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Artificial neural network ensemble-based land-cover classifiers using MODIS data
Authors:Takashi Yamaguchi  Kenneth J. Mackin  Eiji Nunohiro  Jong Geol Park  Keitaro Hara  Kotaro Matsushita  Masanori Ohshiro  Kazuko Yamasaki
Affiliation:(1) Graduate School, Tokyo University of Information Sciences, Chiba, Japan;(2) Department of Information Systems, Tokyo University of Information Sciences, 1200-2 Yatoh-cho, Wakaba-ku, Chiba 265-8501, Japan;(3) Department of Environmental Information, Tokyo University of Information Sciences, Chiba, Japan
Abstract:Terra and Aqua, two satellites launched by the NASA-centered International Earth Observing System project, house MODIS (moderate resolution imaging spectroradiometer) sensors. Moderate-resolution remote sensing allows the quantifying of land-surface type and extent, which can be used to monitor changes in land cover and land use for extended periods of time. In this article, we propose land-surface classification by applying an ensemble technique based on fault masking among individual classifiers in N-version programming. An N-version programming ensemble of artificial neural networks is created, in which the majority vote result is used to predict land-surface cover from MODIS data. It is shown by experiment that an N-version programming ensemble of neural networks greatly improves the classification error rate of land-cover type.
Keywords:MODIS  Neural network  Land-cover classification
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