1. 青海师范大学 地理科学学院,青海,西宁,810008
2. 青海师范大学 青海省自然地理与环境过程重点实验室,青海,西宁,810008
3. 青海省第二测绘院,青海,西宁,810008
纸质出版:2018
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成淑艳, 曹生奎, 曹广超, 等. 基于高分辨率遥感影像的青海湖沙柳河流域土地覆盖监督分类方法对比[J]. 水土保持通报, 2018,38(5):261-268.
CHENG Shuyan, CAO Shengkui, CAO Guangchao, et al. Comparisons of Supervised Classification Methods for Land Cover Based on High Spatial Resolution Remote Sensing Images in Shaliu River Basin of Qinghai Lake[J]. Bulletin of Soiland Water Conservation, 2018, 38(5): 261-268.
成淑艳, 曹生奎, 曹广超, 等. 基于高分辨率遥感影像的青海湖沙柳河流域土地覆盖监督分类方法对比[J]. 水土保持通报, 2018,38(5):261-268. DOI: 10.13961/j.cnki.stbctb.2018.05.042.
CHENG Shuyan, CAO Shengkui, CAO Guangchao, et al. Comparisons of Supervised Classification Methods for Land Cover Based on High Spatial Resolution Remote Sensing Images in Shaliu River Basin of Qinghai Lake[J]. Bulletin of Soiland Water Conservation, 2018, 38(5): 261-268. DOI: 10.13961/j.cnki.stbctb.2018.05.042.
[目的]研究高寒河源区土地覆盖的精准分类方法,为地物分类提供参考,分类结果可为青海湖流域土地资源与生态环境监管提供数据支撑。[方法]运用高分辨率遥感影像,通过6种监督分类器(平行六面体、最小距离、马氏距离、最大似然、神经网络和支持向量机)对青海湖沙柳河流域的土地覆盖进行分类,最后通过最佳提取方法统计得出青海湖沙柳河流域土地覆被概况。[结果]支持向量机、神经网络和最大似然的分类精度较高,其总体分类精度均大于96%,Kappa系数均大于0.95,平行六面体的分类精度最低,误差较大。综合各种分类精度及分类图像局部细节,支持向量机分类效果最佳。通过解译可知沙柳河流域土地覆被以草地为主,占流域总面积的71.09%,裸地和湿地分别占流域总面积的16.26%和10.24%,水体、农田和建筑用地面积较小,共占流域总面积的2.41%。[结论]运用高分辨率遥感影像,通过支持向量机分类器可实现对青海湖沙柳河流域土地覆被的良好分类。整个流域植被覆盖度高,生态环境良好。
[Objective] To study the precise classification method of land cover in the alpine river-source area in order to provide references for future land classification and provide data support for land resources and ecological environment supervision in the Qinghai Lake basin.[Methods] High spatial resolution remote sensing images were used to derive the land cover information through six different kinds of supervised classifiers (parallel hexahedron
minimum distance
Mahalanobis distance
maximum likelihood
neural network and support vector machine). And the land cover status of the Shaliu river basin in Qinghai Lake was statistically obtained through the best extraction method.[Results] The classification accuracy of support vector machine
neural network and maximum likelihood was high
the overall classification accuracy was greater than 96%
and Kappa coefficient was greater than 0.95. The classification accuracy of the parallel hexahedron was the lowest
and the error was largest. Support vector machine showed the best classification effect by combining all kinds of classification accuracy and classification image local details. Through interpretation
it showed that the land cover of the Shaliu river basin was dominated by grassland
and accounted for 71.09% of the total area of the basin. Bare land and wetlands accounted for 16.26% and 10.24% of the total area of the basin
respectively. Water
farmland
and construction land was small
accounted for 2.41% of the total basin area.[Conclusion] By using high spatial resolution remote sensing images
a good classification of land cover in Shaliu river basin of Qinghai Lake was achieved by support vector machine classifier. The whole basin has a high vegetation coverage and good ecological environment.
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