from functools import partial from pathlib import Path import torch from ultralytics.utils import IterableSimpleNamespace, yaml_load from ultralytics.utils.checks import check_yaml from .bot_sort import BOTSORT from .byte_tracker import BYTETracker # A mapping of tracker types to corresponding tracker classes TRACKER_MAP = {'bytetrack': BYTETracker, 'botsort': BOTSORT} def on_predict_start(predictor: object, persist: bool = False) -> None: """ Initialize trackers for object tracking during prediction. Args: predictor (object): The predictor object to initialize trackers for. persist (bool, optional): Whether to persist the trackers if they already exist. Defaults to False. Raises: AssertionError: If the tracker_type is not 'bytetrack' or 'botsort'. """ if predictor.args.task == 'obb': raise NotImplementedError('ERROR ❌ OBB task does not support track mode!') if hasattr(predictor, 'trackers') and persist: return tracker = check_yaml(predictor.args.tracker) cfg = IterableSimpleNamespace(**yaml_load(tracker)) if cfg.tracker_type not in ['bytetrack', 'botsort']: raise AssertionError(f"Only 'bytetrack' and 'botsort' are supported for now, but got '{cfg.tracker_type}'") trackers = [] for _ in range(predictor.dataset.bs): tracker = TRACKER_MAP[cfg.tracker_type](args=cfg, frame_rate=30) trackers.append(tracker) predictor.trackers = trackers def on_predict_postprocess_end(predictor: object, persist: bool = False) -> None: """ Postprocess detected boxes and update with object tracking. Args: predictor (object): The predictor object containing the predictions. persist (bool, optional): Whether to persist the trackers if they already exist. Defaults to False. """ bs = predictor.dataset.bs path, im0s = predictor.batch[:2] for i in range(bs): if not persist and predictor.vid_path[i] != str(predictor.save_dir / Path(path[i]).name): # new video predictor.trackers[i].reset() det = predictor.results[i].boxes.cpu().numpy() if len(det) == 0: continue tracks = predictor.trackers[i].update(det, im0s[i]) if len(tracks) == 0: continue idx = tracks[:, -1].astype(int) predictor.results[i] = predictor.results[i][idx] predictor.results[i].update(boxes=torch.as_tensor(tracks[:, :-1])) def register_tracker(model: object, persist: bool) -> None: """ Register tracking callbacks to the model for object tracking during prediction. Args: model (object): The model object to register tracking callbacks for. persist (bool): Whether to persist the trackers if they already exist. """ model.add_callback('on_predict_start', partial(on_predict_start, persist=persist)) model.add_callback('on_predict_postprocess_end', partial(on_predict_postprocess_end, persist=persist))