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A robust approach for multi-sensor medical image fusion

机译:一种多传感器医学图像融合的鲁棒方法

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This paper demonstrates a robust method to the multi-sensor medical image fusion (MIF) obtained using the non-subsampled contourlet transform (NSCT), generalized Gaussian density (GGD), and Kullback-Leibler divergence (KLD). The popularly used average-maximum fusion rule is able to capture the local information only. However, it is unable to capture the global information. Hence, a global-to-local rule is suggested here. First of all, NSCT is used to separate the low and high-frequency sub-bands from the given source images. The heavy-tailed phenomenon of high-frequency sub-bands is modeled by GGD. The KLD for two source images is obtained by using GGD of them. This is used to describe the global information between two sub-bands. Finally, according to the asymmetry of the KLD, the fused global information is selected. The proposed method is able to overcome the different issues arise in the state-of-the-art methods such as reduction in contrast, loss of fine details, etc. The proposed algorithm is executed on the various datasets and its results show that the proposed algorithm provides better results than the existing MIF algorithms.
机译:本文演示了鲁棒性的方法,以使用非二次抽样轮廓波变换(NSCT),广义高斯密度(GGD)中获得的多传感器医学图像融合(MIF),和相对熵(KLD)。在普遍使用的平均最大的融合规则能够只捕获本地信息。但是,它是无法捕捉全球信息。因此,全球到本地的规则在这里建议。首先,NSCT用于将低和高频子带根据给定的源图像分开。高频子带的重尾现象是由GGD建模。该KLD为两个源图像是由使用它们的GGD获得。这是用来形容两个子带之间的全局信息。最后,根据KLD的不对称性,融合全球信息被选中。所提出的方法能够克服在国家的最先进的方法产生,例如降低对比度,精细细节损失等所提出的算法的各种数据集执行及其结果表明,所提出的不同问题算法提供了比现有的MIF算法更好的结果。

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