Compressive Sensing via Variational Bayesian Inference

Mohammad Shekaramiz, T. Moon
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引用次数: 2

Abstract

The sparse signal recovery problem from a set of compressively sensed noisy measurements using sparse Bayesian learning (SBL) modeling and variational Bayesian (VB) inference technique is considered. In the context of SBL, two main approaches are considered here. In the first approach, each component of the sparse signal is modeled via a Gaussian prior with a Gamma/inverse-Gamma hyper prior on its variance/precision. In the second model, each component of the sparse signal is modeled via a Gaussian prior combined with a Bernoulli prior along with a Gamma/inverse-Gamma hyper prior on its variance/precision. In this work, we consider such modeling and derive the update rules for the latent variables and parameters of each modeling in detail. We believe that such rigorous details on these two modeling and inferences provide sufficient intuition for better understanding the inference using variational Bayes, which can also serve as basic models when incorporating any further structures on the sparse/compressible signal.
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基于变分贝叶斯推理的压缩感知
在SBL的背景下,这里考虑了两种主要方法。在第一种方法中,通过高斯先验对稀疏信号的每个分量进行建模,并对其方差/精度进行Gamma/逆Gamma超先验。在第二个模型中,稀疏信号的每个分量通过高斯先验与伯努利先验以及方差/精度上的Gamma/逆Gamma超先验相结合来建模。在这项工作中,我们考虑了这种建模,并详细推导了每种建模的潜在变量和参数的更新规则。我们相信,这两种建模和推理的严格细节为更好地理解使用变分贝叶斯的推理提供了足够的直觉,它也可以作为在稀疏/可压缩信号上结合任何进一步结构的基本模型。
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