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Metaheuristic pansharpening based on symbiotic organisms search optimization

机译:基于共生生物搜索优化的元启发式泛锐化

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This study proposed a metaheuristic pansharpening (MP) method, which performs in a Synthetic Variable Ratio (SVR)-like manner. The proposed method introduced the Symbiotic Organisms Search (SOS) algorithm, an advanced nature-based optimization algorithm, to estimate a weight for each multispectral (MS) band to achieve the optimum intensity. The SVR pansharpening formula was used as the objective function and the Root Mean Square Error (RMSE) metric was used as the fitness function of the SOS algorithm to optimize the intensity. The spectral and spatial quality of the results of the MP method were qualitatively and quantitatively compared against those of 15 widely-used pansharpening methods in 5 test sites in Turkey with different land cover features. The experiments aimed to spatially enhance WorldView-2 MS images by using WorldView-2 panchromatic (PAN) bands and a UAV-derived PAN orthophoto. It was also aimed to sharpen IKONOS MS images by using a QuickBird pansharpened image and an IKONOS PAN band. The MATLAB software was used to implement the proposed method and to compute the spatial and spectral quality metrics. The spatial quality of each pansharpened image was evaluated at full-scale, whereas the spectral quality of each pansharpened image was evaluated at both full-scale and reduced-scale. A scoring strategy based on giving a performance score with respect to the spatial and spectral quality metrics was used to ensure a fair comparison among the pansharpening methods used. The results demonstrated that, out of 16 pansharpening methods, the MP method achieved the highest overall spectral and spatial quality scores of 15.5 and 15.5, respectively. The proposed method was found to perform successfully with both singlesensor and multisensor input images. It was also concluded that the proposed method is able to deal with high spatial resolution ratio between the input images.
机译:这项研究提出了一种元启发式全锐化(MP)方法,该方法以类似于合成可变比率(SVR)的方式执行。提出的方法引入了共生生物搜索(SOS)算法,这是一种先进的基于自然的优化算法,可以估算每个多光谱(MS)波段的权重,以达到最佳强度。 SVR泛锐化公式用作目标函数,均方根误差(RMSE)度量用作SOS算法的适应度函数以优化强度。定性和定量地比较了MP方法结果的光谱和空间质量,与土耳其5个具有不同土地覆盖特征的测试地点的15种广泛使用的全锐化方法的光谱和空间质量进行了比较。这些实验旨在通过使用WorldView-2全色(PAN)波段和UAV衍生的PAN正射照片在空间上增强WorldView-2 MS图像。它还旨在通过使用QuickBird锐化的图像和IKONOS PAN波段来锐化IKONOS MS图像。使用MATLAB软件来实现所提出的方法,并计算空间和光谱质量指标。每个全景图像的空间质量均以全尺寸进行评估,而每个全景图像的光谱质量均以全尺寸和缩小比例进行评估。基于给定性能分数的空间和频谱质量度量,使用了一种评分策略,以确保所使用的锐化方法之间的公平比较。结果表明,在16种全锐化方法中,MP方法分别获得了最高的总光谱和空间质量得分,分别为15.5和15.5。发现所提出的方法可以在单传感器和多传感器输入图像上成功执行。还得出结论,该方法能够处理输入图像之间的高空间分辨率。

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