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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >A spatial-spectral kernel-based approach for the classification of remote-sensing images
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A spatial-spectral kernel-based approach for the classification of remote-sensing images

机译:基于空间光谱核的遥感图像分类方法

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摘要

Classification of remotely sensed images with very high spatial resolution is investigated. The proposed method deals with the joint use of the spatial and the spectral information provided by the remote-sensing images. A definition of an adaptive neighborhood system is considered. Based on morphological area filtering, the spatial information associated with each pixel is modeled as the set of connected pixels with an identical gray value (flat zone) to which the pixel belongs: The pixels neighborhood is characterized by the vector median value of the corresponding flat zone. The spectral information is the original pixels value, be it a scalar or a vector value. Using kernel methods, the spatial and spectral information are jointly used for the classification through a support vector machine formulation. Experiments on hyperspectral and panchromatic images are presented and show a significant increase in classification accuracies for peri-urban area: For instance, with the first data set, the overall accuracy is increased from 80% with a conventional support vectors machines classifier to 86% with the proposed approach. Comparisons with other contextual methods show that the method is competitive.
机译:研究了具有很高空间分辨率的遥感图像的分类。所提出的方法处理由遥感图像提供的空间和光谱信息的联合使用。考虑了自适应邻域系统的定义。基于形态学区域滤波,将与每个像素关联的空间信息建模为像素所属的具有相同灰度值(平坦区域)的一组连接像素:像素邻域由相应平坦区域的矢量中值表征区。光谱信息是原始像素值,可以是标量值或矢量值。使用核方法,通过支持向量机公式将空间和光谱信息联合用于分类。提出了针对高光谱和全色图像的实验,这些实验表明城郊区域的分类准确性显着提高:例如,使用第一个数据集,总体准确性从传统支持向量机分类器的80%提高到使用传统支持向量机分类器的86%建议的方法。与其他上下文方法的比较表明,该方法具有竞争力。

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