This paper introduces and solves the simultaneous source separation and phase retrieval (S$^3$PR) problem. S$^3$PR is an important but largely unsolved problem in a number application domains, including microscopy, wireless communication, and imaging through scattering media, where one has multiple independent coherent sources whose phase is difficult to measure. In general, S$^3$PR is highly under-determined, non-convex, and difficult to solve. In this work, we demonstrate that by restricting the solutions to lie in the range of a deep generative model, we can constrain the search space sufficiently to solve S$^3$PR.
翻译:本文介绍并解决了同时存在的源分离和阶段检索(S$3PR)问题。S$3PR是若干应用领域的一个重要但基本上尚未解决的问题,包括显微镜、无线通信和通过散布媒体的成像,在这种应用领域,一个人有多种独立的、连成一体的、难以测量的源头。一般来说,S$3PR是高度不确定、非混凝土,而且难以解决。在这项工作中,我们证明,通过将解决方案限制在深厚的基因模型的范围内,我们可以限制搜索空间,足以解决S$3PR问题。