6533b7dafe1ef96bd126e089

RESEARCH PRODUCT

Hyperspectral Image Classification with Kernels

Gustavo Camps-vallsLuis Gómez-chovaMattia MarconciniLorenzo Bruzzone

subject

Kernel methodSpectral signaturebusiness.industryComputer scienceHyperspectral image classificationPattern recognitionSpatial variabilityArtificial intelligencebusiness

description

The information contained in hyperspectral images allows the characterization, identification, and classification of land covers with improved accuracy and robustness. However, several critical problems should be considered in the classification of hyperspectral images, among which are (a) the high number of spectral channels, (b) the spatial variability of the spectral signature, (c) the high cost of true sample labeling, and (d) the quality of data. Recently, kernel methods have offered excellent results in this context. This chapter reviews the state-of-the-art hyperspectral image classifiers, presents two recently proposed kernel-based approaches, and systematically discusses the specific needs and demands of this field.

https://doi.org/10.4018/978-1-59904-042-4.ch016