Comparative statistical-based and color-related pan sharpening algorithms for ASTER and RADARSAT SAR satellite data

K. Rokni, M. Marghany, M. Hashim, Sharifeh Hazini
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引用次数: 3

Abstract

In computer vision, multi-sensor image fusion is the process of combining relevant information from two or more images of a scene into a single composite image. The resulting image will be more informative than any of input images. In this study, the efficiency of different pixel-based Pan sharpening techniques for merging RADARSAT-1 SAR and ASTER-L1B data is investigated and compared. In doing so, two statistical-based techniques including the Gram-Schmidt and Principal Component transforms, and two color-related techniques including the Brovey and HSV transforms are applied to merge the satellite images. One of the major problems associated with data fusion techniques is how to assess the quality of the fused images. In this regard, several indicators such as the Relative Mean Difference (RMD), Relative Variation Difference (RVD), Root Mean Square Error (RMSE) and Spectral Quality Indices (SQI) are used to evaluate the performance of the fused images. Then the fusion techniques are ranked according to the conclusion of each indicator. The achieved results from the relative mean difference analysis indicated advantage of the PC and GS than the Brovey and HSV transform techniques. The results based on relative variation difference and root mean square error indicated superiority of the PC transform while the results of spectral quality indices showed advantage of the GS transform technique. The output of HSV transform indicated the worst result and disadvantage of this technique in all indicators. In conclusion, it can be said that the PC is the best, the GS is better, the Brovey is bad and the HSV is the worst technique for multi-sensor data fusion. Finally, all indicators indicated advantage of the statistical-based fusion techniques than the color-based to fuse the ASTER-L1B and RADARSAT-1 SAR data.
ASTER和RADARSAT SAR卫星数据的基于统计和与颜色相关的盘锐化算法比较
在计算机视觉中,多传感器图像融合是将一个场景的两幅或多幅图像中的相关信息组合成单个合成图像的过程。生成的图像将比任何输入图像提供更多信息。本研究对RADARSAT-1 SAR和ASTER-L1B数据合并时不同的基于像素的Pan锐化技术的效率进行了研究和比较。在此过程中,两种基于统计的技术(包括Gram-Schmidt变换和主成分变换)以及两种与颜色相关的技术(包括Brovey变换和HSV变换)被用于合并卫星图像。数据融合技术的主要问题之一是如何评估融合后图像的质量。在这方面,使用相对平均差(RMD),相对变异差(RVD),均方根误差(RMSE)和光谱质量指数(SQI)等指标来评估融合图像的性能。然后根据各指标的结论对融合技术进行排序。相对均值差分析的结果表明,PC和GS比Brovey和HSV变换技术更有优势。基于相对变异差和均方根误差的结果表明了PC变换的优势,而光谱质量指标的结果表明了GS变换的优势。HSV变换的输出显示了该技术在所有指标中最差的结果和缺点。综上所述,对于多传感器数据融合,PC技术是最好的,GS技术更好,Brovey技术差,HSV技术最差。最后,所有指标都表明基于统计的融合技术比基于颜色的融合技术在融合ASTER-L1B和RADARSAT-1 SAR数据方面具有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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