Classification of Hyperspectral Remote Sensing Images Using High-level Features Based on Empirical Modes
Konstantin Konstantinovich Pukhkii,
Vadim Evgenjevich Turlapov
Abstract:The role of empirical mode decomposition (EMD) in the synthesis of high-level features for the classification of hyperspectral remote sensing images is studied. The studies were performed on the material of the well-known HSI "Moffett Field". A 1D-EMD algorithm adapted to the needs of HSI analysis was used. It has been established that: 1) class reference in the form of only a reference HSI-signature of a class sample cannot be a sufficient feature for classification on the full "Moffett Field" HSI; 2) the ext… Show more
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