论文标题

非凸结构相检索

Non-Convex Structured Phase Retrieval

论文作者

Vaswani, Namrata

论文摘要

相位检索(PR)有时也称为二次传感,是一个问题,发生在许多信号和图像采集域中,范围从光学,X射线晶体学,傅立叶Ptychography,founier Ptychography,Sub-Draction Imaging和天文学。在这些域中的每个域中,采集系统的物理学都规定,只能测量信号或图像的某些线性投影的大小(强度)。没有任何关于未知信号的假设,准确的恢复必定需要一组过度的测量值。降低测量/样品复杂性的唯一方法是在未知信号/图像上放置额外的假设。通过利用以许多自然信号或信号序列固有存在的结构来获得简单且实际上有效的假设集。两个常用的结构假设是(i)给定信号/图像的稀疏性或(ii)由集合形成的矩阵中的低等级模型,例如,信号/图像的时间顺序。两者都经过探索以以样品有效的方式解决PR问题。本文介绍了这项工作,重点介绍了在简单假设下保证样本复杂性的非凸方法。我们还简要描述了最近文献中已使用的其他不同类型的结构假设。

Phase retrieval (PR), also sometimes referred to as quadratic sensing, is a problem that occurs in numerous signal and image acquisition domains ranging from optics, X-ray crystallography, Fourier ptychography, sub-diffraction imaging, and astronomy. In each of these domains, the physics of the acquisition system dictates that only the magnitude (intensity) of certain linear projections of the signal or image can be measured. Without any assumptions on the unknown signal, accurate recovery necessarily requires an over-complete set of measurements. The only way to reduce the measurements/sample complexity is to place extra assumptions on the unknown signal/image. A simple and practically valid set of assumptions is obtained by exploiting the structure inherently present in many natural signals or sequences of signals. Two commonly used structural assumptions are (i) sparsity of a given signal/image or (ii) a low rank model on the matrix formed by a set, e.g., a time sequence, of signals/images. Both have been explored for solving the PR problem in a sample-efficient fashion. This article describes this work, with a focus on non-convex approaches that come with sample complexity guarantees under simple assumptions. We also briefly describe other different types of structural assumptions that have been used in recent literature.

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