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Multiple Classifier Systems for Hyperspectral Remote Sensing Data Classification
Authors:Iman Khosravi  Majid Mohammad-Beigi
Institution:1. Department of Surveying Engineering, Faculty of Engineering, University of Isfahan, Isfahan, I.R., Iran
2. Department of Biomedical Engineering, Faculty of Engineering, University of Isfahan, Isfahan, I.R., Iran
Abstract:One of the most widely used outputs of remote sensing technology is Hyperspectral image. This large amount of information can increase classification accuracy. But at the same time, conventional classification techniques are facing the problem of statistical estimation in high-dimensional space. Recently in remote sensing, support vector machines (SVMs) have shown very suitable performance in classifying high dimensionality problem. Another strategy that has recently been used in remote sensing is multiple classifier system (MCS). It can also improve classification accuracy by combining different classifier methods or by a diversity of the same classifier. This paper aims to classify a Hyperspectral data using the most common methods of multiple classifier systems i.e. adaboost and bagging and a MCS based on SVM. The data used in the paper is an AVIRIS data with 224 spectral bands. The final results show the high capability of SVMs and MCSs in classifying high dimensionality data.
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