Immortal Tracker: Tracklet Never Dies
- URL: http://arxiv.org/abs/2111.13672v1
- Date: Fri, 26 Nov 2021 18:53:18 GMT
- Title: Immortal Tracker: Tracklet Never Dies
- Authors: Qitai Wang, Yuntao Chen, Ziqi Pang, Naiyan Wang, Zhaoxiang Zhang
- Abstract summary: Previous online 3D Multi-Object Tracking(DMOT) methods terminate a tracklet when it is not associated with new detections for a few frames.
We reveal that premature tracklet termination is the main cause of identity switches in modern 3DMOT systems.
We propose Immortal Tracker, a simple tracking system that utilizes trajectory prediction to maintain tracklets for objects gone dark.
- Score: 50.97679119367842
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Previous online 3D Multi-Object Tracking(3DMOT) methods terminate a tracklet
when it is not associated with new detections for a few frames. But if an
object just goes dark, like being temporarily occluded by other objects or
simply getting out of FOV, terminating a tracklet prematurely will result in an
identity switch. We reveal that premature tracklet termination is the main
cause of identity switches in modern 3DMOT systems. To address this, we propose
Immortal Tracker, a simple tracking system that utilizes trajectory prediction
to maintain tracklets for objects gone dark. We employ a simple Kalman filter
for trajectory prediction and preserve the tracklet by prediction when the
target is not visible. With this method, we can avoid 96% vehicle identity
switches resulting from premature tracklet termination. Without any learned
parameters, our method achieves a mismatch ratio at the 0.0001 level and
competitive MOTA for the vehicle class on the Waymo Open Dataset test set. Our
mismatch ratio is tens of times lower than any previously published method.
Similar results are reported on nuScenes. We believe the proposed Immortal
Tracker can offer a simple yet powerful solution for pushing the limit of
3DMOT. Our code is available at
https://github.com/ImmortalTracker/ImmortalTracker.
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