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Robust Sparse Bayesian Learning for Sparse Signal Recovery Under Unknown Noise Distributions

机译:未知噪声分布下稀疏信号恢复的强大稀疏贝叶斯学习

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摘要

This paper considers the robust recovery problem of sparse signal with sparse Bayesian learning (SBL) in noisy environments. Most of the current SBL algorithms are constructed on the optimization problem using the square loss, which mainly deals with Gaussian noise. However, real measurements are often contaminated by an unknown distributed noise that is unlikely to be Gaussian. To prevent performance degradation of SBL in such cases, we propose a robust sparse Bayesian learning method with a simple but effective hierarchical noise model. Using this model, the resultant loss is made up of a weighted error measure and a priori-dependent constraint on the weight, and then provides the flexibility for resisting the outliers and adapting to the real noise. A type-II Bayesian estimate is performed to infer the related model parameter and the unknown sparse signal. The advantage of our method is demonstrated by extensive experiments on synthetic data and real radio tomographic imaging data.
机译:本文考虑了嘈杂环境中具有稀疏贝叶斯学习(SBL)的稀疏信号的强大恢复问题。大多数当前SBL算法在使用方形损耗的优化问题上构建,主要涉及高斯噪声。然而,真实的测量通常由不太可能是高斯的未知分布式噪声污染。为了防止SBL的性能下降,我们提出了一种具有简单但有效的分层噪声模型的强大稀疏贝叶斯学习方法。使用此模型,所得到的损耗由加权误差测量和重量的先验限制构成,然后为抵制异常值并适应真实噪声来提供灵活性。执行II型贝叶斯估计,以推断相关模型参数和未知的稀疏信号。通过对合成数据和真正的无线电断层成像数据的广泛实验来证明我们方法的优点。

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