Robot Person Following Under Partial Occlusion

Hanjing Ye, Jieting Zhao, Yaling Pan, Weinan Chen, Li He and Hong Zhang

ICRA 2023

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Abstract

Robot person following (RPF) is a capability that supports many useful human-robot-interaction (HRI) applications. However, existing solutions to person following often assume full observation of the tracked person. As a consequence, they cannot track the person reliably under partial occlusion where the assumption of full observation is not satisfied. In this paper, we focus on the problem of robot person following under partial occlusion caused by a limited field of view of a monocular camera. Based on the key insight that it is possible to locate the target person when one or more of his/her joints are visible, we propose a method in which each visible joint contributes a location estimate of the followed person. Experiments on a public person-following dataset show that, even under partial occlusion, the proposed method can still locate the person more reliably than the existing SOTA methods. As well, the application of our method is demonstrated in real experiments on a mobile robot.


Framework

Our proposed visible-joints-based RPF system is composed of a detection module including 2D person detector, 2D pose detector and appearance extraction model, a tracking module with prior model construction, track initialization, filtering, and data association, an identification module and a motion robot control module. This system can locate, track, and follow the target person even under partial occlusion. 

Video