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STUDY OF BI-CRITERION UPPER BODY POSTURE PREDICTION USING PARETO OPTIMAL SETS

机译:使用帕累托最优套的双标准上半身姿势预测研究

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This study involves further development of a direct approach to optimization-based posture prediction by using multi-objective optimization (MOO). Human performance measures representing joint displacement and delta potential energy are aggregated to predict more realistically, how virtual humans move. It is found that potential energy does not govern independently human posture. Rather, it must be coupled with another objective to avoid non-unique solutions and to improve realism. In any case, it is more suitable when reaching behind the avatar. Thus, we refine the idea of task-based posture prediction, concluding that performance measures should depend not only on the task being completed but also on where the task is completed relative to the human. Pareto optimal sets are depicted using the weighted sum and weighted min-max methods for MOO. By leveraging a special form of Pareto optimal set, insight is gained concerning how the functions should be combined. We find that the two MOO methods perform equally well, and the general form of the sets is independent of the target (to be touched with the finger) location.
机译:本研究涉及通过使用多目标优化(MOO)进一步发展基于优化的姿势预测的直接方法。代表关节位移和三角洲潜在能量的人力绩效措施被汇总以更新地预测,虚拟人类如何移动。结果发现,潜在的能量不会立即管理人类姿势。相反,它必须与另一个目的联系,以避免非独特的解决方案并改善现实主义。在任何情况下,在到达化身后面就更合适。因此,我们优化了基于任务的姿势预测的想法,结论是,性能措施不仅应依赖于完成的任务,而且还要依赖于任务相对于人类完成的任务。使用加权和Moo的加权和加权MIN-MAX方法描绘了Pareto最佳集。通过利用特殊形式的Pareto最佳集合,有关如何组合函数的洞察力。我们发现两个Moo方法同样良好地执行,并且该组的一般形式独立于目标(用手指触摸)位置。

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