FOREST RESOURCES WANAGEMENT ›› 2015›› Issue (4): 69-72.doi: 10.13466/j.cnki.lyzygl.2015.04.012
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TENG Quanxiao, XU Tianshu
Online:
Published:
Abstract: Based on the data of ALOS image of Yiliang County,Yunnan Province,this paper discusses the use of the maximum likelihood method,support vector machine method and object-oriented support vector machine(SVM).The results show that maximum like-lihood classification accuracy is 79.33%,SVM classification accuracy 82.25%,oriented object based support vector machine classification accuracy 86.13%,and oriented-object based support vector machine classification method has better classification results.The results can provide a reference for the study of high-resolution remote sensing image classification。
Key words: ALOS, maximum likelihood method, SVM, object-oriented
CLC Number:
S771.8
TENG Quanxiao, XU Tianshu. ALOS Remote Sensing Classification of Vegetation Based on Different Classification Methods[J]. FOREST RESOURCES WANAGEMENT, 2015, (4): 69-72.
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URL: https://www.lyzygl.com.cn/EN/10.13466/j.cnki.lyzygl.2015.04.012
https://www.lyzygl.com.cn/EN/Y2015/V0/I4/69