An efficient use of random forest technique for SAR data classification

Shruti Gupta, Dharmendra Singh, Keshava P. Singh, Sandeep Kumar
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引用次数: 8

Abstract

In the past SAR data has been proven as a great source for land cover characterization. For classification purpose many individual methods has been used, but single method are likely to undergo high variance or biasness depending on the base used for classification. Hence, in this paper random forest classification technique has been used for SAR data classification into different land cover classes (urban, water, vegetation and bare soil) which minimizes the diversity amongst the fragile classifiers and produce more accurate predictions. In this regard, an attempt has been made to fuse, four types of measures, namely texture features, SAR observable, statistical features and color features using random forest classifier for land cover classification. The results show that the resultant classified image has better accuracy in comparison to the individual method.
随机森林技术在SAR数据分类中的有效应用
在过去,SAR数据已被证明是土地覆盖特征的重要来源。为了分类目的,已经使用了许多单独的方法,但是根据用于分类的基础,单个方法可能会经历高方差或偏倚。因此,本文使用随机森林分类技术将SAR数据分类为不同的土地覆盖类别(城市、水域、植被和裸土),从而最大限度地减少脆弱分类器之间的多样性,并产生更准确的预测。为此,尝试利用随机森林分类器融合纹理特征、SAR观测特征、统计特征和颜色特征四种测度进行土地覆盖分类。结果表明,与单个方法相比,得到的分类图像具有更好的准确率。
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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