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遥感影像分类与地学知识发现的集成研究
引用本文:王雷,冯学智,都金康.遥感影像分类与地学知识发现的集成研究[J].地理研究,2001,20(5):637-643.
作者姓名:王雷  冯学智  都金康
作者单位:南京大学城市与资源学系,
基金项目:中-德合作项目,SILUP,
摘    要:遥感与地学之间存在着数据与知识上巨大的互补性。本文通过地面类型数据将遥感影像分类与地学知识发现结合起来:用遥感数据驱动发现地学知识,用地学知识解释、确认、检验遥感分类结果,并使用统计值和分布谱来定量化表达地学知识,形成一体化的遥感地学分类系统。

关 键 词:影像分类  地学知识发现  分类精度评价
文章编号:1000-0585(2001)05-0637-07
收稿时间:2001-04-24
修稿时间:2001年4月24日

On the integration between image classification and geographical knowledge discovery
WANG Lei,FENG Xue-zhi,DU Jin-kang.On the integration between image classification and geographical knowledge discovery[J].Geographical Research,2001,20(5):637-643.
Authors:WANG Lei  FENG Xue-zhi  DU Jin-kang
Institution:Department of Urban and Resources Science, Nanjing University, Nanjing 210093, China
Abstract:Great complementarity exists between remote sensing image data and geographical knowledge. This paper tries to unify the image classification and geographical knowledge discovery through ground classes data, i.e.,to discover geographical knowledge with remote sensing data drive, to confirm, explain and evaluate image classification result with geographical knowledge, and to represent geographical knowledge with statistic value and distribution atlas. All these come to be an incorporated Remote Sensing and Geographic Classification System. The steps of this method are as follows: firstly, to divide the image into relative big number(>20) of classes using the unsupervised classification; then overlay these unknown classes with the DEM data and get some statistic values and distribution atlas for each class; finally use these values and atlases to name,explain and evaluate each class of the classification result. Meanwhile the correlation between the ground object type and the topographical data is acquired and expressed as well. The example shows that this method makes the classification more efficient and reliable, and it is useful to express and discover the geographical knowledge. The conclusion is that, we can use other data to interpret the result of unsurpervised classification, name and check each class, and at the same time, acquire the geographical knowledge from the pattern in the image data.
Keywords:image classification  geographical knowledge discovery  precision evaluation
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