Extracting Information on Wetlands in Northeast China Based on Time Series FY3/MERSI Data

R. Feng, Jin-wen Wu, Wenying Yu, R. Ji, Yu-shu Zhang
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Abstract

Using Fengyun Medium Resolution Spectral Imager (FY3/MERSI) data from 2011 to 2018, this paper analyzed the characteristics of original spectra and the normalized difference vegetation index (NDVI) of lakes, reservoirs, rivers, paddy fields and swamps in Northeast China, A large-scale wetland extraction model was built using the decision tree classification method, and accuracy was verified in typical sites using China High-resolution Earth Observation System (CHEOS-1) data. The results showed that there were differences in the spectral curves and NDVI of different wetland types, especially the swamps, paddy fields and other landforms that showed a growth cycle with more significant differences in spectral curves and index curves than those of lakes, reservoirs and rivers. The total area of wetlands in Northeast China was 79,123.4 km2, including 5262.3 k m2 of lake and reservoir wetlands, 6514.7 km2 of river wetlands, 15284.7 k m2 of swamp wetlands and 52061.7 km2 of paddy fields. The accuracy verification showed that the area accuracy of wetlands was over 91.8%, the overall classification accuracy of wetlands was over 84.8% and the Kappa coefficient was over 0.6446.
基于FY3/MERSI时间序列的东北湿地信息提取
利用2011 - 2018年气象中分辨率光谱成像仪(FY3/MERSI)数据,分析了东北地区湖泊、水库、河流、水田和沼泽的原始光谱特征和归一化植被指数(NDVI)特征,采用决策树分类方法建立了大尺度湿地提取模型,并利用中国高分辨率对地观测系统(CHEOS-1)典型站点数据进行了精度验证。结果表明:不同湿地类型的光谱曲线和NDVI存在差异,特别是沼泽、水田等地表呈现生长周期,光谱曲线和指数曲线差异较湖泊、水库和河流更为显著。东北地区湿地总面积为79123.4 km2,其中湖泊和水库湿地5262.3 km2,河流湿地6514.7 km2,沼泽湿地15284.7 km2,水田52061.7 km2。精度验证表明,湿地的面积精度在91.8%以上,湿地总体分类精度在84.8%以上,Kappa系数在0.6446以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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