Solution of Multiple-Point Statistics to Extracting Information from Remotely Sensed Imagery

Ge Yong , Bai Hexiang , Cheng Qiuming
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引用次数: 7

Abstract

Two phenomena of similar objects with different spectra and different objects with similar spectrum often result in the difficulty of separation and identification of all types of geographical objects only using spectral information. Therefore, there is a need to incorporate spatial structural and spatial association properties of the surfaces of objects into image processing to improve the accuracy of classification of remotely sensed imagery. In the current article, a new method is proposed on the basis of the principle of multiple-point statistics for combining spectral information and spatial information for image classification. The method was validated by applying to a case study on road extraction based on Landsat TM taken over the Chinese Yellow River delta on August 8, 1999. The classification results have shown that this new method provides overall better results than the traditional methods such as maximum likelihood classifier (MLC).

多点统计方法在遥感影像信息提取中的应用
具有不同光谱的相似物体和具有相似光谱的不同物体的两种现象往往导致仅使用光谱信息难以分离和识别所有类型的地理物体。因此,需要将物体表面的空间结构和空间关联特性结合到图像处理中,以提高遥感图像的分类精度。本文在多点统计原理的基础上,提出了一种将光谱信息和空间信息相结合的图像分类新方法。该方法通过应用于1999年8月8日在中国黄河三角洲拍摄的基于Landsat TM的道路提取实例进行了验证。分类结果表明,这种新方法比传统的最大似然分类器(MLC)方法提供了更好的结果。
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