2017
DOI: 10.5194/isprs-archives-xlii-4-w4-83-2017
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Fusion of Non-Thermal and Thermal Satellite Images by Boosted SVM Classifiers for Cloud Detection

Abstract: ABSTRACT:The goal of ensemble learning methods like Bagging and Boosting is to improve the classification results of some weak classifiers gradually. Usually, Boosting algorithms show better results than Bagging. In this article, we have examined the possibility of fusion of non-thermal and thermal bands of Landsat 8 satellite images for cloud detection by using the boosting method. We used SVM as a base learner and the performance of two kinds of Boosting methods including AdaBoost.M1 and σ Boost was compared… Show more

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