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Message-passing algorithms for compressed sensing

机译:压缩感知的消息传递算法

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摘要

Compressed sensing aims to undersample certain high-dimensional signals yet accurately reconstruct them by exploiting signal characteristics. Accurate reconstruction is possible when the object to be recovered is sufficiently sparse in a known basis. Currently, the best known sparsity-undersampling tradeoff is achieved when reconstructing by convex optimization, which is expensive in important large-scale applications. Fast iterative thresholding algorithms have been intensively studied as alternatives to convex optimization for large-scale problems. Unfortunately known fast algorithms offer substantially worse sparsity-undersampling tradeoffs than convex optimization. We introduce a simple costless modification to iterative thresholding making the sparsity-undersampling tradeoff of the new algorithms equivalent to that of the corresponding convex optimization procedures. The new iterative-thresholding algorithms are inspired by belief propagation in graphical models. Our empirical measurements of the sparsity-undersampling tradeoff for the new algorithms agree with theoretical calculations. We show that a state evolution formalism correctly derives the true sparsity-undersampling tradeoff. There is a surprising agreement between earlier calculations based on random convex polytopes and this apparently very different theoretical formalism.
机译:压缩感测旨在对某些高维信号进行欠采样,同时通过利用信号特性来准确地重构它们。当要回收的物体在已知基础上足够稀疏时,可以进行精确的重建。当前,当通过凸优化进行重构时,实现了最著名的稀疏欠采样折衷,这在重要的大规模应用中非常昂贵。快速迭代阈值算法已被广泛研究,作为大规模问题凸优化的替代方法。不幸的是,与凸优化相比,已知的快速算法提供的稀疏性欠采样折衷要差得多。我们为迭代阈值引入了一种简单的无成本修改,使新算法的稀疏性欠采样权衡等效于相应的凸优化过程。新的迭代阈值算法受到图形模型中信念传播的启发。我们对新算法的稀疏性欠采样权衡的经验测量与理论计算相符。我们表明,状态演化形式主义正确地得出了真正的稀疏-欠采样权衡。在基于随机凸多面体的较早计算与这种明显不同的理论形式主义之间达成了令人惊讶的协议。

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