Characterizing and Compensating for Errors in a Leap Motion using PCA

Hussein Walugembe, Chris Phillips, Jesús Requena-Carrión, T. Timotijevic
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引用次数: 2

Abstract

This paper concerns a rehabilitation framework that makes use of a low cost "off-the-shelf" device. The device is a visual markerless sensor system called the Leap Motion controller (LM). However, before deploying the LM, we investigate its accuracy and limitations in measuring finger joint angles. During a rehabilitation procedure, patients will be flexing and extending their fingers and accurate feedback is a prerequisite for them to benefit effectively from the exercises. During finger joint angle error analysis, we conducted a series of experiments to assess the accuracy of the LM in terms of parameters like elevation, lateral (side-to-side) positioning, forward-backward positioning, and rotation of the hand relative to the LM. We used an "artist’s hand" placed above the LM. The artist’s hand is more accurate than a human hand in performing static hand gestures as it can maintain a fixed posture as long as is necessary. According to the results of the error analysis, we apply Principal Component Analysis (PCA) to the LM raw data to see whether the algorithm can compensate for these errors. The experimental results show that the PCA algorithm is feasible, effective and can be applied such that fairly accurate measurements can be obtained and therefore suitable feedback can be provided to the patient using the LM for hand rehabilitation purposes.
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用PCA对跳跃运动误差进行表征和补偿
本文涉及一种利用低成本“现成”设备的康复框架。该设备是一种视觉无标记传感器系统,称为Leap Motion controller (LM)。然而,在部署LM之前,我们研究了它在测量手指关节角度方面的准确性和局限性。在康复过程中,患者将弯曲和伸展他们的手指,准确的反馈是他们有效地从练习中受益的先决条件。在手指关节角度误差分析中,我们进行了一系列实验来评估LM的精度,包括仰角、横向(左右)定位、前后定位以及手相对于LM的旋转等参数。我们使用了一个“艺术家的手”放在LM之上。艺术家的手在执行静态手势时比人类的手更准确,因为它可以在必要时保持固定的姿势。根据误差分析的结果,我们将主成分分析(PCA)应用于LM原始数据,看看算法是否可以补偿这些误差。实验结果表明,PCA算法是可行的、有效的,可以得到相当精确的测量结果,从而为使用LM的患者提供适当的反馈,用于手部康复。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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