Regularized Hard Thresholding Pursuit (RHTP) for Sparse Signal Recovery

S. Mukhopadhyay, M. Chakraborty
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Abstract

Hard thresholding pursuit (HTP) is a recently proposed iterative sparse recovery algorithm which is a result of combination of a support selection step from iterated hard thresholding (IHT) and an estimation step from the orthogonal matching pursuit (OMP). HTP has been seen to enjoy improved recovery guarantee along with enhanced speed of convergence. Much of the success of HTP can be attributed to its improved support selection capability due to the support selection step from IHT. In this paper, we propose a generalized HTP algorithm, called regularized HTP (RHTP), where the support selection step of HTP is modified by replacing the cost function involved in the support selection with a regularized cost function. With decomposable regularizer, satisfying certain regularity conditions, the RHTP algorithm is shown to produce a sequence dynamically equivalent to a sequence evolving according to a HTP-like evolution, where the identification stage has a gradient premultiplied with a time-varying diagonal matrix. RHTP is also proven, both theoretically, and numerically, to enjoy faster convergence visa-vis HTP with both noiseless and noisy measurement vectors.
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稀疏信号恢复的正则化硬阈值追踪
硬阈值追踪(HTP)是最近提出的一种迭代稀疏恢复算法,它是将迭代硬阈值(IHT)的支持选择步骤与正交匹配追踪(OMP)的估计步骤相结合的结果。http已被视为享有改进的恢复保证以及增强的收敛速度。http的成功很大程度上归功于它改进的支持选择能力,因为它采用了来自IHT的支持选择步骤。本文提出了一种广义的HTP算法,称为正则化HTP (RHTP),其中HTP的支持选择步骤通过将支持选择中涉及的代价函数替换为正则化代价函数来修改。利用可分解正则器,满足一定的正则性条件,RHTP算法产生的序列动态等效于按照类http进化进化的序列,其中识别阶段是一个梯度预乘一个时变对角矩阵。在理论上和数值上,RHTP也被证明与具有无噪声和有噪声测量向量的HTP相比具有更快的收敛速度。
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