()
  779. self.optimizer.zero_grad()
  780. # ema
  781. if self.model_ema is not None:
  782. self.model_ema.update(model)
  783. # Logs
  784. if distributed_utils.is_main_process() and iter_i % 10 == 0:
  785. t1 = time.time()
  786. cur_lr = [param_group['lr'] for param_group in self.optimizer.param_groups]
  787. # basic infor
  788. log = '[Epoch: {}/{}]'.format(self.epoch+1, self.args.max_epoch)
  789. log += '[Iter: {}/{}]'.format(iter_i, epoch_size)
  790. log += '[lr: {:.6f}]'.format(cur_lr[2])
  791. # loss infor
  792. for k in loss_dict_reduced.keys():
  793. loss_val = loss_dict_reduced[k]
  794. if k == 'losses':
  795. loss_val *= self.grad_accumulate
  796. log += '[{}: {:.2f}]'.format(k, loss_val)
  797. # other infor
  798. log += '[time: {:.2f}]'.format(t1 - t0)
  799. log += '[size: {}]'.format(img_size)
  800. # print log infor
  801. print(log, flush=True)
  802. t0 = time.time()
  803. # LR Schedule
  804. if not self.second_stage:
  805. self.lr_scheduler.step()
  806. def refine_targets(self, targets, min_box_size):
  807. # rescale targets
  808. for tgt in targets:
  809. boxes = tgt["boxes"].clone()
  810. labels = tgt["labels"].clone()
  811. # refine tgt
  812. tgt_boxes_wh = boxes[..., 2:] - boxes[..., :2]
  813. min_tgt_size = torch.min(tgt_boxes_wh, dim=-1)[0]
  814. keep = (min_tgt_size >= min_box_size)
  815. tgt["boxes"] = boxes[keep]
  816. tgt["labels"] = labels[keep]
  817. return targets
  818. def rescale_image_targets(self, images, targets, stride, min_box_size, multi_scale_range=[0.5, 1.5]):
  819. """
  820. Deployed for Multi scale trick.
  821. """
  822. if isinstance(stride, int):
  823. max_stride = stride
  824. elif isinstance(stride, list):
  825. max_stride = max(stride)
  826. # During training phase, the shape of input image is square.
  827. old_img_size = images.shape[-1]
  828. new_img_size = random.randrange(old_img_size * multi_scale_range[0], old_img_size * multi_scale_range[1] + max_stride)
  829. new_img_size = new_img_size // max_stride * max_stride # size
  830. if new_img_size / old_img_size != 1:
  831. # interpolate
  832. images = torch.nn.functional.interpolate(
  833. input=images,
  834. size=new_img_size,
  835. mode='bilinear',
  836. align_corners=False)
  837. # rescale targets
  838. for tgt in targets:
  839. boxes = tgt["boxes"].clone()
  840. labels = tgt["labels"].clone()
  841. boxes = torch.clamp(boxes, 0, old_img_size)
  842. # rescale box
  843. boxes[:, [0, 2]] = boxes[:, [0, 2]] / old_img_size * new_img_size
  844. boxes[:, [1, 3]] = boxes[:, [1, 3]] / old_img_size * new_img_size
  845. # refine tgt
  846. tgt_boxes_wh = boxes[..., 2:] - boxes[..., :2]
  847. min_tgt_size = torch.min(tgt_boxes_wh, dim=-1)[0]
  848. keep = (min_tgt_size >= min_box_size)
  849. tgt["boxes"] = boxes[keep]
  850. tgt["labels"] = labels[keep]
  851. return images, targets, new_img_size
  852. def check_second_stage(self):
  853. # set second stage
  854. print('============== Second stage of Training ==============')
  855. self.second_stage = True
  856. # close mosaic augmentation
  857. if self.train_loader.dataset.mosaic_prob > 0.:
  858. print(' - Close < Mosaic Augmentation > ...')
  859. self.train_loader.dataset.mosaic_prob = 0.
  860. self.heavy_eval = True
  861. # close mixup augmentation
  862. if self.train_loader.dataset.mixup_prob > 0.:
  863. print(' - Close < Mixup Augmentation > ...')
  864. self.train_loader.dataset.mixup_prob = 0.
  865. self.heavy_eval = True
  866. # close rotation augmentation
  867. if 'degrees' in self.trans_cfg.keys() and self.trans_cfg['degrees'] > 0.0:
  868. print(' - Close < degress of rotation > ...')
  869. self.trans_cfg['degrees'] = 0.0
  870. if 'shear' in self.trans_cfg.keys() and self.trans_cfg['shear'] > 0.0:
  871. print(' - Close < shear of rotation >...')
  872. self.trans_cfg['shear'] = 0.0
  873. if 'perspective' in self.trans_cfg.keys() and self.trans_cfg['perspective'] > 0.0:
  874. print(' - Close < perspective of rotation > ...')
  875. self.trans_cfg['perspective'] = 0.0
  876. # weaken random affine
  877. if 'translate' in self.trans_cfg.keys() and self.trans_cfg['translate'] > 0.0:
  878. print(' - Weaken < translate of affine > ...')
  879. self.trans_cfg['translate'] = 0.2
  880. if 'scale' in self.trans_cfg.keys():
  881. print(' - Weaken < scale of affine >...')
  882. self.trans_cfg['scale'] = [0.5, 2.0]
  883. # build a new transform for second stage
  884. print(' - Rebuild transforms ...')
  885. self.train_transform, self.trans_cfg = build_transform(
  886. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=True)
  887. self.train_loader.dataset.transform = self.train_transform
  888. def check_third_stage(self):
  889. # set third stage
  890. print('============== Third stage of Training ==============')
  891. self.third_stage = True
  892. # close random affine
  893. if 'translate' in self.trans_cfg.keys() and self.trans_cfg['translate'] > 0.0:
  894. print(' - Close < translate of affine > ...')
  895. self.trans_cfg['translate'] = 0.0
  896. if 'scale' in self.trans_cfg.keys():
  897. print(' - Close < scale of affine >...')
  898. self.trans_cfg['scale'] = [1.0, 1.0]
  899. # build a new transform for second stage
  900. print(' - Rebuild transforms ...')
  901. self.train_transform, self.trans_cfg = build_transform(
  902. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=True)
  903. self.train_loader.dataset.transform = self.train_transform
  904. # Trainer for DETR
  905. class DetrTrainer(object):
  906. def __init__(self, args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size):
  907. # ------------------- basic parameters -------------------
  908. self.args = args
  909. self.epoch = 0
  910. self.best_map = -1.
  911. self.last_opt_step = 0
  912. self.no_aug_epoch = args.no_aug_epoch
  913. self.clip_grad = -1
  914. self.device = device
  915. self.criterion = criterion
  916. self.world_size = world_size
  917. self.second_stage = False
  918. self.heavy_eval = False
  919. self.optimizer_dict = {'optimizer': 'adamw', 'momentum': None, 'weight_decay': 1e-4, 'lr0': 0.001, 'backbone_lr_raio': 0.1}
  920. self.ema_dict = {'ema_decay': 0.9998, 'ema_tau': 2000}
  921. self.lr_schedule_dict = {'scheduler': 'linear', 'lrf': 0.01}
  922. self.warmup_dict = {'warmup_momentum': 0.8, 'warmup_bias_lr': 0.1}
  923. # ---------------------------- Build Dataset & Model & Trans. Config ----------------------------
  924. self.data_cfg = data_cfg
  925. self.model_cfg = model_cfg
  926. self.trans_cfg = trans_cfg
  927. # ---------------------------- Build Transform ----------------------------
  928. self.train_transform, self.trans_cfg = build_transform(
  929. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=True)
  930. self.val_transform, _ = build_transform(
  931. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=False)
  932. # ---------------------------- Build Dataset & Dataloader ----------------------------
  933. self.dataset, self.dataset_info = build_dataset(self.args, self.data_cfg, self.trans_cfg, self.train_transform, is_train=True)
  934. self.train_loader = build_dataloader(self.args, self.dataset, self.args.batch_size // self.world_size, CollateFunc())
  935. # ---------------------------- Build Evaluator ----------------------------
  936. self.evaluator = build_evluator(self.args, self.data_cfg, self.val_transform, self.device)
  937. # ---------------------------- Build Grad. Scaler ----------------------------
  938. self.scaler = torch.cuda.amp.GradScaler(enabled=self.args.fp16)
  939. # ---------------------------- Build Optimizer ----------------------------
  940. self.optimizer_dict['lr0'] *= self.args.batch_size / 16.
  941. self.optimizer, self.start_epoch = build_detr_optimizer(self.optimizer_dict, model, self.args.resume)
  942. # ---------------------------- Build LR Scheduler ----------------------------
  943. self.lr_scheduler, self.lf = build_lr_scheduler(self.lr_schedule_dict, self.optimizer, self.args.max_epoch)
  944. self.lr_scheduler.last_epoch = self.start_epoch - 1 # do not move
  945. if self.args.resume:
  946. self.lr_scheduler.step()
  947. # ---------------------------- Build Model-EMA ----------------------------
  948. if self.args.ema and distributed_utils.get_rank() in [-1, 0]:
  949. print('Build ModelEMA ...')
  950. self.model_ema = ModelEMA(self.ema_dict, model, self.start_epoch * len(self.train_loader))
  951. else:
  952. self.model_ema = None
  953. def check_second_stage(self):
  954. # set second stage
  955. print('============== Second stage of Training ==============')
  956. self.second_stage = True
  957. # close mosaic augmentation
  958. if self.train_loader.dataset.mosaic_prob > 0.:
  959. print(' - Close < Mosaic Augmentation > ...')
  960. self.train_loader.dataset.mosaic_prob = 0.
  961. self.heavy_eval = True
  962. # close mixup augmentation
  963. if self.train_loader.dataset.mixup_prob > 0.:
  964. print(' - Close < Mixup Augmentation > ...')
  965. self.train_loader.dataset.mixup_prob = 0.
  966. self.heavy_eval = True
  967. # close rotation augmentation
  968. if 'degrees' in self.trans_cfg.keys() and self.trans_cfg['degrees'] > 0.0:
  969. print(' - Close < degress of rotation > ...')
  970. self.trans_cfg['degrees'] = 0.0
  971. if 'shear' in self.trans_cfg.keys() and self.trans_cfg['shear'] > 0.0:
  972. print(' - Close < shear of rotation >...')
  973. self.trans_cfg['shear'] = 0.0
  974. if 'perspective' in self.trans_cfg.keys() and self.trans_cfg['perspective'] > 0.0:
  975. print(' - Close < perspective of rotation > ...')
  976. self.trans_cfg['perspective'] = 0.0
  977. # build a new transform for second stage
  978. print(' - Rebuild transforms ...')
  979. self.train_transform, self.trans_cfg = build_transform(
  980. args=self.args, trans_config=self.trans_cfg, max_stride=self.model_cfg['max_stride'], is_train=True)
  981. self.train_loader.dataset.transform = self.train_transform
  982. def train(self, model):
  983. for epoch in range(self.start_epoch, self.args.max_epoch):
  984. if self.args.distributed:
  985. self.train_loader.batch_sampler.sampler.set_epoch(epoch)
  986. # check second stage
  987. if epoch >= (self.args.max_epoch - self.no_aug_epoch - 1) and not self.second_stage:
  988. self.check_second_stage()
  989. # train one epoch
  990. self.epoch = epoch
  991. self.train_one_epoch(model)
  992. # eval one epoch
  993. if self.heavy_eval:
  994. model_eval = model.module if self.args.distributed else model
  995. self.eval(model_eval)
  996. else:
  997. model_eval = model.module if self.args.distributed else model
  998. if (epoch % self.args.eval_epoch) == 0 or (epoch == self.args.max_epoch - 1):
  999. self.eval(model_eval)
  1000. def eval(self, model):
  1001. # chech model
  1002. model_eval = model if self.model_ema is None else self.model_ema.ema
  1003. # path to save model
  1004. path_to_save = os.path.join(self.args.save_folder, self.args.dataset, self.args.model)
  1005. os.makedirs(path_to_save, exist_ok=True)
  1006. if distributed_utils.is_main_process():
  1007. # check evaluator
  1008. if self.evaluator is None:
  1009. print('No evaluator ... save model and go on training.')
  1010. print('Saving state, epoch: {}'.format(self.epoch + 1))
  1011. weight_name = '{}_no_eval.pth'.format(self.args.model)
  1012. checkpoint_path = os.path.join(path_to_save, weight_name)
  1013. torch.save({'model': model_eval.state_dict(),
  1014. 'mAP': -1.,
  1015. 'optimizer': self.optimizer.state_dict(),
  1016. 'epoch': self.epoch,
  1017. 'args': self.args},
  1018. checkpoint_path)
  1019. else:
  1020. print('eval ...')
  1021. # set eval mode
  1022. model_eval.trainable = False
  1023. model_eval.eval()
  1024. # evaluate
  1025. with torch.no_grad():
  1026. self.evaluator.evaluate(model_eval)
  1027. # save model
  1028. cur_map = self.evaluator.map
  1029. if cur_map > self.best_map:
  1030. # update best-map
  1031. self.best_map = cur_map
  1032. # save model
  1033. print('Saving state, epoch:', self.epoch + 1)
  1034. weight_name = '{}_best.pth'.format(self.args.model)
  1035. checkpoint_path = os.path.join(path_to_save, weight_name)
  1036. torch.save({'model': model_eval.state_dict(),
  1037. 'mAP': round(self.best_map*100, 1),
  1038. 'optimizer': self.optimizer.state_dict(),
  1039. 'epoch': self.epoch,
  1040. 'args': self.args},
  1041. checkpoint_path)
  1042. # set train mode.
  1043. model_eval.trainable = True
  1044. model_eval.train()
  1045. if self.args.distributed:
  1046. # wait for all processes to synchronize
  1047. dist.barrier()
  1048. def train_one_epoch(self, model):
  1049. # basic parameters
  1050. epoch_size = len(self.train_loader)
  1051. img_size = self.args.img_size
  1052. t0 = time.time()
  1053. nw = epoch_size * self.args.wp_epoch
  1054. # train one epoch
  1055. for iter_i, (images, targets) in enumerate(self.train_loader):
  1056. ni = iter_i + self.epoch * epoch_size
  1057. # Warmup
  1058. if ni <= nw:
  1059. xi = [0, nw] # x interp
  1060. for j, x in enumerate(self.optimizer.param_groups):
  1061. # bias lr falls from 0.1 to lr0, all other lrs rise from 0.0 to lr0
  1062. x['lr'] = np.interp(
  1063. ni, xi, [0.0, x['initial_lr'] * self.lf(self.epoch)])
  1064. if 'momentum' in x:
  1065. x['momentum'] = np.interp(ni, xi, [self.model_cfg['warmup_momentum'], self.model_cfg['momentum']])
  1066. # To device
  1067. images = images.to(self.device, non_blocking=True).float() / 255.
  1068. # Multi scale
  1069. if self.args.multi_scale:
  1070. images, targets, img_size = self.rescale_image_targets(
  1071. images, targets, self.model_cfg['stride'], self.args.min_box_size, self.model_cfg['multi_scale'])
  1072. else:
  1073. targets = self.refine_targets(targets, self.args.min_box_size, img_size)
  1074. # Visualize targets
  1075. if self.args.vis_tgt:
  1076. vis_data(images*255, targets)
  1077. # Inference
  1078. with torch.cuda.amp.autocast(enabled=self.args.fp16):
  1079. outputs = model(images)
  1080. # Compute loss
  1081. loss_dict = self.criterion(outputs=outputs, targets=targets, epoch=self.epoch)
  1082. losses = loss_dict['losses']
  1083. loss_dict_reduced = distributed_utils.reduce_dict(loss_dict)
  1084. # Backward
  1085. self.scaler.scale(losses).backward()
  1086. # Optimize
  1087. if self.clip_grad > 0:
  1088. # unscale gradients
  1089. self.scaler.unscale_(self.optimizer)
  1090. # clip gradients
  1091. torch.nn.utils.clip_grad_norm_(model.parameters(), max_norm=self.clip_grad)
  1092. self.scaler.step(self.optimizer)
  1093. self.scaler.update()
  1094. self.optimizer.zero_grad()
  1095. # Model EMA
  1096. if self.model_ema is not None:
  1097. self.model_ema.update(model)
  1098. self.last_opt_step = ni
  1099. # Log
  1100. if distributed_utils.is_main_process() and iter_i % 10 == 0:
  1101. t1 = time.time()
  1102. cur_lr = [param_group['lr'] for param_group in self.optimizer.param_groups]
  1103. # basic infor
  1104. log = '[Epoch: {}/{}]'.format(self.epoch+1, self.args.max_epoch)
  1105. log += '[Iter: {}/{}]'.format(iter_i, epoch_size)
  1106. log += '[lr: {:.6f}]'.format(cur_lr[0])
  1107. # loss infor
  1108. for k in loss_dict_reduced.keys():
  1109. if self.args.vis_aux_loss:
  1110. log += '[{}: {:.2f}]'.format(k, loss_dict_reduced[k])
  1111. else:
  1112. if k in ['loss_cls', 'loss_bbox', 'loss_giou', 'losses']:
  1113. log += '[{}: {:.2f}]'.format(k, loss_dict_reduced[k])
  1114. # other infor
  1115. log += '[time: {:.2f}]'.format(t1 - t0)
  1116. log += '[size: {}]'.format(img_size)
  1117. # print log infor
  1118. print(log, flush=True)
  1119. t0 = time.time()
  1120. # LR Scheduler
  1121. self.lr_scheduler.step()
  1122. def refine_targets(self, targets, min_box_size, img_size):
  1123. # rescale targets
  1124. for tgt in targets:
  1125. boxes = tgt["boxes"]
  1126. labels = tgt["labels"]
  1127. # refine tgt
  1128. tgt_boxes_wh = boxes[..., 2:] - boxes[..., :2]
  1129. min_tgt_size = torch.min(tgt_boxes_wh, dim=-1)[0]
  1130. keep = (min_tgt_size >= min_box_size)
  1131. # xyxy -> cxcywh
  1132. new_boxes = torch.zeros_like(boxes)
  1133. new_boxes[..., :2] = (boxes[..., 2:] + boxes[..., :2]) * 0.5
  1134. new_boxes[..., 2:] = (boxes[..., 2:] - boxes[..., :2])
  1135. # normalize
  1136. new_boxes /= img_size
  1137. del boxes
  1138. tgt["boxes"] = new_boxes[keep]
  1139. tgt["labels"] = labels[keep]
  1140. return targets
  1141. def rescale_image_targets(self, images, targets, stride, min_box_size, multi_scale_range=[0.5, 1.5]):
  1142. """
  1143. Deployed for Multi scale trick.
  1144. """
  1145. if isinstance(stride, int):
  1146. max_stride = stride
  1147. elif isinstance(stride, list):
  1148. max_stride = max(stride)
  1149. # During training phase, the shape of input image is square.
  1150. old_img_size = images.shape[-1]
  1151. new_img_size = random.randrange(old_img_size * multi_scale_range[0], old_img_size * multi_scale_range[1] + max_stride)
  1152. new_img_size = new_img_size // max_stride * max_stride # size
  1153. if new_img_size / old_img_size != 1:
  1154. # interpolate
  1155. images = torch.nn.functional.interpolate(
  1156. input=images,
  1157. size=new_img_size,
  1158. mode='bilinear',
  1159. align_corners=False)
  1160. # rescale targets
  1161. for tgt in targets:
  1162. boxes = tgt["boxes"].clone()
  1163. labels = tgt["labels"].clone()
  1164. boxes = torch.clamp(boxes, 0, old_img_size)
  1165. # rescale box
  1166. boxes[:, [0, 2]] = boxes[:, [0, 2]] / old_img_size * new_img_size
  1167. boxes[:, [1, 3]] = boxes[:, [1, 3]] / old_img_size * new_img_size
  1168. # refine tgt
  1169. tgt_boxes_wh = boxes[..., 2:] - boxes[..., :2]
  1170. min_tgt_size = torch.min(tgt_boxes_wh, dim=-1)[0]
  1171. keep = (min_tgt_size >= min_box_size)
  1172. # xyxy -> cxcywh
  1173. new_boxes = torch.zeros_like(boxes)
  1174. new_boxes[..., :2] = (boxes[..., 2:] + boxes[..., :2]) * 0.5
  1175. new_boxes[..., 2:] = (boxes[..., 2:] - boxes[..., :2])
  1176. # normalize
  1177. new_boxes /= new_img_size
  1178. del boxes
  1179. tgt["boxes"] = new_boxes[keep]
  1180. tgt["labels"] = labels[keep]
  1181. return images, targets, new_img_size
  1182. # Build Trainer
  1183. def build_trainer(args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size):
  1184. if model_cfg['trainer_type'] == 'yolov8':
  1185. return Yolov8Trainer(args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size)
  1186. elif model_cfg['trainer_type'] == 'yolox':
  1187. return YoloxTrainer(args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size)
  1188. elif model_cfg['trainer_type'] == 'rtmdet':
  1189. return RTMTrainer(args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size)
  1190. elif model_cfg['trainer_type'] == 'detr':
  1191. return DetrTrainer(args, data_cfg, model_cfg, trans_cfg, device, model, criterion, world_size)
  1192. else:
  1193. raise NotImplementedError