Tomographic SAR imaging via generative adversarial neural network with cascaded U‐Net architecture

Author:

Li Jie123ORCID,Wang Kun123,Li Zhiyuan123,Zhang Bingchen123,Wu Yirong13

Affiliation:

1. Aerospace Information Research Institute Chinese Academy of Sciences Beijing China

2. Key Laboratory of Technology in Geo‐Spatial Information Processing and Application System Chinese Academy of Sciences Beijing China

3. School of Electronic, Electrical and Communication Engineering University of Chinese Academy of Sciences Beijing China

Abstract

AbstractTomographic synthetic aperture radar is an advanced multi‐channel interferometric technique for retrieving 3‐D spatial information. It can be regarded as an inherently sparse reconstruction problem and can be solved using compressive sensing algorithms. However, the performances are limited by the number of acquisitions and suffer from computational burdens in practice. This paper proposes a novel method based on deep learning, which is carried out and optimized in an end‐to‐end manner by the generative adversarial neural networks. The proposed method applies the cascaded U‐Net architectures to achieve the reconstruction of full‐channel synthetic aperture radar images and the refinement of obtained tomographic results, respectively. The proposed network is trained using simulated data and validate the technique on simulated and real data. The tests show promising results with the limited number of acquisitions while reducing the computation time.

Funder

National Natural Science Foundation of China

Publisher

Institution of Engineering and Technology (IET)

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