Hand Action Classification via Wavelet Reconstruction and Sub-Frame Based Feature Extraction

Saima Zahin, Odrika Iqbal, S. Fattah, C. Shahnaz
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引用次数: 1

Abstract

Classification of basic hand movements from surface electromyography (sEMG) requires extraction of important information from the signal. In this study, a very simple analysis and classification of sEMG signal are presented which includes sub-frame formation and feature extraction. At first, the signal is decomposed by wavelet transform at level 1 using db44 as the mother wavelet. Both the approximate and the detailed coefficients are then used for vector reconstruction which is then subsequently broken down into overlapping sub-frames. A feature extraction step is carried out afterward from each of these sub-frames of the reconstructed signal and also the raw sEMG data. The mean of these sub-frame features is then subjected to classification using K-nearest neighborhood (KNN) classifier in a hierarchical approach. The proposed method is tested considering 5 cross 2 cross-validation scheme on a publicly available sEMG dataset containing six different hand movements collected from two females and two males. The study includes a comparison of classification accuracy of direct feature extraction from raw data and also from wavelet coefficients before reconstruction. This research proposes a highly simplified and faster way of classification of basic hand movements by decomposition and reconstruction providing an improved accuracy compared to previous methods of similar classification.
基于小波重构和子帧特征提取的手部动作分类
从表面肌电图(sEMG)中对手部基本运动进行分类需要从信号中提取重要信息。本文提出了一种非常简单的表面肌电信号分析和分类方法,包括子帧的形成和特征提取。首先,以db44为母小波对信号进行一级小波分解。然后将近似系数和详细系数用于矢量重建,然后将其分解为重叠的子帧。然后从重建信号的每个子帧和原始表面肌电信号数据中进行特征提取步骤。然后使用k -最近邻(KNN)分类器以分层方法对这些子框架特征的平均值进行分类。在一个公开可用的表面肌电信号数据集上,考虑5交叉2交叉验证方案,对所提出的方法进行了测试,该数据集包含来自两名女性和两名男性的六种不同的手部运动。该研究包括对原始数据的直接特征提取和重构前小波系数的分类精度的比较。本研究提出了一种高度简化和快速的手部基本动作的分解和重构分类方法,与以往类似的分类方法相比,该方法的准确率有所提高。
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