Multi-scale image fusion scheme based on non-sub sampled contourlet transform and four neighborhood Shannon entropy scheme

Ankesh Raj, Jitesh Pradhan, Arup Kumar Pal, H. Banka
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引用次数: 3

Abstract

Optical lenses have limited depth-of-focus, which makes it impossible to capture all significant objects in focus within single picture. Multi-focus image fusion techniques can be adopted to solve the above issue because this technique precisely selects every focused point from all parent images to create final fused image. So, the final fused image contains significantly more information regarding every salient objects. In this paper, we have proposed a novel image fusion technique for fusion of multi-focused images using non-sub sampled contourlet transform. Here, we have adopted contourlet transform due to its high edge discrimination property which enables us to capture all salient object edges from different parent images. In this approach first we have generated noise free gray scale parent images using non-linear anisotropic diffusion technique. Further, in all noise free images we have employed contourlet transform to discover all salient object edges. Later, we have used 4 neighborhood entropy calculation technique based winner-take-all approach to generate final fused image. We have also used different multi-focused image sets for experimental analysis. The outcomes of all the image fusion experiments show better performance as compared to the current-sate-of-arts.
基于非次采样contourlet变换和四邻域Shannon熵的多尺度图像融合方案
光学镜头的对焦深度有限,这使得不可能在一张照片中捕捉到所有重要的物体。多焦点图像融合技术可以解决上述问题,因为该技术可以精确地从所有父图像中选择每个焦点来创建最终的融合图像。因此,最终的融合图像包含了更多关于每个显著目标的信息。本文提出了一种基于非采样contourlet变换的多聚焦图像融合技术。这里我们采用contourlet变换,因为contourlet变换具有很高的边缘辨别能力,可以从不同的父图像中捕捉到所有显著的物体边缘。在这种方法中,我们首先使用非线性各向异性扩散技术生成无噪声的灰度母图像。此外,在所有无噪声图像中,我们使用contourlet变换来发现所有显著的目标边缘。随后,我们采用基于4邻域熵计算技术的赢者通吃方法生成最终的融合图像。我们还使用了不同的多聚焦图像集进行实验分析。所有图像融合实验的结果与目前的技术水平相比都显示出更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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