| |
| from typing import List, Optional, Tuple |
|
|
| try: |
| import lap |
| except ImportError: |
| lap = None |
| import numpy as np |
| import torch |
| from mmengine.structures import InstanceData |
|
|
| from mmdet.registry import MODELS, TASK_UTILS |
| from mmdet.structures import DetDataSample |
| from mmdet.structures.bbox import (bbox_cxcyah_to_xyxy, bbox_overlaps, |
| bbox_xyxy_to_cxcyah) |
| from .base_tracker import BaseTracker |
|
|
|
|
| @MODELS.register_module() |
| class ByteTracker(BaseTracker): |
| """Tracker for ByteTrack. |
| |
| Args: |
| motion (dict): Configuration of motion. Defaults to None. |
| obj_score_thrs (dict): Detection score threshold for matching objects. |
| - high (float): Threshold of the first matching. Defaults to 0.6. |
| - low (float): Threshold of the second matching. Defaults to 0.1. |
| init_track_thr (float): Detection score threshold for initializing a |
| new tracklet. Defaults to 0.7. |
| weight_iou_with_det_scores (bool): Whether using detection scores to |
| weight IOU which is used for matching. Defaults to True. |
| match_iou_thrs (dict): IOU distance threshold for matching between two |
| frames. |
| - high (float): Threshold of the first matching. Defaults to 0.1. |
| - low (float): Threshold of the second matching. Defaults to 0.5. |
| - tentative (float): Threshold of the matching for tentative |
| tracklets. Defaults to 0.3. |
| num_tentatives (int, optional): Number of continuous frames to confirm |
| a track. Defaults to 3. |
| """ |
|
|
| def __init__(self, |
| motion: Optional[dict] = None, |
| obj_score_thrs: dict = dict(high=0.6, low=0.1), |
| init_track_thr: float = 0.7, |
| weight_iou_with_det_scores: bool = True, |
| match_iou_thrs: dict = dict(high=0.1, low=0.5, tentative=0.3), |
| num_tentatives: int = 3, |
| **kwargs): |
| super().__init__(**kwargs) |
|
|
| if lap is None: |
| raise RuntimeError('lap is not installed,\ |
| please install it by: pip install lap') |
| if motion is not None: |
| self.motion = TASK_UTILS.build(motion) |
|
|
| self.obj_score_thrs = obj_score_thrs |
| self.init_track_thr = init_track_thr |
|
|
| self.weight_iou_with_det_scores = weight_iou_with_det_scores |
| self.match_iou_thrs = match_iou_thrs |
|
|
| self.num_tentatives = num_tentatives |
|
|
| @property |
| def confirmed_ids(self) -> List: |
| """Confirmed ids in the tracker.""" |
| ids = [id for id, track in self.tracks.items() if not track.tentative] |
| return ids |
|
|
| @property |
| def unconfirmed_ids(self) -> List: |
| """Unconfirmed ids in the tracker.""" |
| ids = [id for id, track in self.tracks.items() if track.tentative] |
| return ids |
|
|
| def init_track(self, id: int, obj: Tuple[torch.Tensor]) -> None: |
| """Initialize a track.""" |
| super().init_track(id, obj) |
| if self.tracks[id].frame_ids[-1] == 0: |
| self.tracks[id].tentative = False |
| else: |
| self.tracks[id].tentative = True |
| bbox = bbox_xyxy_to_cxcyah(self.tracks[id].bboxes[-1]) |
| assert bbox.ndim == 2 and bbox.shape[0] == 1 |
| bbox = bbox.squeeze(0).cpu().numpy() |
| self.tracks[id].mean, self.tracks[id].covariance = self.kf.initiate( |
| bbox) |
|
|
| def update_track(self, id: int, obj: Tuple[torch.Tensor]) -> None: |
| """Update a track.""" |
| super().update_track(id, obj) |
| if self.tracks[id].tentative: |
| if len(self.tracks[id]['bboxes']) >= self.num_tentatives: |
| self.tracks[id].tentative = False |
| bbox = bbox_xyxy_to_cxcyah(self.tracks[id].bboxes[-1]) |
| assert bbox.ndim == 2 and bbox.shape[0] == 1 |
| bbox = bbox.squeeze(0).cpu().numpy() |
| track_label = self.tracks[id]['labels'][-1] |
| label_idx = self.memo_items.index('labels') |
| obj_label = obj[label_idx] |
| assert obj_label == track_label |
| self.tracks[id].mean, self.tracks[id].covariance = self.kf.update( |
| self.tracks[id].mean, self.tracks[id].covariance, bbox) |
|
|
| def pop_invalid_tracks(self, frame_id: int) -> None: |
| """Pop out invalid tracks.""" |
| invalid_ids = [] |
| for k, v in self.tracks.items(): |
| |
| case1 = frame_id - v['frame_ids'][-1] >= self.num_frames_retain |
| |
| case2 = v.tentative and v['frame_ids'][-1] != frame_id |
| if case1 or case2: |
| invalid_ids.append(k) |
| for invalid_id in invalid_ids: |
| self.tracks.pop(invalid_id) |
|
|
| def assign_ids( |
| self, |
| ids: List[int], |
| det_bboxes: torch.Tensor, |
| det_labels: torch.Tensor, |
| det_scores: torch.Tensor, |
| weight_iou_with_det_scores: Optional[bool] = False, |
| match_iou_thr: Optional[float] = 0.5 |
| ) -> Tuple[np.ndarray, np.ndarray]: |
| """Assign ids. |
| |
| Args: |
| ids (list[int]): Tracking ids. |
| det_bboxes (Tensor): of shape (N, 4) |
| det_labels (Tensor): of shape (N,) |
| det_scores (Tensor): of shape (N,) |
| weight_iou_with_det_scores (bool, optional): Whether using |
| detection scores to weight IOU which is used for matching. |
| Defaults to False. |
| match_iou_thr (float, optional): Matching threshold. |
| Defaults to 0.5. |
| |
| Returns: |
| tuple(np.ndarray, np.ndarray): The assigning ids. |
| """ |
| |
| track_bboxes = np.zeros((0, 4)) |
| for id in ids: |
| track_bboxes = np.concatenate( |
| (track_bboxes, self.tracks[id].mean[:4][None]), axis=0) |
| track_bboxes = torch.from_numpy(track_bboxes).to(det_bboxes) |
| track_bboxes = bbox_cxcyah_to_xyxy(track_bboxes) |
|
|
| |
| ious = bbox_overlaps(track_bboxes, det_bboxes) |
| if weight_iou_with_det_scores: |
| ious *= det_scores |
| |
| track_labels = torch.tensor([ |
| self.tracks[id]['labels'][-1] for id in ids |
| ]).to(det_bboxes.device) |
|
|
| cate_match = det_labels[None, :] == track_labels[:, None] |
| |
| cate_cost = (1 - cate_match.int()) * 1e6 |
|
|
| dists = (1 - ious + cate_cost).cpu().numpy() |
|
|
| |
| if dists.size > 0: |
| cost, row, col = lap.lapjv( |
| dists, extend_cost=True, cost_limit=1 - match_iou_thr) |
| else: |
| row = np.zeros(len(ids)).astype(np.int32) - 1 |
| col = np.zeros(len(det_bboxes)).astype(np.int32) - 1 |
| return row, col |
|
|
| def track(self, data_sample: DetDataSample, **kwargs) -> InstanceData: |
| """Tracking forward function. |
| |
| Args: |
| data_sample (:obj:`DetDataSample`): The data sample. |
| It includes information such as `pred_instances`. |
| |
| Returns: |
| :obj:`InstanceData`: Tracking results of the input images. |
| Each InstanceData usually contains ``bboxes``, ``labels``, |
| ``scores`` and ``instances_id``. |
| """ |
| metainfo = data_sample.metainfo |
| bboxes = data_sample.pred_instances.bboxes |
| labels = data_sample.pred_instances.labels |
| scores = data_sample.pred_instances.scores |
|
|
| frame_id = metainfo.get('frame_id', -1) |
| if frame_id == 0: |
| self.reset() |
| if not hasattr(self, 'kf'): |
| self.kf = self.motion |
|
|
| if self.empty or bboxes.size(0) == 0: |
| valid_inds = scores > self.init_track_thr |
| scores = scores[valid_inds] |
| bboxes = bboxes[valid_inds] |
| labels = labels[valid_inds] |
| num_new_tracks = bboxes.size(0) |
| ids = torch.arange(self.num_tracks, |
| self.num_tracks + num_new_tracks).to(labels) |
| self.num_tracks += num_new_tracks |
|
|
| else: |
| |
| ids = torch.full((bboxes.size(0), ), |
| -1, |
| dtype=labels.dtype, |
| device=labels.device) |
|
|
| |
| first_det_inds = scores > self.obj_score_thrs['high'] |
| first_det_bboxes = bboxes[first_det_inds] |
| first_det_labels = labels[first_det_inds] |
| first_det_scores = scores[first_det_inds] |
| first_det_ids = ids[first_det_inds] |
|
|
| |
| second_det_inds = (~first_det_inds) & ( |
| scores > self.obj_score_thrs['low']) |
| second_det_bboxes = bboxes[second_det_inds] |
| second_det_labels = labels[second_det_inds] |
| second_det_scores = scores[second_det_inds] |
| second_det_ids = ids[second_det_inds] |
|
|
| |
| for id in self.confirmed_ids: |
| |
| if self.tracks[id].frame_ids[-1] != frame_id - 1: |
| self.tracks[id].mean[7] = 0 |
| (self.tracks[id].mean, |
| self.tracks[id].covariance) = self.kf.predict( |
| self.tracks[id].mean, self.tracks[id].covariance) |
|
|
| |
| first_match_track_inds, first_match_det_inds = self.assign_ids( |
| self.confirmed_ids, first_det_bboxes, first_det_labels, |
| first_det_scores, self.weight_iou_with_det_scores, |
| self.match_iou_thrs['high']) |
| |
| |
| valid = first_match_det_inds > -1 |
| first_det_ids[valid] = torch.tensor( |
| self.confirmed_ids)[first_match_det_inds[valid]].to(labels) |
|
|
| first_match_det_bboxes = first_det_bboxes[valid] |
| first_match_det_labels = first_det_labels[valid] |
| first_match_det_scores = first_det_scores[valid] |
| first_match_det_ids = first_det_ids[valid] |
| assert (first_match_det_ids > -1).all() |
|
|
| first_unmatch_det_bboxes = first_det_bboxes[~valid] |
| first_unmatch_det_labels = first_det_labels[~valid] |
| first_unmatch_det_scores = first_det_scores[~valid] |
| first_unmatch_det_ids = first_det_ids[~valid] |
| assert (first_unmatch_det_ids == -1).all() |
|
|
| |
| |
| (tentative_match_track_inds, |
| tentative_match_det_inds) = self.assign_ids( |
| self.unconfirmed_ids, first_unmatch_det_bboxes, |
| first_unmatch_det_labels, first_unmatch_det_scores, |
| self.weight_iou_with_det_scores, |
| self.match_iou_thrs['tentative']) |
| valid = tentative_match_det_inds > -1 |
| first_unmatch_det_ids[valid] = torch.tensor(self.unconfirmed_ids)[ |
| tentative_match_det_inds[valid]].to(labels) |
|
|
| |
| first_unmatch_track_ids = [] |
| for i, id in enumerate(self.confirmed_ids): |
| |
| case_1 = first_match_track_inds[i] == -1 |
| |
| case_2 = self.tracks[id].frame_ids[-1] == frame_id - 1 |
| if case_1 and case_2: |
| first_unmatch_track_ids.append(id) |
|
|
| second_match_track_inds, second_match_det_inds = self.assign_ids( |
| first_unmatch_track_ids, second_det_bboxes, second_det_labels, |
| second_det_scores, False, self.match_iou_thrs['low']) |
| valid = second_match_det_inds > -1 |
| second_det_ids[valid] = torch.tensor(first_unmatch_track_ids)[ |
| second_match_det_inds[valid]].to(ids) |
|
|
| |
| |
| |
| valid = second_det_ids > -1 |
| bboxes = torch.cat( |
| (first_match_det_bboxes, first_unmatch_det_bboxes), dim=0) |
| bboxes = torch.cat((bboxes, second_det_bboxes[valid]), dim=0) |
|
|
| labels = torch.cat( |
| (first_match_det_labels, first_unmatch_det_labels), dim=0) |
| labels = torch.cat((labels, second_det_labels[valid]), dim=0) |
|
|
| scores = torch.cat( |
| (first_match_det_scores, first_unmatch_det_scores), dim=0) |
| scores = torch.cat((scores, second_det_scores[valid]), dim=0) |
|
|
| ids = torch.cat((first_match_det_ids, first_unmatch_det_ids), |
| dim=0) |
| ids = torch.cat((ids, second_det_ids[valid]), dim=0) |
|
|
| |
| new_track_inds = ids == -1 |
| ids[new_track_inds] = torch.arange( |
| self.num_tracks, |
| self.num_tracks + new_track_inds.sum()).to(labels) |
| self.num_tracks += new_track_inds.sum() |
|
|
| self.update( |
| ids=ids, |
| bboxes=bboxes, |
| scores=scores, |
| labels=labels, |
| frame_ids=frame_id) |
|
|
| |
| pred_track_instances = InstanceData() |
| pred_track_instances.bboxes = bboxes |
| pred_track_instances.labels = labels |
| pred_track_instances.scores = scores |
| pred_track_instances.instances_id = ids |
|
|
| return pred_track_instances |
|
|