基于协方差拟合准则的在线群稀疏估计

Ted Kronvall, Stefan Ingi Adalbjornsson, Santhosh Nadig, A. Jakobsson
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引用次数: 2

摘要

在本文中,我们提出了一种最新的无超参数群稀疏估计技术的时间递归实现。这是通过将称为group-SPICE的原始方法重新表述为具有适当正则化水平的平方根group-LASSO来实现的,并为此导出了时间递归实现。采用近似梯度步长来降低计算成本,该方法可以有效地处理由平稳和非平稳信号组成的数据序列,如瞬态信号和/或调幅信号。数值算例说明了该方法对相干高斯字典和多基音估计问题的有效性。
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Online group-sparse estimation using the covariance fitting criterion
In this paper, we present a time-recursive implementation of a recent hyperparameter-free group-sparse estimation technique. This is achieved by reformulating the original method, termed group-SPICE, as a square-root group-LASSO with a suitable regularization level, for which a time-recursive implementation is derived. Using a proximal gradient step for lowering the computational cost, the proposed method may effectively cope with data sequences consisting of both stationary and non-stationary signals, such as transients, and/or amplitude modulated signals. Numerical examples illustrates the efficacy of the proposed method for both coherent Gaussian dictionaries and for the multi-pitch estimation problem.
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