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Kernel Nonparametric Weighted Feature Extraction for Hyperspectral Image Classification
161
Citations
35
References
2009
Year
Decision-boundary Feature ExtractionEngineeringMachine LearningBiometricsFeature ExtractionSupport Vector MachineImage AnalysisData SciencePattern RecognitionPattern AnalysisIndependent Component AnalysisMachine VisionGeographyComputer VisionHyperspectral ImagingData ClassificationRemote SensingClassifier SystemHyperspectral Image ClassificationKernel Method
In recent years, many studies show that kernel methods are computationally efficient, robust, and stable for pattern analysis. Many kernel-based classifiers were designed and applied to classify remote-sensed data, and some results show that kernel-based classifiers have satisfying performances. Many studies about hyperspectral image classification also show that nonparametric weighted feature extraction (NWFE) is a powerful tool for extracting hyperspectral image features. However, NWFE is still based on linear transformation. In this paper, the kernel method is applied to extend NWFE to kernel-based NWFE (KNWFE). The new KNWFE possesses the advantages of both linear and nonlinear transformation, and the experimental results show that KNWFE outperforms NWFE, decision-boundary feature extraction, independent component analysis, kernel-based principal component analysis, and generalized discriminant analysis.
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