资源论文Occlusion Geodesics for Online Multi-Object Tracking

Occlusion Geodesics for Online Multi-Object Tracking

2019-12-16 | |  65 |   47 |   0

Abstract

Robust multi-object tracking-by-detection requires the correct assignment of noisy detection results to object trajectories. We address this problem by proposing an online approach based on the observation that object detectors primarily fail if objects are signifificantly occluded. In contrast to most existing work, we only rely on geometric information to effificiently overcome detection failures. In particular, we exploit the spatio-temporal evolution of occlusion regions, detector reliability, and target motion prediction to robustly handle missed detections. In combination with a conservative association scheme for visible objects, this allows for real-time tracking of multiple objects from a single static camera, even in complex scenarios. Our evaluations on publicly available multi-object tracking benchmark datasets demonstrate favorable performance compared to the state-of-the-art in online and offlfline multi-object tracking

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