Back to Search Start Over

PaperBot: Learning to Design Real-World Tools Using Paper

Authors :
Liu, Ruoshi
Liang, Junbang
Sudhakar, Sruthi
Ha, Huy
Chi, Cheng
Song, Shuran
Vondrick, Carl
Liu, Ruoshi
Liang, Junbang
Sudhakar, Sruthi
Ha, Huy
Chi, Cheng
Song, Shuran
Vondrick, Carl
Publication Year :
2024

Abstract

Paper is a cheap, recyclable, and clean material that is often used to make practical tools. Traditional tool design either relies on simulation or physical analysis, which is often inaccurate and time-consuming. In this paper, we propose PaperBot, an approach that directly learns to design and use a tool in the real world using paper without human intervention. We demonstrated the effectiveness and efficiency of PaperBot on two tool design tasks: 1. learning to fold and throw paper airplanes for maximum travel distance 2. learning to cut paper into grippers that exert maximum gripping force. We present a self-supervised learning framework that learns to perform a sequence of folding, cutting, and dynamic manipulation actions in order to optimize the design and use of a tool. We deploy our system to a real-world two-arm robotic system to solve challenging design tasks that involve aerodynamics (paper airplane) and friction (paper gripper) that are impossible to simulate accurately.<br />Comment: Project Website: https://paperbot.cs.columbia.edu

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438535937
Document Type :
Electronic Resource