用于测量人体肌肉力量的MyoWare(肌电肌肉传感器)原型

Angga Rahagiyanto, Gandu Eko Julianto Suyoso, Veronika Vestine, Abdullah Iskandar
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摘要

人机交互(HCI)成为帮助人类与计算机连接的解决方案。许多研究人员已经开发了与HCI相关的研究和工具。HCI能够帮助人类在人与计算机之间以及人与人之间建立相当远的联系。其中一个HCI模型应用于MyoWare工具,该工具可以使用肌电(EMG)传感器捕捉手部肌肉运动。本文描述了如何组装和识别从MyoWare工具生成的原始数据。在手上使用MyoWare可以产生肌电数据输出。MyoWare仅使用EMG传感器,生成的数据形式为Envelope EMG和Raw EMG,两者的尺度和大小不同。这需要一个提取特征的过程来使数据统一。本研究使用Moment Invariant方法提取特征,并使用min-max方法对MyoWare传感器上生成的每个数据进行归一化。测试是通过简单的手部动作完成的。测试结果表明,即使在不同的姿势下,手势的差异也能被很好地识别出来。
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Prototype of MyoWare (Electromyography Muscle Sensor) for Measuring People’s Muscle Strengths
Human-Computer Interaction (HCI) becomes a solution to help humans connect with computers. Research and tools related to HCI have been developed by many researchers. HCI is able to help humans connect between humans and computers and humans with humans at a considerable distance. One of HCI model is applied to the MyoWare tool that can capture hand muscle movements using an electromyograph (EMG) sensor. This article describes how to assemble and identify the raw data generated from the MyoWare tool. Using MyoWare on the hand could produce EMG data output. MyoWare only used the EMG sensor and generated data in the form of Envelope EMG and Raw EMG which differed in scale and size. This required a extraction features process to make the data uniform. This study uses the Moment Invariant method to extract features and min-max to normalize each data generated on the MyoWare sensor. Testing was done by doing simple hand movements. The test results showed that the differences in gestures were recognized well even though they were performed in different positions.
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