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Speed based classification of mechanomyogram using fuzzy logic

机译:基于模糊逻辑的基于速度的机电图分类

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摘要

Mechanomyogram (MMG) signals are the mechanical signals obtained from muscles during contractions. They are less sensitive to skin impedance, sensor placement and require only low cost hardware to process the signal. Till date there are only very few applications in which MMG signals are used. The work aims at development of a standalone system for generating control signals required to drive assistive devices which provide support for disabled and elderly people. This paper presents the initial phase of the work, which focuses on the development of a fuzzy classifier. The classifier is developed to categorize the different speeds of elbow movements into rest, slow and fast. For this, MMG signal from biceps brachii are acquired and processed. Two time-domain features namely, mean absolute value and variance are extorted from the segmented data and is given to the fuzzy inference system. The average accuracy of the classifier is found to be 72.72%.
机译:机电图(MMG)信号是在收缩过程中从肌肉获得的机械信号。它们对皮肤阻抗,传感器放置不太敏感,并且仅需要低成本硬件即可处理信号。迄今为止,只有极少数的应用使用MMG信号。这项工作旨在开发一个独立的系统,以生成驱动辅助设备所需的控制信号,该辅助设备为残疾人和老年人提供支持。本文介绍了工作的初始阶段,重点是模糊分类器的开发。分类器的开发目的是将肘部运动的不同速度分为静止,慢速和快速。为此,获取并处理了来自肱二头肌的MMG信号。从分割的数据中提取出两个时域特征,即均值绝对值和方差,并将其提供给模糊推理系统。发现分类器的平均准确性为72.72%。

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