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Papers/NeighborTrack: Improving Single Object Tracking by Biparti...

NeighborTrack: Improving Single Object Tracking by Bipartite Matching with Neighbor Tracklets

Yu-Hsi Chen, Chien-Yao Wang, Cheng-Yun Yang, Hung-Shuo Chang, Youn-Long Lin, Yung-Yu Chuang, Hong-Yuan Mark Liao

2022-11-12Visual Object TrackingObject TrackingVideo Object Tracking
PaperPDFCode(official)

Abstract

We propose a post-processor, called NeighborTrack, that leverages neighbor information of the tracking target to validate and improve single-object tracking (SOT) results. It requires no additional data or retraining. Instead, it uses the confidence score predicted by the backbone SOT network to automatically derive neighbor information and then uses this information to improve the tracking results. When tracking an occluded target, its appearance features are untrustworthy. However, a general siamese network often cannot tell whether the tracked object is occluded by reading the confidence score alone, because it could be misled by neighbors with high confidence scores. Our proposed NeighborTrack takes advantage of unoccluded neighbors' information to reconfirm the tracking target and reduces false tracking when the target is occluded. It not only reduces the impact caused by occlusion, but also fixes tracking problems caused by object appearance changes. NeighborTrack is agnostic to SOT networks and post-processing methods. For the VOT challenge dataset commonly used in short-term object tracking, we improve three famous SOT networks, Ocean, TransT, and OSTrack, by an average of ${1.92\%}$ EAO and ${2.11\%}$ robustness. For the mid- and long-term tracking experiments based on OSTrack, we achieve state-of-the-art ${72.25\%}$ AUC on LaSOT and ${75.7\%}$ AO on GOT-10K. Code duplication can be found in https://github.com/franktpmvu/NeighborTrack.

Results

TaskDatasetMetricValueModel
VideoNT-VOT211AUC38.32Neighbor- Track(OSTrack)
VideoNT-VOT211Precision52.54Neighbor- Track(OSTrack)
Object TrackingUAV123AUC0.725NeighborTrack-OSTrack
Object TrackingUAV123Precision0.9337NeighborTrack-OSTrack
Object TrackingLaSOTAUC72.2NeighborTrack-OSTrack
Object TrackingLaSOTNormalized Precision81.8NeighborTrack-OSTrack
Object TrackingLaSOTPrecision78NeighborTrack-OSTrack
Object TrackingGOT-10kAverage Overlap75.7NeighborTrack-OSTrack
Object TrackingGOT-10kSuccess Rate 0.585.72NeighborTrack-OSTrack
Object TrackingGOT-10kSuccess Rate 0.7573.3NeighborTrack-OSTrack
Object TrackingTrackingNetAccuracy83.79NeighborTrack-OSTrack
Object TrackingTrackingNetNormalized Precision88.3NeighborTrack-OSTrack
Object TrackingNT-VOT211AUC38.32Neighbor- Track(OSTrack)
Object TrackingNT-VOT211Precision52.54Neighbor- Track(OSTrack)
Visual Object TrackingUAV123AUC0.725NeighborTrack-OSTrack
Visual Object TrackingUAV123Precision0.9337NeighborTrack-OSTrack
Visual Object TrackingLaSOTAUC72.2NeighborTrack-OSTrack
Visual Object TrackingLaSOTNormalized Precision81.8NeighborTrack-OSTrack
Visual Object TrackingLaSOTPrecision78NeighborTrack-OSTrack
Visual Object TrackingGOT-10kAverage Overlap75.7NeighborTrack-OSTrack
Visual Object TrackingGOT-10kSuccess Rate 0.585.72NeighborTrack-OSTrack
Visual Object TrackingGOT-10kSuccess Rate 0.7573.3NeighborTrack-OSTrack
Visual Object TrackingTrackingNetAccuracy83.79NeighborTrack-OSTrack
Visual Object TrackingTrackingNetNormalized Precision88.3NeighborTrack-OSTrack

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