人-机器人交互中摄动估计的动态模态分解

Erik Berger, M. Sastuba, David Vogt, B. Jung, H. B. Amor
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引用次数: 27

摘要

在许多情况下,例如物理人机交互,机器人的行为必须是健壮的或多或少的自发应用的外力。通常,这个问题是通过特殊用途的力传感器来解决的,然而,在许多机器人平台上是不可用的。相比之下,我们提出了一种机器学习方法,适用于更常见的,尽管通常有噪声的传感器。这种机器学习方法利用动态模态分解(DMD)来提取非线性系统的动态。因此,它非常适合于在不同行为配置下循环机器人运动期间从传感器读数中的规则振荡中分离噪声。我们用一个人形机器人在行走过程中施加物理力的例子来证明我们方法的可行性。在训练阶段,学习基于快照的特定行为参数配置的DMD模型。在任务执行过程中,机器人必须检测和估计由人类交互伙伴施加的外力。我们比较了基于dmd的方法与其他插值方案,并表明前者优于后者,特别是在存在传感器噪声的情况下。我们得出结论,DMD迄今为止主要用于其他科学领域,特别是流体力学,也是机器人技术的一种非常有前途的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic Mode Decomposition for perturbation estimation in human robot interaction
In many settings, e.g. physical human-robot interaction, robotic behavior must be made robust against more or less spontaneous application of external forces. Typically, this problem is tackled by means of special purpose force sensors which are, however, not available on many robotic platforms. In contrast, we propose a machine learning approach suitable for more common, although often noisy sensors. This machine learning approach makes use of Dynamic Mode Decomposition (DMD) which is able to extract the dynamics of a nonlinear system. It is therefore well suited to separate noise from regular oscillations in sensor readings during cyclic robot movements under different behavior configurations. We demonstrate the feasibility of our approach with an example where physical forces are exerted on a humanoid robot during walking. In a training phase, a snapshot based DMD model for behavior specific parameter configurations is learned. During task execution the robot must detect and estimate the external forces exerted by a human interaction partner. We compare the DMD-based approach to other interpolation schemes and show that the former outperforms the latter particularly in the presence of sensor noise. We conclude that DMD which has so far been mostly used in other fields of science, particularly fluid mechanics, is also a highly promising method for robotics.
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