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Hand Movement Classification Using Burg Reflection Coefficients

机译:使用Burg反射系数的手运动分类

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摘要

Classification of electromyographic signals has a wide range of applications, from clinical diagnosis of different muscular diseases to biomedical engineering, where their use as input for the control of prosthetic devices has become a hot topic of research. The challenge of classifying these signals relies on the accuracy of the proposed algorithm and the possibility of its implementation in hardware. This paper considers the problem of electromyography signal classification, solved with the proposed signal processing and feature extraction stages, with the focus lying on the signal model and time domain characteristics for better classification accuracy. The proposal considers a simple preprocessing technique that produces signals suitable for feature extraction and the Burg reflection coefficients to form learning and classification patterns. These coefficients yield a competitive classification rate compared to the time domain features used. Sometimes, the feature extraction from electromyographic signals has shown that the procedure can omit less useful traits for machine learning models. Using feature selection algorithms provides a higher classification performance with as few traits as possible. The algorithms achieved a high classification rate up to 100% with low pattern dimensionality, with other kinds of uncorrelated attributes for hand movement identification.
机译:肌电信号的分类具有广泛的应用,从不同的肌肉疾病的临床诊断到生物医学工程,其中将其用作控制假体设备的输入已成为研究的热点。对这些信号进行分类的挑战取决于所提出算法的准确性及其在硬件中实现的可能性。本文考虑了肌电信号分类的问题,通过提出的信号处理和特征提取阶段来解决,重点放在信号模型和时域特征上,以实现更好的分类精度。该提案考虑了一种简单的预处理技术,该技术可产生适合特征提取的信号和Burg反射系数,以形成学习和分类模式。与所使用的时域特征相比,这些系数产生具有竞争力的分类率。有时,从肌电信号中提取特征表明该过程可以省略机器学习模型的较少有用特征。使用特征选择算法可提供更高的分类性能,并尽可能减少特征。该算法以较低的图案尺寸实现了高达100%的高分类率,并具有用于手运动识别的其他不相关属性。

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