论文标题
辅助VR健身房:与真实人的互动以改善虚拟辅助机器人
Assistive VR Gym: Interactions with Real People to Improve Virtual Assistive Robots
论文作者
论文摘要
多才多艺的机器人护理人员可以使全球数百万的人受益,包括老年人和残疾人。最近的工作探索了机器人护理人员如何通过物理模拟学会与人们互动,但是将所学的东西转移到真正的机器人方面仍然具有挑战性。虚拟现实(VR)有可能帮助弥合模拟与现实世界之间的差距。我们提出了辅助VR体育馆(AVR体育馆),这使真实的人能够与虚拟辅助机器人互动。我们还提供了证据,表明AVR体育馆可以帮助研究人员改善与真实人员的模拟辅助机器人的性能。在进行AVR健身房之前,我们仅在模拟四个机器人护理任务(机器人辅助喂养,饮酒,瘙痒刮擦和床浴)的模拟中训练了机器人控制策略(原始政策),并使用了两个模拟机器人(来自Kinova的Willow Garage和Jaco的PR2)。借助AVR健身房,我们根据与真实人一起测试原始政策获得的见解制定了修订的政策。通过对AVR体育馆的八名参与者进行的正式研究,我们发现原始政策的执行效果不佳,修订后的政策表现出色,并且对用于培训修订后的政策的生物力学模型的改进导致模拟的人更匹配真实的参与者。值得注意的是,参与者明显不同意原始政策在援助方面取得了成功,但显着同意修订后的政策在援助方面取得了成功。总体而言,我们的结果表明,VR可用于与真实的人一起提高模拟训练的控制政策的性能,而不会使人们处于危险之中,从而成为真正的机器人援助的宝贵垫脚石。
Versatile robotic caregivers could benefit millions of people worldwide, including older adults and people with disabilities. Recent work has explored how robotic caregivers can learn to interact with people through physics simulations, yet transferring what has been learned to real robots remains challenging. Virtual reality (VR) has the potential to help bridge the gap between simulations and the real world. We present Assistive VR Gym (AVR Gym), which enables real people to interact with virtual assistive robots. We also provide evidence that AVR Gym can help researchers improve the performance of simulation-trained assistive robots with real people. Prior to AVR Gym, we trained robot control policies (Original Policies) solely in simulation for four robotic caregiving tasks (robot-assisted feeding, drinking, itch scratching, and bed bathing) with two simulated robots (PR2 from Willow Garage and Jaco from Kinova). With AVR Gym, we developed Revised Policies based on insights gained from testing the Original policies with real people. Through a formal study with eight participants in AVR Gym, we found that the Original policies performed poorly, the Revised policies performed significantly better, and that improvements to the biomechanical models used to train the Revised policies resulted in simulated people that better match real participants. Notably, participants significantly disagreed that the Original policies were successful at assistance, but significantly agreed that the Revised policies were successful at assistance. Overall, our results suggest that VR can be used to improve the performance of simulation-trained control policies with real people without putting people at risk, thereby serving as a valuable stepping stone to real robotic assistance.