压缩相位检索:具有深度生成先验的最优样本复杂度

IF 4.3 3区 材料科学 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC
Paul Hand, Oscar Leong, Vladislav Voroninski
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引用次数: 5

摘要

压缩感知(CS)的进展提供了具有最佳样本复杂度的线性测量稀疏信号的重建算法,但该方法在非线性逆问题中的自然扩展遇到了潜在的基本样本复杂度瓶颈。特别是,具有稀疏先验的压缩相位检索的易处理算法无法实现最优的样本复杂度。这在压缩相位检索中产生了一个开放的问题:在一般的无相线性测量下,是否存在可处理的重构算法,可以获得最佳的样本复杂度?与此同时,机器学习的进步导致了以生成模型形式的新的数据驱动信号先验的发展,它可以用更少的测量来优于稀疏先验。在这项工作中,我们解决了压缩相位检索中的开放问题,并证明生成先验可以通过可处理的算法实现最佳样本复杂度,从而导致根本性的进步。我们还提供了经验表明,在相位检索中利用生成先验可以显著优于稀疏先验。这些结果在经验和理论上都为生成先验作为各种情况下信号恢复的新范式提供了支持。这种范式的优势在于:(1)生成先验可以比稀疏先验更简洁地表示某些类别的自然信号;(2)生成先验允许对自然信号流形进行直接优化,这在稀疏先验下是难以处理的;(3)生成先验的非凸优化问题可以在最佳样本复杂性下允许良性优化景观,甚至在非线性测量的情况下也是如此。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Compressive phase retrieval: Optimal sample complexity with deep generative priors

Advances in compressive sensing (CS) provided reconstruction algorithms of sparse signals from linear measurements with optimal sample complexity, but natural extensions of this methodology to nonlinear inverse problems have been met with potentially fundamental sample complexity bottlenecks. In particular, tractable algorithms for compressive phase retrieval with sparsity priors have not been able to achieve optimal sample complexity. This has created an open problem in compressive phase retrieval: under generic, phaseless linear measurements, are there tractable reconstruction algorithms that succeed with optimal sample complexity? Meanwhile, progress in machine learning has led to the development of new data-driven signal priors in the form of generative models, which can outperform sparsity priors with significantly fewer measurements. In this work, we resolve the open problem in compressive phase retrieval and demonstrate that generative priors can lead to a fundamental advance by permitting optimal sample complexity by a tractable algorithm. We additionally provide empirics showing that exploiting generative priors in phase retrieval can significantly outperform sparsity priors. These results provide support for generative priors as a new paradigm for signal recovery in a variety of contexts, both empirically and theoretically. The strengths of this paradigm are that (1) generative priors can represent some classes of natural signals more concisely than sparsity priors, (2) generative priors allow for direct optimization over the natural signal manifold, which is intractable under sparsity priors, and (3) the resulting non-convex optimization problems with generative priors can admit benign optimization landscapes at optimal sample complexity, perhaps surprisingly, even in cases of nonlinear measurements.

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来源期刊
CiteScore
7.20
自引率
4.30%
发文量
567
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