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首页> 外文期刊>Journal of physiology, Paris. >Robotics-based synthesis of human motion.
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Robotics-based synthesis of human motion.

机译:基于机器人的人体运动综合。

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The synthesis of human motion is a complex procedure that involves accurate reconstruction of movement sequences, modeling of musculoskeletal kinematics, dynamics and actuation, and characterization of reliable performance criteria. Many of these processes have much in common with the problems found in robotics research. Task-based methods used in robotics may be leveraged to provide novel musculoskeletal modeling methods and physiologically accurate performance predictions. In this paper, we present (i) a new method for the real-time reconstruction of human motion trajectories using direct marker tracking, (ii) a task-driven muscular effort minimization criterion and (iii) new human performance metrics for dynamic characterization of athletic skills. Dynamic motion reconstruction is achieved through the control of a simulated human model to follow the captured marker trajectories in real-time. The operational space control and real-time simulation provide human dynamics at any configuration of the performance. A new criteria of muscular effort minimization has been introduced to analyze human static postures. Extensive motion capture experiments were conducted to validate the new minimization criterion. Finally, new human performance metrics were introduced to study in details an athletic skill. These metrics include the effort expenditure and the feasible set of operational space accelerations during the performance of the skill. The dynamic characterization takes into account skeletal kinematics as well as muscle routing kinematics and force generating capacities. The developments draw upon an advanced musculoskeletal modeling platform and a task-oriented framework for the effective integration of biomechanics and robotics methods.
机译:人体运动的合成是一个复杂的过程,其中包括运动序列的准确重建,肌肉骨骼运动学的建模,动力学和致动以及可靠性能标准的表征。这些过程中的许多与机器人研究中发现的问题有很多共通之处。可以利用机器人技术中基于任务的方法来提供新颖的肌肉骨骼建模方法和生理上准确的性能预测。在本文中,我们提出(i)使用直接标记跟踪实时重建人体运动轨迹的新方法,(ii)任务驱动的肌肉力量最小化准则,以及(iii)用于动态表征人体运动的新人类绩效指标运动技能。通过控制模拟人体模型以实时跟踪捕获的标记轨迹来实现动态运动重建。操作空间控制和实时仿真可在任何性能配置下提供人为动力。引入了最小化肌肉力量的新标准来分析人体的静态姿势。进行了广泛的运动捕捉实验以验证新的最小化标准。最后,引入了新的人类绩效指标来详细研究运动技能。这些指标包括技能支出期间的精力支出和可行的一组操作空间加速。动态表征考虑了骨骼运动学,肌肉运动学和力量产生能力。这些开发利用了先进的肌肉骨骼建模平台和面向任务的框架,以有效整合生物力学和机器人方法。

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