稀疏信号恢复的投影迭代硬阈值算法

Zhong Zhou, Tao Sun, Lizhi Cheng
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引用次数: 1

摘要

从一些线性测量中恢复稀疏信号正引起越来越多的关注。除了稀疏性之外,信号通常是非负的、非正的或在某些域中受限的。提出了一种通过学习稀疏性来恢复具有一定性质的稀疏信号的算法。我们将投影法与迭代硬阈值策略相结合,提出了该算法。我们证明了该算法是线性收敛的,只要感知矩阵具有合适的性质。数值结果表明了该算法的有效性。
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Projective iterative hard thresholding algorithm for sparse signal recovery
Recovering sparse signals from a few linear measurements is attracting growing attention. Bsides sparsity, the signals usually are nonnegative, nonpositive or restricted in some domain. This paper proposes an algorithm for recovering the sparse signal with some certain property on learning the sparsity. We propose this algorithm by combining the projective method with the iterative hard thresholding strategy. We prove that this algorithm is linear convergent provided the sensing matrix has suitable property. Numerical results demonstrate the efficiency of the algorithm.
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