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Papers/SparseTrack: Multi-Object Tracking by Performing Scene Dec...

SparseTrack: Multi-Object Tracking by Performing Scene Decomposition based on Pseudo-Depth

Zelin Liu, Xinggang Wang, Cheng Wang, Wenyu Liu, Xiang Bai

2023-06-08Multi-Object TrackingObject TrackingDepth EstimationMultiple Object Tracking
PaperPDFCode(official)Code

Abstract

Exploring robust and efficient association methods has always been an important issue in multiple-object tracking (MOT). Although existing tracking methods have achieved impressive performance, congestion and frequent occlusions still pose challenging problems in multi-object tracking. We reveal that performing sparse decomposition on dense scenes is a crucial step to enhance the performance of associating occluded targets. To this end, we propose a pseudo-depth estimation method for obtaining the relative depth of targets from 2D images. Secondly, we design a depth cascading matching (DCM) algorithm, which can use the obtained depth information to convert a dense target set into multiple sparse target subsets and perform data association on these sparse target subsets in order from near to far. By integrating the pseudo-depth method and the DCM strategy into the data association process, we propose a new tracker, called SparseTrack. SparseTrack provides a new perspective for solving the challenging crowded scene MOT problem. Only using IoU matching, SparseTrack achieves comparable performance with the state-of-the-art (SOTA) methods on the MOT17 and MOT20 benchmarks. Code and models are publicly available at \url{https://github.com/hustvl/SparseTrack}.

Results

TaskDatasetMetricValueModel
Multi-Object TrackingMOT20HOTA63.4SparseTrack
Multi-Object TrackingMOT20IDF177.3SparseTrack
Multi-Object TrackingMOT20MOTA78.2SparseTrack
Multi-Object TrackingMOT17HOTA65.1SparseTrack
Multi-Object TrackingMOT17IDF180.1SparseTrack
Multi-Object TrackingMOT17MOTA81SparseTrack
Multi-Object TrackingDanceTrackAssA39.3SparseTrack
Multi-Object TrackingDanceTrackDetA79.2SparseTrack
Multi-Object TrackingDanceTrackHOTA55.7SparseTrack
Multi-Object TrackingDanceTrackIDF158.1SparseTrack
Multi-Object TrackingDanceTrackMOTA91.3SparseTrack
Object TrackingMOT20HOTA63.4SparseTrack
Object TrackingMOT20IDF177.3SparseTrack
Object TrackingMOT20MOTA78.2SparseTrack
Object TrackingMOT17HOTA65.1SparseTrack
Object TrackingMOT17IDF180.1SparseTrack
Object TrackingMOT17MOTA81SparseTrack
Object TrackingDanceTrackAssA39.3SparseTrack
Object TrackingDanceTrackDetA79.2SparseTrack
Object TrackingDanceTrackHOTA55.7SparseTrack
Object TrackingDanceTrackIDF158.1SparseTrack
Object TrackingDanceTrackMOTA91.3SparseTrack

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