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Non-linear methods in remotely sensed multispectral data classification
Authors:Hristo S Nikolov  Doyno I Petkov  Nina Jeliazkova  Stela Ruseva  Kiril Boyanov
Institution:1. Solar Terrestrial Influences Laboratory – BAS, Remote Sensing, Acad. G. Bonchev Bl.3, Sofia 1113, Bulgaria;2. Institute of Parallel processing – BAS, Acad. G. Bonchev Bl.25a, Sofia 1113, Bulgaria
Abstract:The aim of this research is to develop an effective approach being able to deal with the stochastic nature of remote sensing data. In order to achieve this objective it is necessary to structure the methodological knowledge in the area of data mining and reveal the most suitable methods for the prediction and decision support based on large amounts of multispectral data. The idea is to establish a framework by decomposing the task into functionality objectives and to allow the end-user to experiment with a set of classification methods and select the best methods for specific applications. As a first step, we compare our results from Bayesian classification based on non-parametric probability density estimates of the data to the results obtained from other classification methods. Tree scenarios are considered, making use of a small benchmark dataset, a larger dataset from Corine land cover project for Bulgaria and analyzing different features and feature selection methods. We show that the theoretically optimal Bayesian classification can also achieve optimal classification in practice and provides a realistic interpretation of the world where land cover classes intergrade gradually.
Keywords:Land cover  Multispectral data  Bayes classification  Spectral classes  Kernel density estimation
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