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纹理特征辅助遥感影像分类技术的探讨
引用本文:杨玉静,于彦伟,冯建辉.纹理特征辅助遥感影像分类技术的探讨[J].测绘与空间地理信息,2008,31(6).
作者姓名:杨玉静  于彦伟  冯建辉
作者单位:1. 河北省第一测绘院,河北,石家庄,050031
2. 昆明理工大学,国土资源工程学院,云南,昆明,650093
摘    要:随着卫星遥感影像分辨率的不断提高,人们希望从遥感图像中获得更多有用的数据和信息,所以遥感影像的分类变得尤为重要.但是基于光谱特征的影像分类精度过低,不能满足生产的需要,所以研究利用其他辅助手段来提高遥感影像的分类成为未来发展的一个重要方向.本文研究了利用灰度共生矩阵提取纹理特征的方法并对利用纹理特征影像辅助光谱特征分类的方法进行了研究.实验结果表明,纹理特征辅助光谱特征分类能够提高遥感影像分类的准确性和精度.

关 键 词:遥感  辅助分类  纹理特征  灰度共生矩阵

The Research in Assistant Classification of Remote Sensing Images by Texture Feature
YANG Yu-jing,YU Yan-wei,FENG Jian-hui.The Research in Assistant Classification of Remote Sensing Images by Texture Feature[J].Geomatics & Spatial Information Technology,2008,31(6).
Authors:YANG Yu-jing  YU Yan-wei  FENG Jian-hui
Institution:1.The First Institute of Surveying and Mapping of Hebei Province;Shijiazhuang 050031;China;2.Faculty of Land Resource Engineering of Kunming University of Science and Technology;Kunming 650093;China
Abstract:With the development of high resolution remote sensing satellite image,people hoped that obtains more useful data and the information from the remote sensing images.So the classification of remote sensing images becomes especially important.But the accuracy based on the spectral feature of the remote images classification is too low and could not meet the needs of production.So using other means to assistant and to improve the classification of remote sensing images become an important development direction...
Keywords:Remote Sensing  assistant classification  texture feature  Gray Level Co-occurrence Matrix  
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