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Papers/A Unified Multi-view Multi-person Tracking Framework

A Unified Multi-view Multi-person Tracking Framework

Fan Yang, Shigeyuki Odashima, Sosuke Yamao, Hiroaki Fujimoto, Shoichi Masui, Shan Jiang

2023-02-08Object TrackingPose Tracking3D Multi-Person Pose EstimationMultiple People Tracking
PaperPDF

Abstract

Although there is a significant development in 3D Multi-view Multi-person Tracking (3D MM-Tracking), current 3D MM-Tracking frameworks are designed separately for footprint and pose tracking. Specifically, frameworks designed for footprint tracking cannot be utilized in 3D pose tracking, because they directly obtain 3D positions on the ground plane with a homography projection, which is inapplicable to 3D poses above the ground. In contrast, frameworks designed for pose tracking generally isolate multi-view and multi-frame associations and may not be robust to footprint tracking, since footprint tracking utilizes fewer key points than pose tracking, which weakens multi-view association cues in a single frame. This study presents a Unified Multi-view Multi-person Tracking framework to bridge the gap between footprint tracking and pose tracking. Without additional modifications, the framework can adopt monocular 2D bounding boxes and 2D poses as the input to produce robust 3D trajectories for multiple persons. Importantly, multi-frame and multi-view information are jointly employed to improve the performance of association and triangulation. The effectiveness of our framework is verified by accomplishing state-of-the-art performance on the Campus and Shelf datasets for 3D pose tracking, and by comparable results on the WILDTRACK and MMPTRACK datasets for 3D footprint tracking.

Results

TaskDatasetMetricValueModel
3D Human Pose EstimationShelfPCP3D97.7UTTM
3D Human Pose EstimationCampusPCP3D97UMMT
Pose EstimationShelfPCP3D97.7UTTM
Pose EstimationCampusPCP3D97UMMT
Object TrackingMMPTRACK3DMOTA95UMMT
3DShelfPCP3D97.7UTTM
3DCampusPCP3D97UMMT
3D Multi-Person Pose EstimationShelfPCP3D97.7UTTM
3D Multi-Person Pose EstimationCampusPCP3D97UMMT
1 Image, 2*2 StitchiShelfPCP3D97.7UTTM
1 Image, 2*2 StitchiCampusPCP3D97UMMT

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