论文标题
DeepInit阶段检索
DeepInit Phase Retrieval
论文作者
论文摘要
本文展示了如何利用数据驱动的深层生成模型来解决具有挑战性的相位检索问题,其中人们希望仅从少数强度测量中重建信号。众所周知,如果初始化接近最佳的情况,但遇到了非凸度,并且经常卡在本地最小值中,则已知经典的迭代算法可以很好地工作。因此,我们提出了DeepInit相的检索,在计算快速经典算法的训练有素的初始化之前,它在深度生成数据下使用正则化梯度下降(例如,随机的kaczmarz方法)。我们从经验上表明,即使存在明显的发电机模型误差,我们的混合方法也能够以低采样率提供很高的重建结果。因此,从概念上讲,学到的初始化可能会通过更接近全球最佳距离的经典下降步骤来帮助克服问题的非跨性别。此外,我们的想法表明,与常规基于梯度的重建方法相比,运行时性能优越。我们评估我们的通用测量方法,并从经验上证明它也适用于在Terahertz单像素相中发现的衍射型测量模型。
This paper shows how data-driven deep generative models can be utilized to solve challenging phase retrieval problems, in which one wants to reconstruct a signal from only few intensity measurements. Classical iterative algorithms are known to work well if initialized close to the optimum but otherwise suffer from non-convexity and often get stuck in local minima. We therefore propose DeepInit Phase Retrieval, which uses regularized gradient descent under a deep generative data prior to compute a trained initialization for a fast classical algorithm (e.g. the randomized Kaczmarz method). We empirically show that our hybrid approach is able to deliver very high reconstruction results at low sampling rates even when there is significant generator model error. Conceptually, learned initializations may therefore help to overcome the non-convexity of the problem by starting classical descent steps closer to the global optimum. Also, our idea demonstrates superior runtime performance over conventional gradient-based reconstruction methods. We evaluate our method for generic measurements and show empirically that it is also applicable to diffraction-type measurement models which are found in terahertz single-pixel phase retrieval.