肌电信息信号评价系统的前瞻性综合研究综述

Joslyn Benalva Gracias
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引用次数: 0

摘要

人类神经信号由于对人体生理系统具有不可否认的控制作用,近年来受到广泛的研究。这些肌电信号已经并将继续用于医疗数据处理设备和人类辅助机器人的分析。本文提出了一种分析肌电信号的前瞻性程序,该程序综合了已经单独评估的技术来执行设计的处理。首先,本文简要回顾了传统的肌电图采集方法,然后概述了提出的数据分析技术,包括分割数据,忽略冗余数据和重要数据的分类。本文简要回顾了KF-LDA的设计,该设计结合了KF估计非线性级数和稳定稳态LDA分类的能力。所提出的评价系统综合使用了人工神经网络和KF-LDA进行数据分类。此外,还列举了肌电图评价的广泛应用领域,并总结了结论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Prospective Synthesis for Evaluation System of EMG Information Signal-An Overview
Human nerve signal are being extensively studied in recent times due to their undeniable control on human physiological system. These Myoelectric signals have been and continue to be analyzed for medical data processing devices and human assistance robots. In this paper, a prospective procedure to analyze EMG signals has been proposed which synthesizes the techniques that have been evaluated individually to perform designed processing. Initially the paper briefly reviews the conventional EMG acquisition method followed by the overview of the proposed data analysis techniques that involve the segmenting data, disregarding redundant data and classification of significant data. The paper briefly reviews KF-LDA design that assembles KF's ability to estimate non-linear progressions and stable steady state LDA classification. The proposed evaluation system synthesizes the use of ANN and KF-LDA for data classification. Furthermore, the broad areas of application for EMG evaluation are listed followed by a summarized conclusion.
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