自适应稀疏信号恢复问题的有效半光滑牛顿方法

Yanyun Ding, Haibin Zhang, P. Li, Yunhai Xiao
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引用次数: 0

摘要

我们知道压缩感知可以在有限等距条件下从高度欠采样数据中建立稳定的稀疏恢复结果。然而,在现实中,许多问题是连贯的,绝大多数传统方法可能效果不太好。最近的研究表明,使用范数与范数之差作为正则化总是具有更好的性能。本文考虑了一种自适应模型,其中-范数表示数据保真度,-项表示稀疏度。该模型能够处理不同类型的噪声,并在高相干条件下提取稀疏特性。我们采用近端最大化最小化技术处理非凸正则化项,然后采用半光滑牛顿法求解相应的凸松弛子问题。在一定的技术条件下,证明了用半光滑牛顿法生成的序列对子问题具有较快的局部收敛速度。最后,通过数值实验验证了该模型的优越性和算法的先进性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient semismooth Newton method for adaptive sparse signal recovery problems
We know that compressive sensing can establish stable sparse recovery results from highly undersampled data under a restricted isometry property condition. In reality, however, numerous problems are coherent, and vast majority conventional methods might work not so well. Recently, it was shown that using the difference between - and -norm as a regularization always has superior performance. In this paper, we consider an adaptive - model where the -norm with measures the data fidelity and the -term measures the sparsity. This proposed model has the ability to deal with different types of noises and extract the sparse property even under high coherent condition. We use a proximal majorization-minimization technique to handle the non-convex regularization term and then employ a semismooth Newton method to solve the corresponding convex relaxation subproblem. We prove that the sequence generated by the semismooth Newton method admits fast local convergence rate to the subproblem under some technical assumptions. Finally, we do some numerical experiments to demonstrate the superiority of the proposed model and the progressiveness of the proposed algorithm.
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