Litcius/Paper detail

Clutter Suppression in GPR B-Scan Images Using Robust Autoencoder

Zhi-Kang Ni, Shengbo Ye, Cheng Shi, Cheng Li, Guangyou Fang

2020IEEE Geoscience and Remote Sensing Letters39 citationsDOI

Abstract

Ground-penetrating radar (GPR) is a well-known geophysical electromagnetic method used to detect the underground facilities such as landmines, pipelines, and cavities. In general, the clutter presented in GPR B-scan image obscures the underground objects, thus damaging the performance of the underground object detection algorithm. In this letter, we proposed a new clutter suppression method based on robust autoencoder (RAE). The proposed algorithm decomposes a GPR B-scan image into its low-rank and sparse components. The low-rank component catches the clutter, whereas the sparse component captures the underground object responses. The commonly used clutter removal algorithms, mean subtraction (MS), singular value decomposition (SVD), robust principal component analysis (RPCA), and morphological component analysis (MCA), are compared with the proposed algorithm on both the numerical simulated data and real GPR data. The visual and quantitative results demonstrate the effectiveness of the proposed RAE-based algorithm over the widely used state-of-the-art clutter removal algorithms.

Topics & Concepts

ClutterRobust principal component analysisGround-penetrating radarArtificial intelligenceComputer scienceAutoencoderPrincipal component analysisConstant false alarm rateSingular value decompositionPattern recognition (psychology)Computer visionRadarAlgorithmRemote sensingGeologyDeep learningTelecommunicationsGeophysical Methods and ApplicationsMicrowave Imaging and Scattering AnalysisUnderwater Acoustics Research