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2017 | OriginalPaper | Chapter

A Hybrid Approach for Hyper Spectral Image Segmentation Using SMLR and PSO Optimization

Authors : Rashmi P. Karchi, B. K. Nagesh

Published in: Recent Trends in Image Processing and Pattern Recognition

Publisher: Springer Singapore

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Abstract

A hybrid approach for hyperspectral image segmentation is presented in this paper. The contribution of the proposed work is in two folds. First, learning of the class posterior probability distributions with Quadratic Programming or joint probability distribution by employing sparse multinomial logistic regression (SMLR) model. Secondly, estimation of the dependencies using spatial information and edge information by minimum spanning forest rooted on markers by acquiring the information from the first step to segment the hyper spectral image using a Markov Random field segments. The particle swarm optimization (PSO) is performed based on the SMLR posterior probabilities to reduce the large number of training data set. The performance of the proposed approach is illustrated in a number of experimental comparisons with recently introduced hyperspectral image analysis methods using both simulated and real hyper spectral data sets of Mars.

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Metadata
Title
A Hybrid Approach for Hyper Spectral Image Segmentation Using SMLR and PSO Optimization
Authors
Rashmi P. Karchi
B. K. Nagesh
Copyright Year
2017
Publisher
Springer Singapore
DOI
https://doi.org/10.1007/978-981-10-4859-3_24

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