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Optimal design of Hermitian transform and vectors of both mask and window coefficients for denoising applications with both unknown noise characteristics and distortions

机译:用于具有未知噪声特性和失真的降噪应用的Hermitian变换以及蒙版和窗口系数矢量的优化设计

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This paper proposes an optimal design of a Hermitian transform and vectors of both mask and window coefficients for denoising signals with both unknown noise characteristics and distortions. The signals are represented in the vector form. Then, they are transformed to a new domain via multiplying these vectors to a Hermitian matrix. A vector of mask coefficients is point by point multiplied to the transformed vectors. The processed vectors are transformed back to the time domain. A vector of window coefficients is point by point multiplied to the processed vectors. An optimal design of the Hermitian matrix and the vectors of both mask and window coefficients is formulated as a quadratically constrained programming problem subject to a Hermitian constraint. By initializing the window coefficients, the Hermitian matrix and the vector of mask coefficients are derived via an orthogonal Procrustes approach. Based on the obtained Hermitian matrix and the vector of mask coefficients, the vector of window coefficients is derived. By iterating these two procedures, the final Hermitian matrix and the vectors of both mask and window coefficients are obtained. The convergence of the algorithm is guaranteed. The proposed method is applied to denoise both clinical electrocardiograms and electromyograms as well as speech signals with both unknown noise characteristics and distortions. Experimental results show that the proposed method outperforms existing denoising methods.
机译:本文提出了一种Hermitian变换以及掩码系数和窗口系数向量的最佳设计,以对具有未知噪声特征和失真的信号进行降噪。信号以矢量形式表示。然后,通过将这些向量乘以Hermitian矩阵,将它们转换到新的域。掩码系数的矢量逐点乘以变换后的矢量。经处理的向量被变换回时域。窗口系数矢量逐点乘以处理后的矢量。埃尔米特矩阵的最佳设计以及掩模和窗口系数的矢量都被公式化为受到埃尔米特约束的二次约束编程问题。通过初始化窗口系数,可通过正交Procrustes方法导出Hermitian矩阵和掩码系数矢量。基于获得的埃尔米特矩阵和掩码系数的向量,得出窗口系数的向量。通过迭代这两个过程,可以获得最终的埃尔米特矩阵以及掩码系数和窗口系数的向量。保证了算法的收敛性。该方法适用于对临床心电图和肌电图以及具有未知噪声特征和失真的语音信号进行降噪。实验结果表明,该方法优于现有的去噪方法。

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