利用支持向量机对MODIS时间序列和地理数据进行区域土地覆盖分类

Hongyan Cai, Shuwen Zhang
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引用次数: 2

摘要

研究了支持向量机分类器在区域土地覆盖制图中的性能。首先,利用Jeffreys-Matusita距离选取MODIS时间序列和DEM数据的8个输入特征;然后,对所有特征进行分析,利用支持向量机算法生成中国三江平原土地覆盖图。最后,我们评估了样本大小及其分布对分类精度的影响。训练与测试比例为8:2是改善土地覆盖分类的较好选择。样本分布对分类结果有影响,对总体精度的标准差为0.81,对Kappa系数的标准差为0.01。所得分类图的总体准确率为96.45,Kappa系数为95.8%。良好的性能表明支持向量机算法在区域土地覆盖制图中具有很大的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regional land cover classification from MODIS time-series and geographical data using support vetor machine
The study investigated the performance of support vector machine (SVM) classifier for regional land cover mapping. First, 8 input features derived from MODIS time series and DEM data were selected by Jeffreys-Matusita distance. Then, all the features were analyzed to generate land cover map of Sanjiang Plain in China, using SVM algorithm. Finally, we evaluated the impact of sample size and its distribution on classification accuracy. The train and test ratio of 8:2 was proved to be a better choice for improving land cover classification. The distribution of samples influenced classification results, with a standard deviation of 0.81 to overall accuracy and 0.01 to Kappa coefficient. The overall accuracy of resultant classification map was 96.45 with Kappa coefficient of 95.8%. The good performance indicated great potentials of SVM algorithm for regional land cover mapping.
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