基于支持向量机和形态轮廓的高光谱数据的光谱和空间分类

M. Fauvel, J. Benediktsson, J. Chanussot, J. R. Sveinsson
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引用次数: 1081

摘要

讨论了城市高分辨率高光谱数据的分类问题。提出了一种利用高光谱数据中的若干主成分构建形态轮廓的方法。这些配置文件可以在一个扩展的形态配置文件中一起使用。该方法的缺点是主要针对城市结构的分类设计,没有充分利用数据中的光谱信息。同样,仅基于光谱内容的逐像素分类也可以执行,但它缺乏图像中特征结构的信息。为了克服这些双重问题,本文提出了一种扩展方法。该方法基于形态学信息和原始高光谱数据的数据融合:将两个属性向量连接起来。在使用决策边界特征提取进行降维后,使用支持向量机分类器实现最终分类。该方法在城市ROSIS数据上进行了实验验证。与仅使用基于pc的形态学轮廓和传统光谱分类方法的结果相比,在准确性方面取得了显着改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Spectral and spatial classification of hyperspectral data using SVMs and morphological profiles
Classification of hyperspectral data with high spatial resolution from urban areas is discussed. An approach has been proposed which is based on using several principal components from the hyperspectral data and build morphological profiles. These profiles can be used all together in one extended morphological profile. A shortcoming of the approach is that it is primarily designed for classification of urban structures and it does not fully utilize the spectral information in the data. Similarly, a pixel-wise classification solely based on the spectral content can be performed, but it lacks information on the structure of the features in the image. An extension is proposed in this paper in order to overcome these dual problems. The proposed method is based on the data fusion of the morphological information and the original hyperspectral data: the two vectors of attributes are concatenated. After a reduction of the dimensionality using Decision Boundary Feature Extraction, the final classification is achieved using a Support Vector Machines classifier. The proposed approach is tested in experiments on ROSIS data from urban areas. Significant improvements are achieved in terms of accuracies when compared to results of approaches based on the use of morphological profiles based on PCs only and conventional spectral classification.
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