A new iterative weighted norm minimization algorithm and its applications

I. Gorodnitsky, B. Rao
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引用次数: 25

Abstract

A general class of linear inverse problems in which the solutions are sparse and localized is considered. The proposed algorithm is a nonparametric approach that finds sparse and localized solutions without prior information on the constraints. Each step of the iterative procedure consists in solving a weighted least squares problem wherein the weighting matrix is determined by the solution from the previous iteration. Some properties of the algorithm along with its applications to problems in direction of arrival and spectrum estimation are presented.<>
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一种新的迭代加权范数最小化算法及其应用
研究一类解稀疏且局部化的线性反问题。提出的算法是一种非参数方法,可以在没有约束的先验信息的情况下找到稀疏和局部解。迭代过程的每一步都包括求解一个加权最小二乘问题,其中权重矩阵由前一次迭代的解确定。介绍了该算法的一些特性及其在到达方向和频谱估计问题中的应用。
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