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Sar And Optical Data Fusion Based On Anisotropic Diffusion With Pca And Classification Using Patch-Based Svm With Lbp

机译:基于PCA各向异性扩散的SAR和光学数据融合以及使用LBP的贴片SVM的分类和分类

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SAR (VV and VH polarization) and optical data are widely used in image fusion to use the complimentary information of each other and to obtain the better-quality image (in terms of spatial and spectral features) for the improved classification results. The optical data acquisition depends on whether conditions while SAR data can acquire the data in presence of clouds. This paper uses anisotropic diffusion with PCA for the fusion of SAR (Sentinel 1 (S1)) and Optical (Sentinel 2 (S2)) data for patch-based SVM Classification with LBP (LBP-PSVM). Fusion results with VV polarization performed better than VH polarization using considered fusion method. Classification results suggests that the LBP-PSVM classifier is more effective in comparison to SVM and PSVM classifiers for considered data.
机译:SAR(VV和VH偏振)和光学数据广泛用于图像融合以使用彼此的互补信息,并获得更好的图像(在空间和光谱特征方面),以改善分类结果。光学数据采集取决于是否在SAR数据可以在存在云中获取数据的条件。本文采用各向异性扩散与PCA进行SAR(Sentinel 1(S1))和光学(Sentinel 2(S2))数据的融合,用于使用LBP(LBP-PSVM)进行贴剂的SVM分类。使用考虑的熔融方法,使用VV极化进行VV偏振的融合结果优于VH极化。分类结果表明,与考虑数据的SVM和PSVM分类器相比,LBP-PSVM分类器更有效。

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