以线性逆问题序列求解参考图像的傅里叶相位检索

M. Salman Asif
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引用次数: 1

摘要

傅里叶相位恢复问题相当于从二维图像的自相关测量中恢复图像。这个问题通常是非线性和非凸的。良好的初始化和关于目标图像的支持度或稀疏度的先验信息对于稳健恢复通常是至关重要的。在本文中,我们证明了已知参考图像的存在可以帮助我们将非线性相位恢复问题解决为一系列小线性逆问题。我们的顺序方法不是一次恢复整个图像,而是通过在每一步解决线性反卷积问题来恢复少量的行或列。现有的基于参考点(全息)的相位恢复方法要么假设参考点和目标点图像充分分离,从而恢复问题是线性的,要么通过非线性优化来恢复图像。相比之下,我们提出的方法不需要分离条件。我们进行了大量的模拟,以证明我们提出的方法可以在不同的参考位置和噪声设置下成功地从自相关数据中恢复图像。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solving Fourier Phase Retrieval with a Reference Image as a Sequence of Linear Inverse Problems
Fourier phase retrieval problem is equivalent to the recovery of a two-dimensional image from its autocorrelation measurements. This problem is generally nonlinear and nonconvex. Good initialization and prior information about the support or sparsity of the target image are often critical for a robust recovery. In this paper, we show that the presence of a known reference image can help us solve the nonlinear phase retrieval problem as a sequence of small linear inverse problems. Instead of recovering the entire image at once, our sequential method recovers a small number of rows or columns by solving a linear deconvolution problem at every step. Existing methods for the reference-based (holographic) phase retrieval either assume that the reference and target images are sufficiently separated so that the recovery problem is linear or recover the image via nonlinear optimization. In contrast, our proposed method does not require the separation condition. We performed an extensive set of simulations to demonstrate that our proposed method can successfully recover images from autocorrelation data under different settings of reference placement and noise.
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