Extraction of remote sensing information for lake salinity level based on SVM: A case from Badain Jaran desert in Inner Mongolia
DIAO Shujuan1, LIU Chunling2, ZHANG Tao2, HE Peng2, GUO Zhaocheng2, TU Jienan2
1. National Geological Library of China, Beijing 100083, China;
2. China Aero Geophysical Survey and Remote Sensing Center for Land and Resources, Beijing 100083, China
According to the problems of remote sensing information extraction in lake salinity level of Badain Jaran desert, the authors put forward a method based on support vector machine (SVM). In this paper, the authors adopted Landsat8 OLI remote sensing image as the data source, completed the image preprocessing such as geometric correction, image registration and mosaicking. With the help of the RS and GIS technology, the authors successfully extracted the information of lake salinity levels of the Badain Jaran desert. The results show that the proposed method can effectively solve the problems of less samples and the information extraction of lake salinity levels when the spectral information is confused, and hence has the reference value and can be promoted to other similar situations.
刁淑娟, 刘春玲, 张涛, 贺鹏, 郭兆成, 涂杰楠. 基于SVM的湖泊咸度等级遥感信息提取方法——以内蒙古巴丹吉林沙漠为例[J]. 国土资源遥感, 2016, 28(4): 114-118.
DIAO Shujuan, LIU Chunling, ZHANG Tao, HE Peng, GUO Zhaocheng, TU Jienan. Extraction of remote sensing information for lake salinity level based on SVM: A case from Badain Jaran desert in Inner Mongolia. REMOTE SENSING FOR LAND & RESOURCES, 2016, 28(4): 114-118.
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