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Classification of Hyperspectral Remote Sensing Images by an Ensemble of Support Vector Machines Under Imbalanced Data

机译:不平衡数据下支持向量机集合对高光谱遥感影像的分类

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It is found very often that training data contains unequal number of representative samples for classes. Some of the classes might be represented by a larger number of samples while the rest with lower number of samples. Classification of remote sensing images with imbalanced class distribution could result in a significant drawback in the classification performance attainable by most standard classifier learning algorithms which assume a relatively balanced class distribution and equal misclassification costs. So it is worth exploring if ensemble method could give an improved performance under the condition of imbalanced training data. In the proposed work, Support Vector Machine (SVM) is used as base classifiers in the ensemble committee. An ensemble of SVMs will be constructed using popular Bagging method. Standard Hyperspectral data such as Salinas is used as test data. The proposed work will explore the efficiency of ensemble technique in improving classification accuracy, even in cases of robust classifier such as SVM.
机译:培训数据通常往往发现课程中包含不等数量的课程。其中一些类可能由更大量的样本表示,而其余的样本数量较少。具有不平衡类分布的遥感图像的分类可能导致大多数标准分类器学习算法可实现的分类性能的显着缺点,该算法采用相对平衡的类分布和等同的错误分类成本。因此,如果合奏方法可以在不平衡培训数据的条件下提供改进的性能,值得探索。在拟议的工作中,支持向量机(SVM)用作集合委员会的基本分类器。使用流行的装袋方法构建SVM的整体。标准高光谱数据如SalinaS用作测试数据。拟议的工作将探讨集合技术的效率,即使在诸如SVM的强大分类器的情况下,即使在稳健的分类器的情况下也是如此。

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