The multi-focus image fusion method based on CNN and SR

Bingzhe Wei, Xiangchu Feng, Kun Wang, Bing-xia Gao
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引用次数: 1

Abstract

The multi-focus image fusion is a crucial embranchment of image processing, which can obtain better fused consequence from multiple source images. CNN(convolutional neural network)-based and SR(sparse representation)-based image fusion are emerging algorithms in the last decade, and have comprehensive used. So as to gain fused image with more precise and abundant information, this paper proposes a novel multi-focus image fusion method combining CNN and SR. The prevalent SR methods determine the sparse representation vectors after fusion according to ‘max-L1’ rule. But the weighted norm can more accurately reflect the information contained in the source images. Therefore, we choose fused image patches on the basis of the weighted L1-norm, and the weights are got by CNN. Experimental results demonstrate that the proposed method outperforms the existing state-of-the-art methods in terms of both visual perception and objective evaluation metrics.
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基于CNN和SR的多焦点图像融合方法
多焦点图像融合是图像处理的一个重要分支,它可以从多源图像中获得较好的融合结果。基于CNN(卷积神经网络)和SR(稀疏表示)的图像融合是近十年来新兴的算法,得到了广泛的应用。为了获得信息更精确、更丰富的融合图像,本文提出了一种结合CNN和SR的多焦点图像融合新方法。目前流行的SR方法根据“max-L1”规则确定融合后的稀疏表示向量。而加权范数能更准确地反映源图像所包含的信息。因此,我们在加权l1范数的基础上选择融合图像补丁,权重由CNN得到。实验结果表明,该方法在视觉感知和客观评价指标方面都优于现有的先进方法。
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