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Papers/When to Extract ReID Features: A Selective Approach for Im...

When to Extract ReID Features: A Selective Approach for Improved Multiple Object Tracking

Emirhan Bayar, Cemal Aker

2024-09-10Multi-Object TrackingObject TrackingMultiple Object Trackingobject-detectionObject Detection
PaperPDFCode(official)Code(official)

Abstract

Extracting and matching Re-Identification (ReID) features is used by many state-of-the-art (SOTA) Multiple Object Tracking (MOT) methods, particularly effective against frequent and long-term occlusions. While end-to-end object detection and tracking have been the main focus of recent research, they have yet to outperform traditional methods in benchmarks like MOT17 and MOT20. Thus, from an application standpoint, methods with separate detection and embedding remain the best option for accuracy, modularity, and ease of implementation, though they are impractical for edge devices due to the overhead involved. In this paper, we investigate a selective approach to minimize the overhead of feature extraction while preserving accuracy, modularity, and ease of implementation. This approach can be integrated into various SOTA methods. We demonstrate its effectiveness by applying it to StrongSORT and Deep OC-SORT. Experiments on MOT17, MOT20, and DanceTrack datasets show that our mechanism retains the advantages of feature extraction during occlusions while significantly reducing runtime. Additionally, it improves accuracy by preventing confusion in the feature-matching stage, particularly in cases of deformation and appearance similarity, which are common in DanceTrack. https://github.com/emirhanbayar/Fast-StrongSORT, https://github.com/emirhanbayar/Fast-Deep-OC-SORT

Results

TaskDatasetMetricValueModel
Multi-Object TrackingMOT20HOTA61.2Fast-StrongSORT
Multi-Object TrackingMOT20IDF175.4Fast-StrongSORT
Multi-Object TrackingMOT17AssA62.3Fast-StrongSORT
Multi-Object TrackingMOT17HOTA62.7Fast-StrongSORT
Multi-Object TrackingMOT17IDF177.5Fast-StrongSORT
Multi-Object TrackingDanceTrackAssA38.8Fast-StrongSORT
Multi-Object TrackingDanceTrackHOTA55.9Fast-StrongSORT
Multi-Object TrackingDanceTrackIDF154.6Fast-StrongSORT
Object TrackingMOT20HOTA61.2Fast-StrongSORT
Object TrackingMOT20IDF175.4Fast-StrongSORT
Object TrackingMOT17AssA62.3Fast-StrongSORT
Object TrackingMOT17HOTA62.7Fast-StrongSORT
Object TrackingMOT17IDF177.5Fast-StrongSORT
Object TrackingDanceTrackAssA38.8Fast-StrongSORT
Object TrackingDanceTrackHOTA55.9Fast-StrongSORT
Object TrackingDanceTrackIDF154.6Fast-StrongSORT

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