In this paper we consider the nonlinear inverse problem of phase retrieval in the context of dynamical sampling. Where phase retrieval deals with the recovery of signals & images from phaseless measurements, dynamical sampling was introduced by Aldroubi et al in 2015 as a tool to recover diffusion fields from spatiotemporal samples. Considering finite-dimensional signals evolving in time under the action of a known matrix, our aim is to recover the signal up to global phase in a stable way from the absolute value of certain space-time measurements. First, we state necessary conditions for the dynamical system of sampling vectors to make the recovery of the unknown signal possible. The conditions deal with the spectrum of the given matrix and the initial sampling vector. Then, assuming that we have access to a specific set of further measurements related to aligned sampling vectors, we provide a feasible procedure to recover almost every signal up to global phase using polarization techniques. Moreover, we show that by adding extra conditions like full spark, the recovery of all signals is possible without exceptions.
翻译:在本文中,我们考虑了动态取样中阶段检索的非线性反问题。当阶段检索涉及从无阶段测量中恢复信号和图像时,Aldroubi等人于2015年推出了动态取样,作为从空间瞬时样本中恢复扩散场的工具。考虑到在已知矩阵行动下逐渐演变的有限维信号,我们的目标是从某些空间时间测量的绝对值中稳定地恢复信号到全球阶段。首先,我们为动态采样矢量系统创造必要条件,使未知信号的恢复成为可能。条件涉及给定的矩阵和初始采样矢量的频谱。然后,假设我们能够获得与统一采样矢量有关的一套具体的进一步测量,我们提供了一个可行的程序,利用两极分化技术将几乎所有信号都恢复到全球阶段。此外,我们表明,通过增加诸如全面火花等附加条件,所有信号的恢复是可能的,没有例外。