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Myoelectric signal classification based on S transform and two-directional two-dimensional principal component analysis

机译:基于S变换和双向二维主成分分析的肌电信号分类

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Time-frequency representiation has been intensively employed for the analysis of biomedical signals. In order to extract discriminative information, time-frequency matrix is often transformed into a 1D vector followed by principal component analysis (PCA). This study contributes a two-directional two-dimensional principal component analysis (2D(2)PCA)-based technique for time-frequency feature extraction. The S transform, integrating the strengths of short time Fourier transform and wavelet transform, is applied to perform the time-frequency decomposition. Then, 2D(2)PCA is directly conducted on the time-frequency matrix rather than 1D vectors for feature extraction. The proposed method can significantly reduce the computational cost while capture the directions of maximal time-frequency matrix variance. The efficiency and effectiveness of the proposed method is demonstrated by classifying eight hand motions using 4-channel myoelectric signals recorded in health subjects and amputees.
机译:时间频率表示被强烈地用于分析生物医学信号。 为了提取歧视信息,时间频率矩阵通常被转换为1D向量,然后是主成分分析(PCA)。 该研究有助于为时频特征提取的基于双向二维主成分分析(2D(2)PCA)基础技术。 S的变换,集成短时间傅里叶变换和小波变换的强度,用于执行时频分解。 然后,在时间频率矩阵而不是1D向量上直接进行2D(2)PCA,用于特征提取。 所提出的方法可以显着降低计算成本,同时捕获最大时频矩阵方差的方向。 通过在健康主题和术语中记录的4通道肌电信号进行分类,通过分类八个手动运动来证明所提出的方法的效率和有效性。

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