基于非线性判别分析和RVM的小土地覆盖斑块有效分类

F. Mianji, Ye Zhang, A. Babakhani
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引用次数: 1

摘要

休斯现象是高光谱图像监督分类中的一个严重问题,特别是对小块土地覆盖区。本文提出了一种将非线性判别分析与相关向量机(RVM)相结合的方法。它首先将超维数据转换为具有更好的类可分性的新空间。然后,一个多类RVM分类器处理转换后的数据,以便对类进行精确标记。结果表明,该方法应用于原始超维数据空间时,优于RVM和支持向量机(SVM)。实际上,它对于分类上下文中的关键信息检测是一个优势。
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Nonlinear discriminant analysis and RVM for efficient classification of small land-cover patches
Hughes phenomenon is a serious problem in supervised classification of hyperspectral images in particular for small land-cover patches. A solution for this problem through integrating the capabilities of a nonlinear discriminating analysis with relevance vector machine (RVM) is proposed in this paper. It first transforms the hyperdimensional data to a new space with a better class separability. Then, a multiclass RVM classifier processes the transformed data for precise labeling of the classes. The results show that the proposed approach outperforms both RVM as well as support vector machine (SVM), when they are applied to the original hyperdimensional data space. Indeed, it is an advantage for key information detection in the classification context.
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