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Fusion and classification of synthetic aparture radar and multispectral sattellite data

机译:合成孔径雷达和多光谱卫星数据的融合和分类

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In this study, synthetic aperture radar (SAR) and multispectral data are fused with different methods in order to observe the effect of fusion methods on the accuracy of different classification techniques. At the same time, different polarizations of SAR data are included in fusion process and results are examined. The fusion methods that are used in this study are Brovey Color Normalized, Hue Saturation Value (HSV), Gram — Schmidt (GS) Spectral Sharpening and Principal Components (PC) Spectral Sharpening. Fused images are classified using k-nearest neighbor, support vector machine and radial based function neural network. The study area is chosen on Menemen Plain, which contains agricultural lands, and it is located in İzmir. Multispectral RapidEye satellite image and TerraSAR-X radar data are used for the analysis. Achieved results were presented in the tables. The highest accuracy is achieved by K-NN classification of TerraSAR-X and VH fusion with GS method as 95.74%.
机译:在本研究中,合成孔径雷达(SAR)和多光谱数据与不同的方法融合,以观察融合方法对不同分类技术的准确性的影响。同时,SAR数据的不同偏振包括在融合过程中,检查结果。本研究中使用的融合方法是Brovey颜色标准化,色调饱和值(HSV),Gram - Schmidt(GS)光谱锐化和主组件(PC)光谱锐化。使用k-collect邻居,支持向量机和基于径向的功能神经网络分类融合图像。研究区是在门森平原上选择的,其中包含农业用地,它位于İzmir。 MultiSpectral Rapideye卫星图像和Terrasar-X雷达数据用于分析。达到的结果呈现在表中。通过GS方法K-NN分类,GS方法的K-NN分类为95.74%,实现了最高精度。

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