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基于多波段分析的无阈值自动光谱角制图分类法 被引量:10

Mapping Classification Based on the Analysis of Multi-band No-threshold Auto-spectral Angle
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摘要 对光谱角制图分类法进行改进,主要方法是在原影像的6个波段基础上,加入了K-L变换的前3个波段、K-T变换的3个波段(亮度、绿度和湿度)以及NDVI(归一化植被指数)信息将图像波段数增加至13个,增强了地物之间的光谱区分度(即类间方差);得到光谱角度图像后,提出一种无需阈值的地类确定方法,减少了人工参与,提高了判别精度和处理效率。 Land use/cover change has been the main factor of environmental change. Analyzing the LUCC of Yellow River Delta plays a great role in its sustainable development. With the aid of remote sensing technology and remote sensing images,this paper aims to build region classification map by discriminanting ground features' categories using SAM. The principle of SAM is to confirm each type of surface features' attribution by comparing the angle formed by the surface features vector and reference vector features in the spectrum space. The traditional SAM only used the angle parameter, which could attain higher classification accuracy only when the variance within the classes of pixels to be recognized was small and the between-class variance is large. In consideration of its shortage,the improved SAM was used,for this method the image bands were added to 13 based on the original 6 bands by K-L transformation and K-L transformation and NDVI, which enhanced the spectral differentiation between ground features, and got spectral curves of all kinds of ground features. Several bands had obvious difference in the curve graph,which had active effect on feature discrimination. And then it used a processing mode which did not set the threshold value under ERDAS platform;after the processing, it got a series of spectral angle images, then judged the similarity degree of each pixel with the reference classes. The pixel class should be vested in the class where the largest pixel value existed, the rest could be done in the same manner. In the last,the classification map of the study area was attained. This method reduced the manual involvement and improved the discrimination accuracy and treatment efficiency greatly.
出处 《地理与地理信息科学》 CSSCI CSCD 北大核心 2010年第2期38-41,F0003,共5页 Geography and Geo-Information Science
基金 山东省科技攻关项目(2008GG10009018) 山东省科技计划项目(J08LD55)
关键词 光谱角制图 分类法 光谱曲线 spectral angle mapping classification spectral curve
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参考文献13

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