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Comparative Study of Three Feature Selection Methods for Regional Land Cover Classification using MODIS Data

机译:使用MODIS数据对区域土地覆盖分类三种特征选择方法的比较研究

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摘要

Selecting suitable features is very crucial for achieving successful classification of land cover types. This paper presents a comparative study of three typical feature selection methods for the task of regional land cover classification using MODIS data. Comparison results have shown that Branch and Bound is the best for land cover classification with MODIS data, while ReliefF and mRMR achieve nearly the same accuracies on the target application. The experimental results also show that it is necessary to conduct feature selection, which can reduce the computation cost largely, while the accuracy remains the same or even better.
机译:选择合适的特征对于实现成功的陆地覆盖类型分类非常重要。本文介绍了使用MODIS数据的区域土地覆盖分类任务三种典型特征选择方法的比较研究。比较结果表明,分支和绑定是具有MODIS数据的土地覆盖分类,而Creieff和MRMR在目标应用中实现了几乎相同的精度。实验结果还表明,需要进行特征选择,这可以在很大程度上降低计算成本,而精度保持不变甚至更好。

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