Optimal multi-focus contourlet-based image fusion algorithm selection

Adam Lutz, Michael Giansiracusa, Neal Messer, Soundararajan Ezekiel, E. Blasch, M. Alford
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引用次数: 5

Abstract

Multi-focus image fusion is becoming increasingly prevalent, as there is a strong initiative to maximize visual information in a single image by fusing the salient data from multiple images for visualization. This allows an analyst to make decisions based on a larger amount of information in a more efficient manner because multiple images need not be cross-referenced. The contourlet transform has proven to be an effective multi-resolution transform for both denoising and image fusion through its ability to pick up the directional and anisotropic properties while being designed to decompose the discrete two-dimensional domain. Many studies have been done to develop and validate algorithms for wavelet image fusion, but the contourlet has not been as thoroughly studied. When the contourlet coefficients for the wavelet coefficients are substituted in image fusion algorithms, it is contourlet image fusion. There are a multitude of methods for fusing these coefficients together and the results demonstrate that there is an opportunity for fusing coefficients together in the contourlet domain for multi-focus images. This paper compared the algorithms with a variety of no reference image fusion metrics including information theory based, image feature based and structural similarity based assessments to select the image fusion method.
基于contourlet的多焦点图像融合优化算法选择
多焦点图像融合正变得越来越普遍,因为人们强烈希望通过融合多幅图像的显著数据来实现可视化,从而最大限度地提高单幅图像的视觉信息。这允许分析人员以更有效的方式基于更大量的信息做出决策,因为不需要交叉引用多个图像。contourlet变换是一种有效的多分辨率变换,既能提取图像的方向性和各向异性,又能分解二维离散域,是一种有效的图像去噪和融合方法。在小波图像融合算法的开发和验证方面已经做了很多研究,但对轮廓波的研究还不够深入。在图像融合算法中,用轮廓波系数代替小波系数,即为轮廓波图像融合。有多种方法可以将这些系数融合在一起,结果表明,在多聚焦图像的contourlet域中,有机会将这些系数融合在一起。本文将这些算法与基于信息理论、基于图像特征和基于结构相似性评估的各种无参考图像融合指标进行比较,选择图像融合方法。
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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