Knowledge Based Stacking of Hyperspectral Data for Land Cover Classification

Yangchi Chen, M. Crawford, Joydeep Ghosh
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引用次数: 15

Abstract

Hyperspectral data provide new capability for discriminating spectrally similar classes, but unfortunately such class signatures often overlap in multiple narrow bands. Thus, it is useful to incorporate reliable spatial information when possible. However, this can result in increased dimensionality of the feature vector, which is already large for hyperspectral data. Markov random field (MRF) approaches, such as iterated conditional modes (ICM), can provide evidence relative to the class of a neighbor through Gibbs' distribution, but suffer from computational requirements and curse of dimensionality issues when applied to hyperspectral data. In this paper, a new knowledge based stacking approach is presented to utilize spatial information within homogeneous regions and at class boundaries, while avoiding the curse of dimensionality. The approach learns the location of the class boundary and combines original bands with the extracted spectral information of a neighborhood to train a hierarchical support vector machine (HSVM) classifier. The new method is applied to hyperspectral data collected by the Hyperion sensor on the EO-1 satellite over the Okavango delta of Botswana. Classification accuracies are compared to those obtained by a pixel-wise HSVM classifier, majority filtering and ICM to demonstrate the advantage of the knowledge based stacking approach.
基于知识的土地覆盖分类高光谱数据叠加
高光谱数据提供了鉴别光谱相似类的新能力,但不幸的是,这些类的特征经常在多个窄带中重叠。因此,在可能的情况下纳入可靠的空间信息是有用的。然而,这可能会导致特征向量的维数增加,这对于高光谱数据来说已经很大了。马尔可夫随机场(MRF)方法,如迭代条件模式(ICM),可以通过Gibbs分布提供相对于邻居类的证据,但在应用于高光谱数据时,存在计算需求和维数问题。本文提出了一种新的基于知识的层叠方法,利用同质区域和类边界的空间信息,同时避免了维数的诅咒。该方法学习类边界的位置,并将原始波段与提取的邻域光谱信息相结合,训练层次支持向量机(HSVM)分类器。该方法应用于EO-1卫星上的Hyperion传感器在博茨瓦纳奥卡万戈三角洲上空采集的高光谱数据。将分类精度与逐像素HSVM分类器、多数滤波和ICM的分类精度进行了比较,以证明基于知识的叠加方法的优势。
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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