Litcius/Paper detail

JL-GFDN: A Novel Gabor Filter-Based Deep Network Using Joint Spectral-Spatial Local Binary Pattern for Hyperspectral Image Classification

Tao Zhang, Puzhao Zhang, Weilin Zhong, Zhen Yang, Fan Yang

2020Remote Sensing19 citationsDOIOpen Access PDF

Abstract

The traditional local binary pattern (LBP, hereinafter we also call it a two-dimensional local binary pattern 2D-LBP) is unable to depict the spectral characteristics of a hyperspectral image (HSI). To cure this deficiency, this paper develops a joint spectral-spatial 2D-LBP feature (J2D-LBP) by averaging three different 2D-LBP features in a three-dimensional hyperspectral data cube. Subsequently, J2D-LBP is added into the Gabor filter-based deep network (GFDN), and then a novel classification method JL-GFDN is proposed. Different from the original GFDN framework, JL-GFDN further fuses the spectral and spatial features together for HSI classification. Three real data sets are adopted to evaluate the effectiveness of JL-GFDN, and the experimental results verify that (i) JL-GFDN has a better classification accuracy than the original GFDN; (ii) J2D-LBP is more effective in HSI classification in comparison with the traditional 2D-LBP.

Topics & Concepts

Local binary patternsArtificial intelligenceHyperspectral imagingPattern recognition (psychology)Computer scienceFeature (linguistics)Binary numberGabor filterFilter (signal processing)Computer visionImage (mathematics)MathematicsHistogramLinguisticsPhilosophyArithmeticRemote-Sensing Image ClassificationRemote Sensing and Land UseAdvanced Image Fusion Techniques