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Multisource Data Classification Using A Hybrid Semi-supervised Learning Scheme...

by Ranga R Vatsavai, Budhendra L Bhaduri, Shashi Shekhar, Thomas Burk
Publication Type
Conference Paper
Book Title
IEEE International Geoscience and Remote Sensing Symposium, 2008.
Publication Date
Page Numbers
1016 to 1019
Volume
N/A
Conference Name
IEEE International Geoscience & Remote Sensing Symposium
Conference Location
Boston, Massachusetts, United States of America
Conference Sponsor
IEEE, NASA
Conference Date
-

In many practical situations thematic classes can not be discriminated by spectral measurements alone. Often one needs additional features such as population density, road density, wetlands, elevation, soil types, etc. which are discrete attributes. On the other hand remote sensing image features are continuous attributes. Finding a suitable statistical model and estimation of parameters is a challenging task in multisource (e.g., discrete and continuous attributes) data classification. In this paper we present a semi-supervised learning method by assuming that the samples were generated by a mixture model, where each component could be either a continuous or discrete distribution. Overall classification accuracy of the proposed method is improved by 12% in our initial experiments.