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MANIPULATION

An Empirical Study and Analysis of Learning Generalizable Manipulation Skill in the SAPIEN Simulator

Kun Liu, Huiyuan Fu, Zheng Zhang, Huanpu Yin

Year
2022
Access
Open access

Abstract

This paper provides a brief overview of our submission to the no interaction track of SAPIEN ManiSkill Challenge 2021. Our approach follows an end-to-end pipeline which mainly consists of two steps: we first extract the point cloud features of multiple objects; then we adopt these features to predict the action score of the robot simulators through a deep and wide transformer-based network. More specially, %to give guidance for future work, to open up avenues for exploitation of learning manipulation skill, we present an empirical study that includes a bag of tricks and abortive attempts. Finally, our method achieves a promising ranking on the leaderboard. All code of our solution is available at https://github.com/liu666666/bigfish\_codes.

Keywords

cs.ROcs.AIcs.CV

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