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首页> 外文期刊>ISPRS International Journal of Geo-Information >Classification of PolSAR Images by Stacked Random Forests
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Classification of PolSAR Images by Stacked Random Forests

机译:堆积随机森林对PolSAR图像的分类

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This paper proposes the use of Stacked Random Forests (SRF) for the classification of Polarimetric Synthetic Aperture Radar images. SRF apply several Random Forest instances in a sequence where each individual uses the class estimate of its predecessor as an additional feature. To this aim, the internal node tests are designed to work not only directly on the complex-valued image data, but also on spatially varying probability distributions and thus allow a seamless integration of RFs within the stacking framework. Experimental results show that the classification performance is consistently improved by the proposed approach, i.e., the achieved accuracy is increased by 4 % and 7 % for one fully- and one dual-polarimetric dataset. This increase only comes at the cost of a linear increased training and prediction time, which is rather limited as the method converges quickly.
机译:本文提出使用堆积随机森林(SRF)来分类极化合成孔径雷达图像。 SRF按顺序应用几个Random Forest实例,其中每个人都使用其前身的类估计作为附加功能。为此,内部节点测试不仅可以直接在复数值图像数据上工作,而且还可以在空间上变化的概率分布上工作,因此可以在堆叠框架内无缝集成RF。实验结果表明,通过所提出的方法,分类性能得到了持续改善,即对于​​一个全极化和一个双极化数据集,其实现的准确度分别提高了4%和7%。这种增加仅以线性增加的训练和预测时间为代价,由于该方法快速收敛,因此相当有限。

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