Through-the-Wall Radar under Electromagnetic Complex Wall: A Deep Learning Approach
Abstract
This paper employed deep learning to do two-dimensional, multi-target locating in Through-the-Wall Radar under conditions where the wall is treated as a complex electromagnetic medium. We made five assumptions about the wall and two about the number of targets. There are two target modes available: single target and double targets. The wall scenarios include a homogeneous wall, a wall with an air gap, an inhomogeneous wall, an anisotropic wall, and an inhomogeneous-anisotropic wall. Target locating is accomplished through the use of a deep neural network technique. We constructed a dataset using the Python FDTD module and then modeled it using deep learning. Assuming the wall is a complex electromagnetic medium, we achieved 97.7% accuracy for single-target 2D locating and 94.1% accuracy for two-target locating. Additionally, we noticed a loss of 10% to 20% inaccuracy when noise was added at low SNRs, although this decrease dropped to less than 10% at high SNRs.
Keywords
Cite
@article{arxiv.2102.07990,
title = {Through-the-Wall Radar under Electromagnetic Complex Wall: A Deep Learning Approach},
author = {Fardin Ghorbani and Hossein Soleimani},
journal= {arXiv preprint arXiv:2102.07990},
year = {2022}
}