@inproceedings{fae72528cff5462aaf0f2e508ee28a20,
title = "Applying incremental EM to Bayesian classifiers in the learning of hyperspectral remote sensing data",
abstract = "In this paper, we apply the incremental EM method to Bayesian Network Classifiers to learn and interpret hyperspectral sensor data in robotic planetary missions. Hyperspectral image spectroscopy is an emerging technique for geological investigations from airborne or orbital sensors. Many spacecraft carry spectroscopic equipment as wavelengths outside the visible light in the electromagnetic spectrum give much greater information about an object. The algorithm used is an extension to the standard Expectation Maximisation (EM). The incremental method allows us to learn and interpret the data as they become available. Two Bayesian network classifiers were tested: the Na{\"i}ve Bayes, and the Tree-Augmented-Na{\"i}ve Bayes structures. Our preliminary experiments show that incremental learning with unlabelled data can improve the accuracy of the classifier.",
keywords = "Bayesian networks, Hyperspectral imaging, Incremental EM",
author = "\{Rosalind Wang\}, X. and Brown, \{Adrian J.\} and Ben Upcroft",
year = "2005",
doi = "10.1109/ICIF.2005.1591910",
language = "English",
isbn = "0780392868",
series = "2005 7th International Conference on Information Fusion, FUSION",
publisher = "IEEE Computer Society",
pages = "606--613",
booktitle = "2005 7th International Conference on Information Fusion, FUSION",
note = "2005 8th International Conference on Information Fusion, FUSION ; Conference date: 25-07-2005 Through 28-07-2005",
}