Deep Learning based Synthetic Aperture Imaging in the Presence of Phase Errors via Decoding Priors

Samia Kazemi, Bariscan Yonel, B. Yazıcı
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Abstract

In this paper, we designed a deep learning (DL) based method for synthetic aperture imaging in the presence of phase errors. Random variations in the transmission medium resulting from unforeseen environmental changes, fluctuations in sensor locations, and multiple scattering effects in the background medium often amount to uncertainties in the assumed data models. Imaging algorithms that rely on back-projected estimates are susceptible to estimation errors under these circumstances. Moreover, under dynamic nature of the medium, collecting high volume of measurements under the same operating conditions may become challenging. Towards this end, our imaging network incorporates DL in three major steps: first, we implement a deep network (DN) for pre-processing the erroneous measurements; second, we implement a DL-based decoding prior by recovering an encoded version of the reflectivity vector associated with the scattering media to reduce sample complexity, which is then mapped to an image estimate by a decoding DN; finally, we consider a fixed step implementation of an iterative algorithm in the form of a recurrent neural network (RNN) by using the unrolling technique that leads to a model-based imaging operator. The parameters of all three DNs are learned simultaneously in a supervised manner. We verified the feasibility of our approach using simulated high fidelity synthetic aperture measurements.
基于深度学习的基于先验解码的相位误差合成孔径成像
本文设计了一种基于深度学习(DL)的相位误差合成孔径成像方法。由于不可预见的环境变化、传感器位置的波动以及背景介质中的多重散射效应而导致的传输介质的随机变化往往构成假设数据模型中的不确定性。在这种情况下,依赖于反向投影估计的成像算法容易产生估计误差。此外,在介质的动态特性下,在相同的操作条件下收集大量的测量数据可能会变得具有挑战性。为此,我们的成像网络将深度学习分为三个主要步骤:首先,我们实现一个深度网络(DN)来预处理错误测量;其次,我们通过恢复与散射介质相关的反射率矢量的编码版本来实现基于dl的解码先验,以降低样本复杂性,然后通过解码DN将其映射到图像估计;最后,我们考虑了一个循环神经网络(RNN)形式的迭代算法的固定步骤实现,通过使用导致基于模型的成像算子的展开技术。所有三个dn的参数以监督的方式同时学习。我们用模拟的高保真合成孔径测量验证了我们方法的可行性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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