A novel adaptive classification method for hyperspectral data using manifold regularization kernel machines

Wonkook Kim, M. Crawford
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引用次数: 12

Abstract

Remote sensing data sets are often difficult to compare directly due to environmental changes between acquisitions of two data sets. This paper proposes an adaptive framework for robust classification when no reference data are available in a new area or time period. Labels of test data are recovered during iterative applications of kernel machines by reflecting geometry of unlabeled samples via the manifold regularization term, so that the labeled/unlabeled samples form clusters on the data manifold. A one-against-one scheme is used for the extension of the binary classifier to multiclass problems, where semi-labels are used for iterative training of classifier. The proposed method is applied to a series of data pair of Hyperion and AVIRIS hyperspectral data and compared to other non-adaptive classification methods.
基于流形正则化核机的高光谱数据自适应分类方法
由于获取的两组数据之间的环境变化,往往难以直接比较遥感数据集。本文提出了一种新的区域或时间段内没有参考数据时的鲁棒分类自适应框架。在核机的迭代应用过程中,通过流形正则化项反映未标记样本的几何形状,从而恢复测试数据的标签,使标记/未标记样本在数据流形上形成聚类。将二值分类器扩展到多类问题,采用1对1方案,其中使用半标签对分类器进行迭代训练。将该方法应用于Hyperion和AVIRIS高光谱数据对,并与其他非自适应分类方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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