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REMOTE SENSING FOR LAND & RESOURCES    2011, Vol. 23 Issue (3) : 71-76     DOI: 10.6046/gtzyyg.2011.03.13
Technology Application |
The Application of Spatial U-static Method to the Extraction of Alteration Anomalies
HU Bo1,2, ZHU Gu-chang1,2, ZHANG Yuan-fei2, XIAO Ran3
1. Central South University, Changsha 410083, China;
2. China Non-ferrous Metals Resource Geological Survey, Beijing 100012, China;
3. Jiangxi Application Engineering Vocational College, Pingxiang 337000, China
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Abstract  

The authors tried to extract alteration anomalies in spectral characteristic space (scatter plot) in view of the limitation of the traditional methods. The scatter plot takes on an anisotropic feature in associated distribution of RS data’s grey scale. The distribution is usually combined by oval clusters. Parameters of oval clusters are acquired sequentially by applying U-Statistic method in the frequency of the scatter plot. Through mapping the points inside the oval into RS image and interpreting visually, the spatial distribution of alteration anomalies is obtained eventually. In this paper, this new method was described with the instance of Bayinshan area in Qinghai province. Other data acquired were also comparatively studied, and it is found that the anomalies of ferruginization and argillation are consistent well with each other. This new method has a better performance than PCA in the study area.

Keywords Uranium exploration      Remote sensing      Comprehensive research      Mineralization viewpoint and prospecting effect     
: 

TP 753

 
Issue Date: 07 September 2011
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LIU De-chang
YE Fa-wang
ZHAO Ying-jun
YANG Xu
YI Pi-yuan
DONG Xiu-zhen
Cite this article:   
LIU De-chang,YE Fa-wang,ZHAO Ying-jun, et al. The Application of Spatial U-static Method to the Extraction of Alteration Anomalies[J]. REMOTE SENSING FOR LAND & RESOURCES, 2011, 23(3): 71-76.
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https://www.gtzyyg.com/EN/10.6046/gtzyyg.2011.03.13     OR     https://www.gtzyyg.com/EN/Y2011/V23/I3/71


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