论文标题
阶段检索:从计算成像到机器学习
Phase Retrieval: From Computational Imaging to Machine Learning
论文作者
论文摘要
相位检索是从仅强度测量值中恢复复杂值的信号。随着它遍及多种应用,许多研究人员一直在努力开发回相算法。经典方法涉及的技术与通用梯度的例程或专门光谱方法一样多样。然而,阶段恢复问题一直是今天的挑战。然而,最近,机器学习的进步通过两种方式振兴了相位检索的研究:从相位检索和单层神经网络之间的类比中出现了重大理论进步。由于深入学习的正则化,已经获得了实践突破。在本教程中,我们在一个统一的框架下回顾了阶段检索,该框架涵盖了古典和机器学习方法。我们专注于三个关键要素:应用程序,最新重建算法的概述以及最新的理论结果。
Phase retrieval consists in the recovery of a complex-valued signal from intensity-only measurements. As it pervades a broad variety of applications, many researchers have striven to develop phase-retrieval algorithms. Classical approaches involve techniques as varied as generic gradient-descent routines or specialized spectral methods, to name a few. Yet, the phase-recovery problem remains a challenge to this day. Recently, however, advances in machine learning have revitalized the study of phase retrieval in two ways: significant theoretical advances have emerged from the analogy between phase retrieval and single-layer neural networks; practical breakthroughs have been obtained thanks to deep-learning regularization. In this tutorial, we review phase retrieval under a unifying framework that encompasses classical and machine-learning methods. We focus on three key elements: applications, overview of recent reconstruction algorithms, and the latest theoretical results.