Litcius/Paper detail

Subspace Projection Attention Network for GPR Heterogeneous Clutter Removal

Yanjie Cao, Xiaopeng Yang, Conglong Guo, Dong Li, Peng Yin, Tian Lan

2024IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing12 citationsDOIOpen Access PDF

Abstract

Clutter removal in ground-penetrating radar (GPR) based on deep learning has been studied in recent years. However, existing methods are primarily designed for homogeneous background conditions and utilize only local spatial information via the convolution operation. In order to solve these issues, a subspace projection attention network is proposed for GPR heterogeneous clutter removal in this paper. Firstly, a heterogeneous concrete dataset based on a numerical model with randomly placed aggregates is constructed, which incorporates the complex electromagnetic propagation process accurately to improve the effectiveness for heterogeneous clutter removal. In addition, the Clutter Basis learning neural Network (CBNet) is designed by integrating the subspace projection attention (SPA) module into the skip connection paths of U-Net architecture. By learning the subspace basis vectors adaptively, the SPA exploits both local and global spatial information to extract target features precisely. At the same time, the feature maps are projected to the target subspace to remove heterogeneous clutter features. Finally, the performance and effectiveness of proposed method is validated by simulations and experiments.

Topics & Concepts

ClutterSubspace topologyComputer scienceGround-penetrating radarArtificial intelligenceProjection (relational algebra)Pattern recognition (psychology)Artificial neural networkBasis (linear algebra)RadarFeature (linguistics)Process (computing)Computer visionAlgorithmMathematicsTelecommunicationsOperating systemPhilosophyLinguisticsGeometryGeophysical Methods and ApplicationsMicrowave Imaging and Scattering AnalysisUnderwater Acoustics Research