首页 /研究 /Learning Human-to-Robot Handovers from Point Clouds
HRI

Learning Human-to-Robot Handovers from Point Clouds

Sammy Christen, Wei Yang, Claudia Pérez-D’Arpino, Otmar Hilliges, Dieter Fox, Yu-Wei Chao

发表年份
2023
引用次数
42

摘要

We propose the first framework to learn control policies for vision-based human-to-robot handovers, a critical task for human-robot interaction. While research in Embodied AI has made significant progress in training robot agents in simulated environments, interacting with humans remains challenging due to the difficulties of simulating humans. Fortunately, recent research has developed realistic simulated environments for human-to-robot handovers. Leveraging this result, we introduce a method that is trained with a human-in-the-loop via a two-stage teacher-student framework that uses motion and grasp planning, reinforcement learning, and self-supervision. We show significant performance gains over baselines on a simulation benchmark, sim-to-sim transfer and sim-to-real transfer. Video and code are available at https://handover-sim2real.github.io.

关键词

Computer scienceRobotTask (project management)Reinforcement learningGRASPHandoverBenchmark (surveying)Human–computer interactionArtificial intelligenceHuman–robot interaction

相关论文

查看 HRI 分类全部论文