Litcius/Paper detail

From One Hand to Multiple Hands: Imitation Learning for Dexterous Manipulation From Single-Camera Teleoperation

Yuzhe Qin, Hao Su, Xiaolong Wang

2022IEEE Robotics and Automation Letters93 citationsDOI

Abstract

We propose to perform imitation learning for dexterous manipulation with multi-finger robot hand from human demonstrations, and transfer the policy to the real robot hand. We introduce a novel single-camera teleoperation system to collect the 3D demonstrations efficiently with only an iPad and a computer. One key contribution of our system is that we construct a customized robot hand for each user in the simulator, which is a manipulator resembling the same structure of the operator's hand. It provides an intuitive interface and avoid unstable human-robot hand retargeting for data collection, leading to large-scale and high quality data. Once the data is collected, the customized robot hand trajectories can be converted to different specified robot hands (models that are manufactured) to generate training demonstrations. With imitation learning using our data, we show large improvement over baselines with multiple complex manipulation tasks. Importantly, we show our learned policy is significantly more robust when transferring to the real robot.

Topics & Concepts

TeleoperationImitationComputer scienceArtificial intelligenceRobotRetargetingComputer visionConstruct (python library)Key (lock)Human–computer interactionSocial psychologyPsychologyComputer securityProgramming languageRobot Manipulation and LearningHand Gesture Recognition SystemsHuman Pose and Action Recognition