论文标题

部分可观测时空混沌系统的无模型预测

Unfolding-Aided Bootstrapped Phase Retrieval in Optical Imaging

论文作者

Pinilla, Samuel, Mishra, Kumar Vijay, Shevkunov, Igor, Soltanalian, Mojtaba, Katkovnik, Vladimir, Egiazarian, Karen

论文摘要

光学成像中的相位检索是指从以其衍射模式的形式获取的无相度数据中恢复复杂信号。这些模式通过具有连贯的光源的系统获取,该系统采用衍射光学元件(DOE)来调节场景,从而导致传感器的编码衍射模式。最近,模型驱动网络或深层展开的混合方法已成为传统基于模型和基于学习的相位检索技术的有效替代方法,因为它允许界定算法的复杂性,同时还可以保留其功效。此外,这种混合方法在改善理论独特条件下的设计方面已经显示出希望。有机会利用新颖的实验设置并解决更复杂的DOE相位检索应用。本文概述了对自举的算法和深度展开的应用的概述 - 无论近,中间和远区域 - 相位检索。

Phase retrieval in optical imaging refers to the recovery of a complex signal from phaseless data acquired in the form of its diffraction patterns. These patterns are acquired through a system with a coherent light source that employs a diffractive optical element (DOE) to modulate the scene resulting in coded diffraction patterns at the sensor. Recently, the hybrid approach of model-driven network or deep unfolding has emerged as an effective alternative to conventional model-based and learning-based phase retrieval techniques because it allows for bounding the complexity of algorithms while also retaining their efficacy. Additionally, such hybrid approaches have shown promise in improving the design of DOEs that follow theoretical uniqueness conditions. There are opportunities to exploit novel experimental setups and resolve even more complex DOE phase retrieval applications. This paper presents an overview of algorithms and applications of deep unfolding for bootstrapped - regardless of near, middle, and far zones - phase retrieval.

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