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3 months ago

Deep OC-SORT: Multi-Pedestrian Tracking by Adaptive Re-Identification

Gerard Maggiolino Adnan Ahmad Jinkun Cao Kris Kitani

Deep OC-SORT: Multi-Pedestrian Tracking by Adaptive Re-Identification

Abstract

Motion-based association for Multi-Object Tracking (MOT) has recently re-achieved prominence with the rise of powerful object detectors. Despite this, little work has been done to incorporate appearance cues beyond simple heuristic models that lack robustness to feature degradation. In this paper, we propose a novel way to leverage objects' appearances to adaptively integrate appearance matching into existing high-performance motion-based methods. Building upon the pure motion-based method OC-SORT, we achieve 1st place on MOT20 and 2nd place on MOT17 with 63.9 and 64.9 HOTA, respectively. We also achieve 61.3 HOTA on the challenging DanceTrack benchmark as a new state-of-the-art even compared to more heavily-designed methods. The code and models are available at \url{https://github.com/GerardMaggiolino/Deep-OC-SORT}.

Code Repositories

mikel-brostrom/boxmot
pytorch
Mentioned in GitHub
gerardmaggiolino/deep-oc-sort
Official
pytorch
Mentioned in GitHub
noahcao/OC_SORT
pytorch
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
multi-object-tracking-on-dancetrackDeep OC-SORT
AssA: 45.8
DetA: 82.2
HOTA: 61.3
IDF1: 61.5
MOTA: 92.3
multi-object-tracking-on-mot17Deep OC-SORT
HOTA: 64.9
IDF1: 80.6
MOTA: 79.4
multi-object-tracking-on-mot20-1Deep OC-SORT
HOTA: 63.9
IDF1: 79.2
MOTA: 75.6

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