Deep Learning for Passive Synthetic Aperture Radar
Bariscan Yonel, Eric Mason, Birsen Yaz{\i}c{\i}

TL;DR
This paper presents a deep learning framework using recurrent auto-encoders for passive SAR image reconstruction, effectively handling unknown source parameters and outperforming traditional methods in quality and efficiency.
Contribution
It introduces a novel unsupervised deep learning approach with recurrent auto-encoders for passive SAR imaging, capable of learning forward models and hyperparameters from data.
Findings
Outperforms traditional sparse coding methods in image quality
Reduces computational complexity in image reconstruction
Handles unknown transmitter parameters effectively
Abstract
We introduce a deep learning (DL) framework for inverse problems in imaging, and demonstrate the advantages and applicability of this approach in passive synthetic aperture radar (SAR) image reconstruction. We interpret image recon- struction as a machine learning task and utilize deep networks as forward and inverse solvers for imaging. Specifically, we design a recurrent neural network (RNN) architecture as an inverse solver based on the iterations of proximal gradient descent optimization methods. We further adapt the RNN architecture to image reconstruction problems by transforming the network into a recurrent auto-encoder, thereby allowing for unsupervised training. Our DL based inverse solver is particularly suitable for a class of image formation problems in which the forward model is only partially known. The ability to learn forward models and hyper parameters combined with…
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