Measurement System for Classification of Hand’s Gesture

L. Peter, Filip Maryncak, A. Proto, M. Penhaker
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Abstract

The goal was to create precise hardware that would be able to measure signal of myopotentials from defined area of forearm for the computer analysis without external noise and with right amplification. The second goal was to program an algorithm which could classify specific gestures of hand based on an analysis of myopotencial signals. The computer software was programmed in C# programming language. Signal processing and drawing to user interface was in real time. The one of five possible gestures that user made was analysed by using fuzzy logic and designed system of scaling. It was developed fuzzy classification which is able to recognize gestures with high accuracy.
手势分类测量系统
目标是创建精确的硬件,能够测量前臂指定区域的肌电位信号,供计算机分析,没有外部噪声和适当的放大。第二个目标是编写一种算法,该算法可以根据对肌电位信号的分析对特定的手部手势进行分类。计算机软件是用c#编程语言编写的。信号处理和绘制到用户界面是实时的。利用模糊逻辑对用户可能做出的五种手势中的一种进行了分析,并设计了缩放系统。本文提出了一种模糊分类方法,能够对手势进行高精度的识别。
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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