figshare
Browse
Unsupervised_Deep_Basis_Pursuit_Based_Resolution_Enhancement_for_Forward_Looking_MIMO_SAR_Imaging.pdf (3.38 MB)

Unsupervised deep basis pursuit based resolution enhancement for forward looking MIMO SAR imaging

Download (3.38 MB)
journal contribution
posted on 2024-03-05, 15:10 authored by Vijith Varma Kotte, Shahzad Gishkori, Mudassir Masood, Tareq Y Al-Naffouri

Nowadays, radar-based image reconstruction is becoming important in higher level automated driving, especially for all weather conditions. In this article, we present an unsupervised deep learning method for forward looking multiple-input multiple-output synthetic aperture radar (FL-MIMO SAR) to enhance the angular resolution.We present mathematical analysis for the composite antenna pattern generated by  FL-MIMO SAR as well as image reconstruction with deep learning for FL-MIMO SAR. We present a computationally efficient deep basis pursuit (DBP) method to solve for convolutional neural network (CNN) with unsupervised learning (i.e., without ground truth) and present modified backprojection algorithm to reconstruct SAR image with enhanced angular resolution. We present experimental results to verify our proposed methodology and compare the performance with compressed sensing-based backprojection algorithm on both simulation and real data. 

History

Refereed

  • Yes

Volume

59

Issue number

6

Page range

9080-9093

Publication title

IEEE Transactions on Aerospace and Electronic Systems

ISSN

0018-9251

Publisher

Institute of Electrical and Electronics Engineers (IEEE)

File version

  • Published version

Affiliated with

  • School of Engineering and The Built Environment Outputs