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Performance Analyzing of High Resolution Pan-Sharpening Techniques: Increasing Image Quality For Classification Using Supervised Kernel Support Vector Machine

机译:高分辨率平移技术的性能分析:使用监督核支持向量机提高图像质量以进行分类

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摘要

Pan-sharpening is also known as image fusion, resolution merge, image integration, and multi sensor data fusion has been widely applied to imaging sensors. The purpose of pan-sharpening is to fuse a low spatial resolution multispectral image with a higher resolution panchromatic image to produces an image with higher spectral and spatial resolution, hi this paper, we investigated these existing pan-sharpening methods based on visual and spectral analysis. And to achieve assess the accurate classification process, we proposed a support vector machine (SVM) based on radial basis function (RBF) kernel. In the Experimental results, a comparative performance analysis of techniques by various methods show that Gram-Schmidt followed by PCA perform best among all the techniques. Besides that, higher overall accuracy of Gram-Smidth (GS) fused image increase 0.90 percent. And also, the high producer's and user's accuracy average of Gram-Smidth (GS) fused for each of the classes and methods used was always reported greater than 91.8% and 91.11%, respectively, indicating the overall success of the performed classification. And the followed by PCA was 90.84% and 89.99.
机译:泛锐化也称为图像融合,分辨率合并,图像集成,并且多传感器数据融合已广泛应用于成像传感器。平移锐化的目的是将低空间分辨率的多光谱图像与高分辨率的全色图像融合,以产生具有较高光谱和空间分辨率的图像。在本文中,我们研究了基于视觉和光谱分析的现有平移锐化方法。为了评估准确的分类过程,我们提出了一种基于径向基函数(RBF)核的支持向量机(SVM)。在实验结果中,通过各种方法对技术进行的比较性能分析表明,Gram-Schmidt和PCA在所有技术中表现最佳。除此之外,更高的Gram-Smidth(GS)融合图像整体精度提高了0.90%。而且,对于所使用的每个类别和方法,Gram-Smidth(GS)融合的高生产者和用户准确度平均值始终分别报告为分别大于91.8%和91.11%,这表明所执行分类的总体成功之处。紧随其后的是PCA,分别为90.84%和89.99。

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