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首页> 外文期刊>IEEE Transactions on Biomedical Engineering >Multiscale Two-Directional Two-Dimensional Principal Component Analysis and Its Application to High-Dimensional Biomedical Signal Classification
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Multiscale Two-Directional Two-Dimensional Principal Component Analysis and Its Application to High-Dimensional Biomedical Signal Classification

机译:多尺度二维二维主成分分析及其在高维生物医学信号分类中的应用

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Goal: Time–frequency analysis incorporating the wavelet transform followed by the principal component analysis (WT-PCA) has been a powerful approach for the analysis of biomedical signals, such as electromyography (EMG), electroencephalography, electrocardiography, and Doppler ultrasound. Time–frequency coefficients at various scales were usually transformed into a 1-D array using only a single or a few signal channels. The steady improvement of biomedical recording techniques has increasingly permitted the registration of a high number of channels. However, WT-PCA is not applicable to high-dimensional recordings due to the curse of dimensionality and small sample size problem. In this study, we present a multiscale two-directional 2-D principal component analysis method for the efficient and effective extraction of essential feature information from high-dimensional signals. Multiscale matrices constructed in the first step incorporate the spatial correlation and physiological characteristics of subband signals among channels. In the second step, the two-directional 2-D PCA operates on the multiscale matrices to reduce the dimension, rather than vectors in conventional PCA. Results are presented from an experiment to classify 20 hand movements using 89-channel EMG signals recorded in stroke survivors, which illustrates the efficiency and effectiveness of the proposed method for a high-dimensional biomedical signal analysis.
机译:目标:时频分析结合了小波变换和主成分分析(WT-PCA),已经成为分析生物医学信号(如肌电图(EMG),脑电图,心电图和多普勒超声)的有效方法。通常仅使用一个或几个信号通道,即可将各种比例的时频系数转换为一维数组。生物医学记录技术的稳步改进越来越多地允许注册大量通道。但是,由于维数的诅咒和小样本量的问题,WT-PCA不适用于高维记录。在这项研究中,我们提出了一种多尺度的二维二维主成分分析方法,用于从高维信号中高效,有效地提取基本特征信息。第一步中构建的多尺度矩阵结合了信道之间子带信号的空间相关性和生理特性。在第二步中,双向二维PCA在多尺度矩阵上进行操作以减小维数,而不是传统PCA中的矢量。结果来自一个实验,该实验使用中风幸存者中记录的89通道EMG信号对20种手部运动进行了分类,这说明了所提出方法用于高维生物医学信号分析的效率和有效性。

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