AnyTeleop: A General Vision-Based Dexterous Robot Arm-Hand Teleoperation System


Yuzhe Qin
University of California San Diego
Wei Yang
NVIDIA
Binghao Huang
University of California San Diego
Karl Van Wyk
NVIDIA
Hao Su
University of California San Diego
Xiaolong Wang
University of California San Diego
Yu-Wei Chao
NVIDIA
Dieter Fox
NVIDIA Research / University of Washington
Paper Website

Paper ID 15

Session 2. Manipulation from Demonstrations and Teleoperation

Poster Session Tuesday, July 11

Poster 15

Abstract: Vision-based teleoperation offers the possibility to endow robots with human-level intelligence to physically interact with the environment, while only requiring low-cost camera sensors. However, current vision-based teleoperation systems are designed and engineered towards a particular robot model and deploy environment, which scales poorly as the pool of the robot models expanded and the variety of the operating environment increases. In this paper, we propose AnyTeleop, a unified and general teleoperation system to support multiple different arms, hands, realities, and camera configurations within a single system. Although being designed to provide great flexibility to the choice of simulators and real hardware, our system can still achieve great performance. For real-world experiments, AnyTeleop can outperform a previous system that was designed for the specific robot hardware with a higher success rate, using the same robot. For teleoperation in simulation, AnyTeleop leads to better imitation learning performance, compared with a previous system that is particularly designed for that simulator.