School of Mechatronic Engineering and Automation, Shanghai University, Shanghai 200444, China.
Institute of Wireless Theories and Technologies Lab, Beijing University of Posts and Telecommunications, Beijing 100876, China.
Sensors (Basel). 2022 Feb 14;22(4):1457. doi: 10.3390/s22041457.
Restricted by the diversity and complexity of human behaviors, simulating a character to achieve human-level perception and motion control is still an active as well as a challenging area. We present a style-based teleoperation framework with the help of human perceptions and analyses to understand the tasks being handled and the unknown environment to control the character. In this framework, the motion optimization and body controller with center-of-mass and root virtual control (CR-VC) method are designed to achieve motion synchronization and style mimicking while maintaining the balance of the character. The motion optimization synthesizes the human high-level style features with the balance strategy to create a feasible, stylized, and stable pose for the character. The CR-VC method including the model-based torque compensation synchronizes the motion rhythm of the human and character. Without any inverse dynamics knowledge or offline preprocessing, our framework is generalized to various scenarios and robust to human behavior changes in real-time. We demonstrate the effectiveness of this framework through the teleoperation experiments with different tasks, motion styles, and operators. This study is a step toward building a human-robot interaction that uses humans to help characters understand and achieve the tasks.
受人类行为多样性和复杂性的限制,模拟一个角色以实现人类水平的感知和运动控制仍然是一个活跃且具有挑战性的领域。我们提出了一种基于风格的遥操作框架,借助人类的感知和分析来理解正在处理的任务和未知环境,以控制角色。在这个框架中,设计了运动优化和质心和根虚拟控制 (CR-VC) 方法的身体控制器,以在保持角色平衡的同时实现运动同步和风格模仿。运动优化将人类的高级风格特征与平衡策略相结合,为角色创建一个可行、风格化且稳定的姿势。包括基于模型的扭矩补偿的 CR-VC 方法同步了人和角色的运动节奏。我们的框架无需任何逆动力学知识或离线预处理,就可以推广到各种场景,并在实时中对人类行为变化具有鲁棒性。我们通过不同任务、运动风格和操作员的遥操作实验证明了该框架的有效性。这项研究是朝着建立一种使用人类帮助角色理解和完成任务的人机交互迈出的一步。