|
|
|
|
|
from collections import deque |
|
|
|
import numpy as np |
|
|
|
from .basetrack import TrackState |
|
from .byte_tracker import BYTETracker, STrack |
|
from .utils import matching |
|
from .utils.gmc import GMC |
|
from .utils.kalman_filter import KalmanFilterXYWH |
|
|
|
|
|
class BOTrack(STrack): |
|
""" |
|
An extended version of the STrack class for YOLOv8, adding object tracking features. |
|
|
|
Attributes: |
|
shared_kalman (KalmanFilterXYWH): A shared Kalman filter for all instances of BOTrack. |
|
smooth_feat (np.ndarray): Smoothed feature vector. |
|
curr_feat (np.ndarray): Current feature vector. |
|
features (deque): A deque to store feature vectors with a maximum length defined by `feat_history`. |
|
alpha (float): Smoothing factor for the exponential moving average of features. |
|
mean (np.ndarray): The mean state of the Kalman filter. |
|
covariance (np.ndarray): The covariance matrix of the Kalman filter. |
|
|
|
Methods: |
|
update_features(feat): Update features vector and smooth it using exponential moving average. |
|
predict(): Predicts the mean and covariance using Kalman filter. |
|
re_activate(new_track, frame_id, new_id): Reactivates a track with updated features and optionally new ID. |
|
update(new_track, frame_id): Update the YOLOv8 instance with new track and frame ID. |
|
tlwh: Property that gets the current position in tlwh format `(top left x, top left y, width, height)`. |
|
multi_predict(stracks): Predicts the mean and covariance of multiple object tracks using shared Kalman filter. |
|
convert_coords(tlwh): Converts tlwh bounding box coordinates to xywh format. |
|
tlwh_to_xywh(tlwh): Convert bounding box to xywh format `(center x, center y, width, height)`. |
|
|
|
Usage: |
|
bo_track = BOTrack(tlwh, score, cls, feat) |
|
bo_track.predict() |
|
bo_track.update(new_track, frame_id) |
|
""" |
|
|
|
shared_kalman = KalmanFilterXYWH() |
|
|
|
def __init__(self, tlwh, score, cls, feat=None, feat_history=50): |
|
"""Initialize YOLOv8 object with temporal parameters, such as feature history, alpha and current features.""" |
|
super().__init__(tlwh, score, cls) |
|
|
|
self.smooth_feat = None |
|
self.curr_feat = None |
|
if feat is not None: |
|
self.update_features(feat) |
|
self.features = deque([], maxlen=feat_history) |
|
self.alpha = 0.9 |
|
|
|
def update_features(self, feat): |
|
"""Update features vector and smooth it using exponential moving average.""" |
|
feat /= np.linalg.norm(feat) |
|
self.curr_feat = feat |
|
if self.smooth_feat is None: |
|
self.smooth_feat = feat |
|
else: |
|
self.smooth_feat = self.alpha * self.smooth_feat + (1 - self.alpha) * feat |
|
self.features.append(feat) |
|
self.smooth_feat /= np.linalg.norm(self.smooth_feat) |
|
|
|
def predict(self): |
|
"""Predicts the mean and covariance using Kalman filter.""" |
|
mean_state = self.mean.copy() |
|
if self.state != TrackState.Tracked: |
|
mean_state[6] = 0 |
|
mean_state[7] = 0 |
|
|
|
self.mean, self.covariance = self.kalman_filter.predict(mean_state, self.covariance) |
|
|
|
def re_activate(self, new_track, frame_id, new_id=False): |
|
"""Reactivates a track with updated features and optionally assigns a new ID.""" |
|
if new_track.curr_feat is not None: |
|
self.update_features(new_track.curr_feat) |
|
super().re_activate(new_track, frame_id, new_id) |
|
|
|
def update(self, new_track, frame_id): |
|
"""Update the YOLOv8 instance with new track and frame ID.""" |
|
if new_track.curr_feat is not None: |
|
self.update_features(new_track.curr_feat) |
|
super().update(new_track, frame_id) |
|
|
|
@property |
|
def tlwh(self): |
|
"""Get current position in bounding box format `(top left x, top left y, width, height)`.""" |
|
if self.mean is None: |
|
return self._tlwh.copy() |
|
ret = self.mean[:4].copy() |
|
ret[:2] -= ret[2:] / 2 |
|
return ret |
|
|
|
@staticmethod |
|
def multi_predict(stracks): |
|
"""Predicts the mean and covariance of multiple object tracks using shared Kalman filter.""" |
|
if len(stracks) <= 0: |
|
return |
|
multi_mean = np.asarray([st.mean.copy() for st in stracks]) |
|
multi_covariance = np.asarray([st.covariance for st in stracks]) |
|
for i, st in enumerate(stracks): |
|
if st.state != TrackState.Tracked: |
|
multi_mean[i][6] = 0 |
|
multi_mean[i][7] = 0 |
|
multi_mean, multi_covariance = BOTrack.shared_kalman.multi_predict(multi_mean, multi_covariance) |
|
for i, (mean, cov) in enumerate(zip(multi_mean, multi_covariance)): |
|
stracks[i].mean = mean |
|
stracks[i].covariance = cov |
|
|
|
def convert_coords(self, tlwh): |
|
"""Converts Top-Left-Width-Height bounding box coordinates to X-Y-Width-Height format.""" |
|
return self.tlwh_to_xywh(tlwh) |
|
|
|
@staticmethod |
|
def tlwh_to_xywh(tlwh): |
|
"""Convert bounding box to format `(center x, center y, width, height)`.""" |
|
ret = np.asarray(tlwh).copy() |
|
ret[:2] += ret[2:] / 2 |
|
return ret |
|
|
|
|
|
class BOTSORT(BYTETracker): |
|
""" |
|
An extended version of the BYTETracker class for YOLOv8, designed for object tracking with ReID and GMC algorithm. |
|
|
|
Attributes: |
|
proximity_thresh (float): Threshold for spatial proximity (IoU) between tracks and detections. |
|
appearance_thresh (float): Threshold for appearance similarity (ReID embeddings) between tracks and detections. |
|
encoder (object): Object to handle ReID embeddings, set to None if ReID is not enabled. |
|
gmc (GMC): An instance of the GMC algorithm for data association. |
|
args (object): Parsed command-line arguments containing tracking parameters. |
|
|
|
Methods: |
|
get_kalmanfilter(): Returns an instance of KalmanFilterXYWH for object tracking. |
|
init_track(dets, scores, cls, img): Initialize track with detections, scores, and classes. |
|
get_dists(tracks, detections): Get distances between tracks and detections using IoU and (optionally) ReID. |
|
multi_predict(tracks): Predict and track multiple objects with YOLOv8 model. |
|
|
|
Usage: |
|
bot_sort = BOTSORT(args, frame_rate) |
|
bot_sort.init_track(dets, scores, cls, img) |
|
bot_sort.multi_predict(tracks) |
|
|
|
Note: |
|
The class is designed to work with the YOLOv8 object detection model and supports ReID only if enabled via args. |
|
""" |
|
|
|
def __init__(self, args, frame_rate=30): |
|
"""Initialize YOLOv8 object with ReID module and GMC algorithm.""" |
|
super().__init__(args, frame_rate) |
|
|
|
self.proximity_thresh = args.proximity_thresh |
|
self.appearance_thresh = args.appearance_thresh |
|
|
|
if args.with_reid: |
|
|
|
self.encoder = None |
|
self.gmc = GMC(method=args.gmc_method) |
|
|
|
def get_kalmanfilter(self): |
|
"""Returns an instance of KalmanFilterXYWH for object tracking.""" |
|
return KalmanFilterXYWH() |
|
|
|
def init_track(self, dets, scores, cls, img=None): |
|
"""Initialize track with detections, scores, and classes.""" |
|
if len(dets) == 0: |
|
return [] |
|
if self.args.with_reid and self.encoder is not None: |
|
features_keep = self.encoder.inference(img, dets) |
|
return [BOTrack(xyxy, s, c, f) for (xyxy, s, c, f) in zip(dets, scores, cls, features_keep)] |
|
else: |
|
return [BOTrack(xyxy, s, c) for (xyxy, s, c) in zip(dets, scores, cls)] |
|
|
|
def get_dists(self, tracks, detections): |
|
"""Get distances between tracks and detections using IoU and (optionally) ReID embeddings.""" |
|
dists = matching.iou_distance(tracks, detections) |
|
dists_mask = dists > self.proximity_thresh |
|
|
|
|
|
|
|
dists = matching.fuse_score(dists, detections) |
|
|
|
if self.args.with_reid and self.encoder is not None: |
|
emb_dists = matching.embedding_distance(tracks, detections) / 2.0 |
|
emb_dists[emb_dists > self.appearance_thresh] = 1.0 |
|
emb_dists[dists_mask] = 1.0 |
|
dists = np.minimum(dists, emb_dists) |
|
return dists |
|
|
|
def multi_predict(self, tracks): |
|
"""Predict and track multiple objects with YOLOv8 model.""" |
|
BOTrack.multi_predict(tracks) |
|
|
|
def reset(self): |
|
"""Reset tracker.""" |
|
super().reset() |
|
self.gmc.reset_params() |
|
|