Publication | Closed Access
Band Selection Based on Feature Weighting for Classification of Hyperspectral Data
168
Citations
12
References
2005
Year
Data ClassificationMatrix Coefficients AnalysisEngineeringHyperspectral DataData ScienceData MiningPattern RecognitionBand SelectionFeature WeightingNew FeatureSpectral ImagingFeature SelectionRemote SensingFeature ExtractionImaging SpectroscopyBiostatisticsEarth ScienceHyperspectral Imaging
A new feature weighting method for band selection is presented, which is based on the pairwise separability criterion and matrix coefficients analysis. Through decorrelation of each class by principal component transformation, the criterion value of any band subset is the summations of the values of individual bands of it for the transformed feature space, and thus the computation amounts of calculating criteria of each band combinations are reduced. Following it, the corresponding matrix coefficients analysis is done to assign weights to original bands. As feature weighting considers little about the spectral correlation, the redundant bands are removed by choosing those with lower correlation coefficients than a preset threshold. Hyperspectral data classification experiments show the effectiveness of the new band selection method.
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