Back to Search Start Over

Hand-Object Interaction Controller (HOIC): Deep Reinforcement Learning for Reconstructing Interactions with Physics

Authors :
Hu, Haoyu
Yi, Xinyu
Cao, Zhe
Yong, Jun-Hai
Xu, Feng
Publication Year :
2024

Abstract

Hand manipulating objects is an important interaction motion in our daily activities. We faithfully reconstruct this motion with a single RGBD camera by a novel deep reinforcement learning method to leverage physics. Firstly, we propose object compensation control which establishes direct object control to make the network training more stable. Meanwhile, by leveraging the compensation force and torque, we seamlessly upgrade the simple point contact model to a more physical-plausible surface contact model, further improving the reconstruction accuracy and physical correctness. Experiments indicate that without involving any heuristic physical rules, this work still successfully involves physics in the reconstruction of hand-object interactions which are complex motions hard to imitate with deep reinforcement learning. Our code and data are available at https://github.com/hu-hy17/HOIC.<br />Comment: SIGGRAPH 2024 Conference Track

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2405.02676
Document Type :
Working Paper