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首页> 外文期刊>International journal of humanoid robotics >3D HUMAN LIFTING MOTION PREDICTION WITH DIFFERENT PERFORMANCE MEASURES
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3D HUMAN LIFTING MOTION PREDICTION WITH DIFFERENT PERFORMANCE MEASURES

机译:具有不同性能指标的3D人举运动预测

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摘要

This paper presents an optimization-based method for predicting a human dynamic lifting task. The three-dimensional digital human skeletal model has 55 degrees of freedom. Lifting motion is generated by minimizing an objective function (human performance measure) subjected to basic physical and kinematical constraints. Four objective functions are investigated in the formulation: the dynamic effort, the balance criterion, the maximum shear force at spine joint and the maximum pressure force at spine joint. The simulation results show that various human performance measures predict different lifting strategies: the balance and shear force performance measures predict back-lifting motion and the dynamic effort and pressure force performance measures generate squat-lifting motion. In addition, the effects of box locations on the lifting strategies are also studied. All kinematics and kinetic data are successfully predicted for the lifting motion by using the predictive dynamics algorithm and the optimal solution was obtained in about one minute.
机译:本文提出了一种基于优化的预测人类动态举升任务的方法。三维数字人体骨骼模型具有55个自由度。举升运动是通过使受基本物理和运动约束的目标函数(人类绩效指标)最小化而产生的。在配方中研究了四个目标函数:动力,平衡标准,脊柱关节处的最大剪切力和脊柱关节处的最大压力。仿真结果表明,各种人体性能指标可以预测不同的举升策略:平衡和剪力性能指标可以预测后举动作,而动态力和压力性能指标则可以产生深蹲动作。此外,还研究了箱子位置对提升策略的影响。通过使用预测动力学算法,成功地预测了提升运动的所有运动学和动力学数据,并在大约一分钟内获得了最佳解。

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