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Fusion of PolSAR and PolInSAR data for land cover classification

机译:融合PolSAR和PolInSAR数据进行土地覆盖分类

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摘要

The main research goal of this study is to investigate the complementarity and fusion of different frequencies (L- and P-band), polarimetric SAR (PolSAR) and polarimetric interferometric (PolInSAR) data for land cover classification. A large feature set was derived from each of these four modalities and a twolevel fusion method was developed: Logistic regression (LR) as ‘feature-level fusion’ and the neuralnetwork (NN) method for higher level fusion. For comparison, a support vector machine (SVM) was also applied. NN and SVM were applied on various combinations of the feature sets. The results show that for both NN and SVM, the overall accuracy for each of the fused sets is better than the accuracy for the separate feature sets. Moreover, that fused features from different SAR frequencies are complementary and adequate for land cover classification and that PolInSAR is complementary to PolSAR information and that both are essential for producing accurate land cover classification.
机译:这项研究的主要研究目标是研究不同频率(L和P波段),极化SAR(PolSAR)和极化干涉(PolInSAR)数据的互补性和融合,以进行土地覆盖分类。从这四个模态中的每一个派生了一个大型特征集,并开发了一种两级融合方法:作为“特征级融合”的逻辑回归(LR)和用于高级融合的神经网络(NN)方法。为了进行比较,还应用了支持向量机(SVM)。 NN和SVM应用于功能集的各种组合。结果表明,对于NN和SVM而言,每个融合集的总体精度都优于单独特征集的精度。此外,来自不同SAR频率的融合特征对于土地覆盖分类是互补和充分的,而PolInSAR是PolSAR信息的互补,并且两者对于产生准确的土地覆盖分类都是至关重要的。

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