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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Multi-focus image fusion combining focus-region-level partition and pulse-coupled neural network
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Multi-focus image fusion combining focus-region-level partition and pulse-coupled neural network

机译:组合聚焦区域级分区和脉冲耦合神经网络的多焦焦图像融合

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Multi-scale transforms (MST)-based methods are popular for multi-focus image fusion recently because of the superior performances, such as the fused image containing more details of edges and textures. However, most of MST-based methods are based on pixel operations, which require a large amount of data processing. Moreover, different fusion strategies cannot completely preserve the clear pixels within the focused area of the source image to obtain the fusion image. To solve these problems, this paper proposes a novel image fusion method based on focus-region-level partition and pulse-coupled neural network (PCNN) in nonsubsampled contourlet transform (NSCT) domain. A clarity evaluation function is constructed to measure which regions in the source image are focused. By removing the focused regions from the source images, the non-focus regions which contain the edge pixels of the focused regions are obtained. Next, the non-focus regions are decomposed into a series of subimages using NSCT, and subimages are fused using different strategies to obtain the fused non-focus regions. Eventually, the fused result is obtained by fusing the focused regions and the fused non-focus regions. Experimental results show that the proposed fusion scheme can retain more clear pixels of two source images and preserve more details of the non-focus regions, which is superior to conventional methods in visual inspection and objective evaluations.
机译:基于多尺度变换(MST)的方法是最近用于多焦图像融合的流行,因为卓越的性能,例如包含边缘和纹理的更多细节的融合图像。然而,大多数基于MST的方法基于像素操作,这需要大量的数据处理。此外,不同的融合策略不能完全保留源图像的聚焦区域内的清晰像素以获得融合图像。为了解决这些问题,本文提出了一种基于非焦点区域级分区和脉冲耦合神经网络(PCNN)的新颖的图像融合方法,在非资金上采样Contourlet变换(NSCT)域。构建清晰度评估功能以测量源图像中的哪个区域。通过从源图像中移除聚焦区域,获得包含聚焦区域的边缘像素的非焦点区域。接下来,使用NSCT将非焦点区域分解成一系列子程,并且使用不同的策略融合子图以获得融合的非焦点区域。最终,通过融合聚焦区域和融合的非对焦区域来获得融合结果。实验结果表明,所提出的融合方案可以保留两个源图像的更清晰的像素,并保留非对焦区域的更多细节,其优于视觉检查和客观评估中的常规方法。

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