Ramos Joao, Kim Sangbae
Department of Mechanical Science and Engineering, University of Illinois at Urbana-Champaign, Champaign, IL, USA.
Department of Mechanical Engineering, Massachusetts Institute of Technology, Cambridge, MA, USA.
Sci Robot. 2019 Oct 30;4(35). doi: 10.1126/scirobotics.aav4282.
Despite remarkable progress in artificial intelligence, autonomous humanoid robots are still far from matching human-level manipulation and locomotion proficiency in real applications. Proficient robots would be ideal first responders to dangerous scenarios such as natural or man-made disasters. When handling these situations, robots must be capable of navigating highly unstructured terrain and dexterously interacting with objects designed for human workers. To create humanoid machines with human-level motor skills, in this work, we use whole-body teleoperation to leverage human control intelligence to command the locomotion of a bipedal robot. The challenge of this strategy lies in properly mapping human body motion to the machine while simultaneously informing the operator how closely the robot is reproducing the movement. Therefore, we propose a solution for this bilateral feedback policy to control a bipedal robot to take steps, jump, and walk in synchrony with a human operator. Such dynamic synchronization was achieved by (i) scaling the core components of human locomotion data to robot proportions in real time and (ii) applying feedback forces to the operator that are proportional to the relative velocity between human and robot. Human motion was sped up to match a faster robot, or drag was generated to synchronize the operator with a slower robot. Here, we focused on the frontal plane dynamics and stabilized the robot in the sagittal plane using an external gantry. These results represent a fundamental solution to seamlessly combine human innate motor control proficiency with the physical endurance and strength of humanoid robots.
尽管人工智能取得了显著进展,但在实际应用中,自主人形机器人在操作和运动能力方面仍远不及人类水平。熟练的机器人将是应对自然灾害或人为灾难等危险场景的理想第一响应者。在处理这些情况时,机器人必须能够在高度非结构化的地形中导航,并与为人类工人设计的物体进行灵活交互。为了制造具有人类水平运动技能的人形机器,在这项工作中,我们使用全身遥操作来利用人类控制智能来指挥双足机器人的运动。这种策略的挑战在于将人体运动正确映射到机器上,同时告知操作员机器人对运动的再现程度。因此,我们提出了一种双边反馈策略的解决方案,以控制双足机器人与人类操作员同步地行走、跳跃和迈步。这种动态同步是通过以下方式实现的:(i)实时将人类运动数据的核心组件按机器人比例进行缩放,以及(ii)向操作员施加与人类和机器人之间的相对速度成正比的反馈力。人类运动速度加快以匹配更快的机器人,或者产生阻力以使操作员与较慢的机器人同步。在这里,我们专注于前平面动力学,并使用外部龙门架在矢状平面内稳定机器人。这些结果代表了一种将人类天生的运动控制能力与类人机器人的身体耐力和力量无缝结合的基本解决方案。