论文标题
深层迭代相对于Ptychography
Deep Iterative Phase Retrieval for Ptychography
论文作者
论文摘要
衍射成像领域中最突出的挑战之一是相位检索(PR)问题:为了从其衍射模式重建对象,必须计算逆傅立叶变换。只有考虑到完整的复合物值衍射数据,即大小和相位,才有可能。但是,在衍射成像中,通常只能在需要估计相的同时直接测量幅度。在这项工作中,我们专门考虑PtyChography是衍射成像的子场,其中对象是从多个重叠衍射图像中重建的。我们建议使用旨在完善每次迭代结果的神经网络的现有迭代相检索算法的增强。为此,我们从语音处理字段适应并扩展了最近提出的架构。评估结果表明,根据迭代计数和算法运行时,提出的方法可提供提高的收敛速率。
One of the most prominent challenges in the field of diffractive imaging is the phase retrieval (PR) problem: In order to reconstruct an object from its diffraction pattern, the inverse Fourier transform must be computed. This is only possible given the full complex-valued diffraction data, i.e. magnitude and phase. However, in diffractive imaging, generally only magnitudes can be directly measured while the phase needs to be estimated. In this work we specifically consider ptychography, a sub-field of diffractive imaging, where objects are reconstructed from multiple overlapping diffraction images. We propose an augmentation of existing iterative phase retrieval algorithms with a neural network designed for refining the result of each iteration. For this purpose we adapt and extend a recently proposed architecture from the speech processing field. Evaluation results show the proposed approach delivers improved convergence rates in terms of both iteration count and algorithm runtime.