部分轨迹对准的贝叶斯估计

Przemyslaw A. Lasota, J. Shah
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引用次数: 5

摘要

时间序列的时间排列问题在许多研究领域都很常见。在机器人领域,人体运动轨迹是一种时间序列,通常用于识别和预测人类的意图。在这些应用中,部分轨迹到完整代表性轨迹的在线时间对齐是特别有趣的,因为在运动的早期做出准确的意图预测决策是可取的,以便使主动机器人行为成为可能。这是一个特别困难的问题,然而,由于潜在的重叠轨迹区域和临时停止,这两者都会降低现有对准技术的性能。此外,不仅需要提供最可能的对齐,而且还要描述围绕它的不确定性,这是当前方法无法完成的。为了解决这些困难和缺点,我们提出了BEST-PTA,这是一个结合了优化、监督学习和无监督学习组件的框架,目的是建立一个贝叶斯模型,该模型可以根据观察到的部分轨迹数据输出可能对应点的分布。通过结合多个数据集的评估,我们表明BEST-PTA优于以前的比对技术;此外,我们证明了这种改进可以显著提高人类运动预测性能,并讨论了这些结果对提高人机交互质量的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Estimator for Partial Trajectory Alignment
The problem of temporal alignment of time series is common across many fields of study. Within the domain of robotics, human motion trajectories are one type of time series that is often utilized for recognition and prediction of human intent. In these applications, online temporal alignment of partial trajectories to a full representative trajectory is of particular interest, as it is desirable to make accurate intent prediction decisions early in a motion in order to enable proactive robot behavior. This is a particularly difficult problem, however, due to the potential for overlapping trajectory regions and temporary stops, both of which can degrade the performance of existing alignment techniques. Furthermore, it is desirable to not only provide the most likely alignment but also characterize the uncertainty around it, which current methods are unable to accomplish. To address these difficulties and drawbacks, we present BEST-PTA, a framework that combines optimization, supervised learning, and unsupervised learning components in order to build a Bayesian model that outputs distributions over likely correspondence points based on observed partial trajectory data. Through an evaluation incorporating multiple datasets, we show that BEST-PTA outperforms previous alignment techniques; furthermore, we demonstrate that this improvement can significantly boost human motion prediction performance and discuss the implications of these results on improving the quality of human-robot interaction.
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