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Exploiting Statistical Dependencies in Sparse Representations for Signal Recovery

机译:利用稀疏表示中的统计依赖性进行信号恢复

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Signal modeling lies at the core of numerous signal and image processing applications. A recent approach that has drawn considerable attention is sparse representation modeling, in which the signal is assumed to be generated as a combination of a few atoms from a given dictionary. In this work we consider a Bayesian setting and go beyond the classic assumption of independence between the atoms. The main goal of this paper is to introduce a statistical model that takes such dependencies into account and show how this model can be used for sparse signal recovery. We follow the suggestion of two recent works and assume that the sparsity pattern is modeled by a Boltzmann machine, a commonly used graphical model. For general dependency models, exact MAP and MMSE estimation of the sparse representation becomes computationally complex. To simplify the computations, we propose greedy approximations of the MAP and MMSE estimators. We then consider a special case in which exact MAP is feasible, by assuming that the dictionary is unitary and the dependency model corresponds to a certain sparse graph. Exploiting this structure, we develop an efficient message passing algorithm that recovers the underlying signal. When the model parameters defining the underlying graph are unknown, we suggest an algorithm that learns these parameters directly from the data, leading to an iterative scheme for adaptive sparse signal recovery. The effectiveness of our approach is demonstrated on real-life signals-patches of natural images-where we compare the denoising performance to that of previous recovery methods that do not exploit the statistical dependencies.
机译:信号建模是众多信号和图像处理应用程序的核心。最近引起关注的方法是稀疏表示模型,其中假定信号是作为给定字典中几个原子的组合而生成的。在这项工作中,我们考虑了贝叶斯环境,并且超越了原子之间独立性的经典假设。本文的主要目的是介绍一种统计模型,该模型考虑了这种依赖性,并说明了该模型如何用于稀疏信号恢复。我们遵循两项最新工作的建议,并假设稀疏模式是通过Boltzmann机器(一种常用的图形模型)建模的。对于一般的依赖性模型,稀疏表示的精确MAP和MMSE估计在计算上变得复杂。为了简化计算,我们提出了MAP和MMSE估计量的贪婪近似。然后,我们通过假设字典是单一的,并且依赖模型对应于某个稀疏图,来考虑一种精确的MAP可行的特殊情况。利用这种结构,我们开发了一种有效的消息传递算法,可以恢复基础信号。当定义基础图的模型参数未知时,我们建议一种直接从数据中学习这些参数的算法,从而为自适应稀疏信号恢复提供一种迭代方案。我们的方法的有效性在自然图像的现实信号斑块上得到了证明,在该信号斑块中,我们将去噪性能与以前未利用统计依赖性的恢复方法进行了比较。

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