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Real-Time Physics-Based Object Pose Tracking during Non-Prehensile Manipulation

2022-11-24 12:44:33
Zisong Xu, Rafael Papallas, Mehmet Dogar

Abstract

We propose a method to track the 6D pose of an object over time, while the object is under non-prehensile manipulation by a robot. At any given time during the manipulation of the object, we assume access to the robot joint controls and an image from a camera looking at the scene. We use the robot joint controls to perform a physics-based prediction of how the object might be moving. We then combine this prediction with the observation coming from the camera, to estimate the object pose as accurately as possible. We use a particle filtering approach to combine the control information with the visual information. We compare the proposed method with two baselines: (i) using only an image-based pose estimation system at each time-step, and (ii) a particle filter which does not perform the computationally expensive physics predictions, but assumes the object moves with constant velocity. Our results show that making physics-based predictions is worth the computational cost, resulting in more accurate tracking, and estimating object pose even when the object is not clearly visible to the camera.

Abstract (translated)

URL

https://arxiv.org/abs/2211.13572

PDF

https://arxiv.org/pdf/2211.13572.pdf


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