A Deep Learning Approach for SAR Tomographic Imaging of Forested Areas

01/20/2023
by   Zoé Berenger, et al.
0

Synthetic aperture radar tomographic imaging reconstructs the three-dimensional reflectivity of a scene from a set of coherent acquisitions performed in an interferometric configuration. In forest areas, a large number of elements backscatter the radar signal within each resolution cell. To reconstruct the vertical reflectivity profile, state-of-the-art techniques perform a regularized inversion implemented in the form of iterative minimization algorithms. We show that light-weight neural networks can be trained to perform the tomographic inversion with a single feed-forward pass, leading to fast reconstructions that could better scale to the amount of data provided by the future BIOMASS mission. We train our encoder-decoder network using simulated data and validate our technique on real L-band and P-band data.

READ FULL TEXT

page 4

page 5

research
10/01/2020

System Design and Analysis for Energy-Efficient Passive UAV Radar Imaging System using Illuminators of Opportunity

Unmanned ariel vehicle (UAV) can provide superior flexibility and cost-e...
research
11/30/2020

SAR Image Despeckling Based on Convolutional Denoising Autoencoder

In Synthetic Aperture Radar (SAR) imaging, despeckling is very important...
research
03/12/2021

Urban Surface Reconstruction in SAR Tomography by Graph-Cuts

SAR (Synthetic Aperture Radar) tomography reconstructs 3-D volumes from ...
research
07/21/2018

Fast Matrix Inversion and Determinant Computation for Polarimetric Synthetic Aperture Radar

This paper introduces a fast algorithm for simultaneous inversion and de...
research
01/01/2011

Bistatic SAR ATR

With the present revival of interest in bistatic radar systems, research...
research
12/12/2019

GPRInvNet: Deep Learning-Based Ground Penetrating Radar Data Inversion for Tunnel Lining

A DNN architecture called GPRInvNet is proposed to tackle the challenge ...

Please sign up or login with your details

Forgot password? Click here to reset