Adjustable model-based fusion method for multispectral and panchromatic images.

Liangpei Zhang, Huanfeng Shen, Wei Gong, Hongyan Zhang
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引用次数: 126

Abstract

In this paper, an adjustable model-based image fusion method for multispectral (MS) and panchromatic (PAN) images is developed. The relationships of the desired high spatial resolution (HR) MS images to the observed low-spatial-resolution MS images and HR PAN image are formulated with image observation models. The maximum a posteriori framework is employed to describe the inverse problem of image fusion. By choosing particular probability density functions, the fused HR MS images are solved using a gradient descent algorithm. In particular, two functions are defined to adaptively determine most regularization parameters using the partially fused results at each iteration, retaining one parameter to adjust the tradeoff between the enhancement of spatial information and the maintenance of spectral information. The proposed method has been tested using QuickBird and IKONOS images and compared to several known fusion methods using quantitative evaluation indices. The experimental results verify the efficacy of this method.

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基于可调模型的多光谱与全色图像融合方法。
提出了一种基于可调模型的多光谱(MS)和全色(PAN)图像融合方法。利用图像观测模型建立了期望的高空间分辨率MS图像与观测到的低空间分辨率MS图像和HR PAN图像之间的关系。采用最大后验框架描述图像融合的逆问题。通过选择特定的概率密度函数,采用梯度下降算法求解融合后的HR MS图像。特别地,定义了两个函数,利用每次迭代的部分融合结果自适应确定大多数正则化参数,保留一个参数来调整空间信息增强与光谱信息保持之间的权衡。利用QuickBird和IKONOS图像对该方法进行了测试,并使用定量评价指标与几种已知的融合方法进行了比较。实验结果验证了该方法的有效性。
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