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A transform domain sparse LMS-type algorithm for highly correlated biomedical signals in sparse system identification

机译:稀疏系统识别中高度相关生物医学信号的变换域稀疏LMS类型算法

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The convergence behavior of least-mean-square (LMS) algorithm is highly dependent on the correlation of the input data and, consequently, on the eigenvalue spread of its correlation matrix. To overcome this issue, LMS algorithm is studied in different transform domains in order to decrease this eigenvalue spread. In this paper, we propose a new transform domain LMS algorithm with function controlled variable step-size for sparse system identification. The proposed algorithm imposes a transform domain to the input signal and an approximate l norm penalty term in the cost function of the function controlled variable step-size LMS (FC-VSSLMS) algorithm. The algorithm has been tested in the presence of highly correlated signals, i.e., Electrocardiography (ECG) and Electromyography (EMG) signals, and has shown very remarkable performance compared to those of the sparse FC-VSSLMS (SFCVSSLMS) and transform domain reweighted zero-attracting LMS (TD-RZALMS) algorithms.
机译:最小均方(LMS)算法的收敛行为高度依赖于输入数据的相关性,因此,也取决于其相关矩阵的特征值散布。为了克服这个问题,在不同的变换域中研究了LMS算法,以减少该特征值散布。在本文中,我们提出了一种新的变换域LMS算法,该算法具有函数控制的可变步长大小,用于稀疏系统识别。所提出的算法在函数控制的可变步长LMS(FC-VSSLMS)算法的成本函数中,对输入信号施加了一个变换域和一个近似的l范数惩罚项。该算法已在高度相关的信号(即心电图(ECG)和肌电图(EMG)信号)下进行了测试,与稀疏FC-VSSLMS(SFCVSSLMS)和变换域重加权零信号相比,表现出非常出色的性能吸引LMS(TD-RZALMS)算法。

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