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Dual-Weighted Kernel Extreme Learning Machine for Hyperspectral Imagery Classification

Xumin Yu, Yan Feng, Yanlong Gao, Yingbiao Jia, Shaohui Mei

2021Remote Sensing23 citationsDOIOpen Access PDF

Abstract

Due to its excellent performance in high-dimensional space, the kernel extreme learning machine has been widely used in pattern recognition and machine learning fields. In this paper, we propose a dual-weighted kernel extreme learning machine for hyperspectral imagery classification. First, diverse spatial features are extracted by guided filtering. Then, the spatial features and spectral features are composited by a weighted kernel summation form. Finally, the weighted extreme learning machine is employed for the hyperspectral imagery classification task. This dual-weighted framework guarantees that the subtle spatial features are extracted, while the importance of minority samples is emphasized. Experiments carried on three public data sets demonstrate that the proposed dual-weighted kernel extreme learning machine (DW-KELM) performs better than other kernel methods, in terms of accuracy of classification, and can achieve satisfactory results.

Topics & Concepts

Extreme learning machineArtificial intelligenceHyperspectral imagingComputer sciencePattern recognition (psychology)Kernel (algebra)Dual (grammatical number)Multiple kernel learningKernel methodMachine learningSupport vector machineMathematicsArtificial neural networkLiteratureArtCombinatoricsMachine Learning and ELMRemote-Sensing Image ClassificationFace and Expression Recognition
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