Gesture Recognition with Sensor Data Fusion of Two Complementary Sensing Methods*

M. Landgraf, I. S. Yoo, J. Sessner, Maximilian Mooser, Dominik Kaufmann, David Mattejat, S. Reitelshöfer, J. Franke
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引用次数: 6

Abstract

This paper presents the further development of a Dielectric Elastomer Sensor (DES) based gesture recognition system by sensor data fusion of two complementary sensor systems. The combination of two independent sensor systems with different physical principles enables a reliable recognition of hand and arm movements, which can be used to distinguish the origin of the movement, which means whether it is initiated actively by the nervous system or passively by external forces. The voluntary movements of the hand with the corresponding activity of the forearm muscles are registered with a noninvasive electromyography sensor system of the Myo gesture control armband. The steady-state positions of the passively positioned arm are detected with flexible DES stretching over the arm joints. In this paper, the solution approach as well as the experimental setup for a wearable gesture recognition system based on sensor data fusion of the sensors is presented. Promising results show the capability of combining the advantages of each sensor by fusion of the two different sensor data. This system can be used in various applications such as rehabilitation monitoring or intuitive control of robot systems.
两种互补传感方法的传感器数据融合手势识别*
本文提出了一种基于介电弹性体传感器(DES)的手势识别系统的进一步发展,该系统将两个互补传感器系统的传感器数据融合在一起。两个具有不同物理原理的独立传感器系统的结合,可以可靠地识别手和手臂的运动,可以用来区分运动的起源,即它是由神经系统主动发起的还是由外力被动发起的。手部的随意运动与前臂肌肉的相应活动通过Myo手势控制臂带的无创肌电传感器系统进行记录。被动定位的手臂的稳态位置是通过在手臂关节上伸展的柔性DES来检测的。本文提出了一种基于传感器数据融合的可穿戴手势识别系统的解决方法和实验装置。结果表明,通过融合两种不同的传感器数据,可以将每个传感器的优势结合起来。该系统可用于各种应用,如康复监测或机器人系统的直观控制。
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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