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Sparse Estimation Based on a New Random Regularized Matching Pursuit Generalized Approximate Message Passing Algorithm

机译:基于新的随机正则匹配追踪广义近似消息传递算法的稀疏估计

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Approximate Message Passing (AMP) and Generalized AMP (GAMP) algorithms usually suffer from serious convergence issues when the elements of the sensing matrix do not exactly match the zero-mean Gaussian assumption. To stabilize AMP/GAMP in these contexts, we have proposed a new sparse reconstruction algorithm, termed the Random regularized Matching pursuit GAMP (RrMpGAMP). It utilizes a random splitting support operation and some dropout/replacement support operations to make the matching pursuit steps regularized and uses a new GAMP-like algorithm to estimate the non-zero elements in a sparse vector. Moreover, our proposed algorithm can save much memory, be equipped with a comparable computational complexity as GAMP and support parallel computing in some steps. We have analyzed the convergence of this GAMP-like algorithm by the replica method and provided the convergence conditions of it. The analysis also gives an explanation about the broader variance range of the elements of the sensing matrix for this GAMP-like algorithm. Experiments using simulation data and real-world synthetic aperture radar tomography (TomoSAR) data show that our method provides the expected performance for scenarios where AMP/GAMP diverges.
机译:当传感矩阵的元素与零均值高斯假设不完全匹配时,近似消息传递(AMP)和通用AMP(GAMP)算法通常会遇到严重的收敛问题。为了在这些情况下稳定AMP / GAMP,我们提出了一种新的稀疏重建算法,称为随机正则匹配跟踪GAMP(RrMpGAMP)。它利用随机分裂支持操作和一些删除/替换支持操作来使匹配追踪步骤规则化,并使用一种新的类似于GAMP的算法来估计稀疏向量中的非零元素。此外,我们提出的算法可以节省大量内存,具有与GAMP相当的计算复杂度,并在某些步骤中支持并行计算。我们通过复制方法分析了这种类似于GAMP的算法的收敛性,并提供了其收敛条件。分析还给出了关于这种GAMP类算法的感测矩阵元素的较宽方差范围的解释。使用模拟数据和现实世界的合成孔径雷达层析成像(TomoSAR)数据进行的实验表明,我们的方法为AMP / GAMP发生分歧的情况提供了预期的性能。

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