def setup_tracker(): cfg.merge_from_file(cfg_file) model = ModelBuilder() model = load_pretrain(model, model_file).cuda().eval() tracker = build_tracker(model) warmup(model) return tracker
def main(): rank, world_size = dist_init() logger.info("init done") # load cfg cfg.merge_from_file(args.cfg) if rank == 0: if not os.path.exists(cfg.TRAIN.LOG_DIR): os.makedirs(cfg.TRAIN.LOG_DIR) init_log('global', logging.INFO) if cfg.TRAIN.LOG_DIR: add_file_handler('global', os.path.join(cfg.TRAIN.LOG_DIR, 'logs.txt'), logging.INFO) logger.info("Version Information: \n{}\n".format(commit())) logger.info("config \n{}".format(json.dumps(cfg, indent=4))) # create model model = ModelBuilder().cuda().train() # dist_model = DistModule(model) # load pretrained backbone weights if cfg.BACKBONE.PRETRAINED: cur_path = os.path.dirname(os.path.realpath(__file__)) backbone_path = os.path.join(cur_path, '../', cfg.BACKBONE.PRETRAINED) load_pretrain(model.backbone, backbone_path) # create tensorboard writer if rank == 0 and cfg.TRAIN.LOG_DIR: tb_writer = SummaryWriter(cfg.TRAIN.LOG_DIR) else: tb_writer = None # build optimizer and lr_scheduler optimizer, lr_scheduler = build_opt_lr(model, cfg.TRAIN.START_EPOCH) # resume training if cfg.TRAIN.RESUME: logger.info("resume from {}".format(cfg.TRAIN.RESUME)) assert os.path.isfile(cfg.TRAIN.RESUME), \ '{} is not a valid file.'.format(cfg.TRAIN.RESUME) resume_epoch = get_restore_epoch(cfg.TRAIN.RESUME) if resume_epoch > cfg.BACKBONE.TRAIN_EPOCH: optimizer, lr_scheduler = build_opt_lr(model, resume_epoch) model, optimizer, cfg.TRAIN.START_EPOCH = \ restore_from(model, optimizer, cfg.TRAIN.RESUME) if resume_epoch == cfg.BACKBONE.TRAIN_EPOCH: optimizer, lr_scheduler = build_opt_lr(model, resume_epoch) # load pretrain elif cfg.TRAIN.PRETRAINED: logger.info("pretrained!!") load_pretrain(model, cfg.TRAIN.PRETRAINED) # build dataset loader train_loader = build_data_loader(cfg.TRAIN.START_EPOCH) dist_model = DistModule(model) logger.info(lr_scheduler) logger.info("model prepare done") # start training train(train_loader, dist_model, optimizer, lr_scheduler, tb_writer)
cfg.merge_from_file(args.config) cur_dir = os.path.dirname(os.path.realpath(__file__)) dataset_root = os.path.join(cur_dir, '../testing_dataset', args.dataset) # create dataset dataset = DatasetFactory.create_dataset(name=args.dataset, dataset_root=dataset_root, load_img=False) # create model model = ModelBuilder() # load model model = load_pretrain(model, args.snapshot).cuda().eval() # build tracker tracker = build_tracker(model) model_name = args.snapshot.split('/')[-1].split('.')[0] benchmark_path = os.path.join('hp_search_results', model_name, args.dataset) seqs = list(range(len(dataset))) np.random.shuffle(seqs) for idx in seqs: video = dataset[idx] # load image video.load_img() np.random.shuffle(args.penalty_k) np.random.shuffle(args.window_influence) np.random.shuffle(args.lr)
def main(): # load config cfg.merge_from_file(args.config) cur_dir = os.path.dirname(os.path.realpath(__file__)) #dataset_root = os.path.join(cur_dir, '../testing_dataset', args.dataset) dataset_root = '/home/sy/dataset/VOT/VOT2018' # create model model = ModelBuilder() # load model model = load_pretrain(model, args.snapshot).cuda().eval() # build tracker tracker = build_tracker(model) # create dataset dataset = DatasetFactory.create_dataset(name=args.dataset, dataset_root=dataset_root, load_img=False) root = dataset_root if 'OTB' in args.dataset: dataset_eval = OTBDataset(args.dataset, root) elif 'LaSOT' == args.dataset: dataset_eval = LaSOTDataset(args.dataset, root) elif 'UAV' in args.dataset: dataset_eval = UAVDataset(args.dataset, root) elif 'NFS' in args.dataset: dataset_eval = NFSDataset(args.dataset, root) if args.dataset in ['VOT2016', 'VOT2017', 'VOT2018', 'VOT2019']: dataset_eval = VOTDataset(args.dataset, root) elif 'VOT2018-LT' == args.dataset: dataset_eval = VOTLTDataset(args.dataset, root) model_name = args.snapshot.split('/')[-1].split('.')[0] tracker_name = os.path.join('tune_results',args.dataset, model_name, model_name + \ '_wi-{:.3f}'.format(cfg.TRACK.WINDOW_INFLUENCE) + \ '_pk-{:.3f}'.format(cfg.TRACK.PENALTY_K) + \ '_lr-{:.3f}'.format(cfg.TRACK.LR)) total_lost = 0 if args.dataset in ['VOT2016', 'VOT2018', 'VOT2019']: # restart tracking for v_idx, video in enumerate(dataset): if args.video != '': # test one special video if video.name != args.video: continue frame_counter = 0 lost_number = 0 toc = 0 pred_bboxes = [] for idx, (img, gt_bbox) in enumerate(video): if len(gt_bbox) == 4: gt_bbox = [ gt_bbox[0], gt_bbox[1], gt_bbox[0], gt_bbox[1] + gt_bbox[3] - 1, gt_bbox[0] + gt_bbox[2] - 1, gt_bbox[1] + gt_bbox[3] - 1, gt_bbox[0] + gt_bbox[2] - 1, gt_bbox[1] ] tic = cv2.getTickCount() if idx == frame_counter: cx, cy, w, h = get_axis_aligned_bbox(np.array(gt_bbox)) gt_bbox_ = [cx - (w - 1) / 2, cy - (h - 1) / 2, w, h] tracker.init(img, gt_bbox_) pred_bbox = gt_bbox_ pred_bboxes.append(1) elif idx > frame_counter: outputs = tracker.track(img) pred_bbox = outputs['bbox'] overlap = vot_overlap(pred_bbox, gt_bbox, (img.shape[1], img.shape[0])) if overlap > 0: # not lost pred_bboxes.append(pred_bbox) else: # lost object pred_bboxes.append(2) frame_counter = idx + 5 # skip 5 frames lost_number += 1 else: pred_bboxes.append(0) toc += cv2.getTickCount() - tic if idx == 0: cv2.destroyAllWindows() if args.vis and idx > frame_counter: cv2.polylines( img, [np.array(gt_bbox, np.int).reshape( (-1, 1, 2))], True, (0, 255, 0), 3) bbox = list(map(int, pred_bbox)) cv2.rectangle(img, (bbox[0], bbox[1]), (bbox[0] + bbox[2], bbox[1] + bbox[3]), (0, 255, 255), 3) cv2.putText(img, str(idx), (40, 40), cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 255, 255), 2) cv2.putText(img, str(lost_number), (40, 80), cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 0, 255), 2) cv2.imshow(video.name, img) cv2.waitKey(1) toc /= cv2.getTickFrequency() # save results video_path = os.path.join('results', args.dataset, model_name, 'baseline', video.name) if not os.path.isdir(video_path): os.makedirs(video_path) result_path = os.path.join(video_path, '{}_001.txt'.format(video.name)) with open(result_path, 'w') as f: for x in pred_bboxes: if isinstance(x, int): f.write("{:d}\n".format(x)) else: f.write(','.join([vot_float2str("%.4f", i) for i in x]) + '\n') print( '({:3d}) Video: {:12s} Time: {:4.1f}s Speed: {:3.1f}fps Lost: {:d}' .format(v_idx + 1, video.name, toc, idx / toc, lost_number)) total_lost += lost_number print("{:s} total lost: {:d}".format(model_name, total_lost)) auc = eval(dataset=dataset_eval, tracker_name=tracker_name) info = "{:s} window_influence: {:1.17f}, penalty_k: {:1.17f}, scale_lr: {:1.17f}, AUC: {:1.3f}".format( model_name, cfg.TRACK.WINDOW_INFLUENCE, cfg.TRACK.PENALTY_K, cfg.TRACK.LR, auc) else: # OPE tracking for v_idx, video in enumerate(dataset): if args.video != '': # test one special video if video.name != args.video: continue toc = 0 pred_bboxes = [] scores = [] track_times = [] for idx, (img, gt_bbox) in enumerate(video): tic = cv2.getTickCount() if idx == 0: cx, cy, w, h = get_axis_aligned_bbox(np.array(gt_bbox)) gt_bbox_ = [cx - (w - 1) / 2, cy - (h - 1) / 2, w, h] tracker.init(img, gt_bbox_) pred_bbox = gt_bbox_ scores.append(None) if 'VOT2018-LT' == args.dataset: pred_bboxes.append([1]) else: pred_bboxes.append(pred_bbox) else: outputs = tracker.track(img) pred_bbox = outputs['bbox'] pred_bboxes.append(pred_bbox) scores.append(outputs['best_score']) toc += cv2.getTickCount() - tic track_times.append( (cv2.getTickCount() - tic) / cv2.getTickFrequency()) if idx == 0: cv2.destroyAllWindows() if args.vis and idx > 0: gt_bbox = list(map(int, gt_bbox)) pred_bbox = list(map(int, pred_bbox)) cv2.rectangle( img, (gt_bbox[0], gt_bbox[1]), (gt_bbox[0] + gt_bbox[2], gt_bbox[1] + gt_bbox[3]), (0, 255, 0), 3) cv2.rectangle(img, (pred_bbox[0], pred_bbox[1]), (pred_bbox[0] + pred_bbox[2], pred_bbox[1] + pred_bbox[3]), (0, 255, 255), 3) cv2.putText(img, str(idx), (40, 40), cv2.FONT_HERSHEY_SIMPLEX, 1, (0, 255, 255), 2) cv2.imshow(video.name, img) cv2.waitKey(1) toc /= cv2.getTickFrequency() # save results if 'VOT2018-LT' == args.dataset: video_path = os.path.join('results', args.dataset, model_name, 'longterm', video.name) if not os.path.isdir(video_path): os.makedirs(video_path) result_path = os.path.join(video_path, '{}_001.txt'.format(video.name)) with open(result_path, 'w') as f: for x in pred_bboxes: f.write(','.join([str(i) for i in x]) + '\n') result_path = os.path.join( video_path, '{}_001_confidence.value'.format(video.name)) with open(result_path, 'w') as f: for x in scores: f.write('\n') if x is None else f.write( "{:.6f}\n".format(x)) result_path = os.path.join(video_path, '{}_time.txt'.format(video.name)) with open(result_path, 'w') as f: for x in track_times: f.write("{:.6f}\n".format(x)) elif 'GOT-10k' == args.dataset: video_path = os.path.join('results', args.dataset, model_name, video.name) if not os.path.isdir(video_path): os.makedirs(video_path) result_path = os.path.join(video_path, '{}_001.txt'.format(video.name)) with open(result_path, 'w') as f: for x in pred_bboxes: f.write(','.join([str(i) for i in x]) + '\n') result_path = os.path.join(video_path, '{}_time.txt'.format(video.name)) with open(result_path, 'w') as f: for x in track_times: f.write("{:.6f}\n".format(x)) else: model_path = os.path.join('results', args.dataset, model_name) if not os.path.isdir(model_path): os.makedirs(model_path) result_path = os.path.join(model_path, '{}.txt'.format(video.name)) with open(result_path, 'w') as f: for x in pred_bboxes: f.write(','.join([str(i) for i in x]) + '\n') print('({:3d}) Video: {:12s} Time: {:5.1f}s Speed: {:3.1f}fps'. format(v_idx + 1, video.name, toc, idx / toc))