基于小波变换和曲线变换的图像融合性能评价

A. Abd-El-Kader, Hossam El-Din Moustafa, S. Rehan
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引用次数: 15

摘要

曲波变换是近年来发展起来的一种多尺度变换,它更适合于有曲线的对象。曲线变换在图像融合领域的应用日益广泛。图像融合是指将两个图像组合成具有最大信息量的单个图像,而不会产生给定图像中不存在的细节。本文实现了一种基于曲线变换的图像融合算法,对其进行了分析,并与基于小波的融合算法进行了比较。介绍了图像融合的两个著名应用;多聚焦图像融合与多曝光图像融合。根据三个性能指标对融合结果进行评估和比较;熵(H)、互信息(MI)和边缘信息量(QAB/F)。三个量化性能指标表明,基于曲线的图像融合算法提供了比小波算法稍好的融合图像。此外,融合后的图像比输入图像具有更好的人眼感知能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance measures for image fusion based on wavelet transform and curvelet transform
Curvelet transform is a recently-developed multi-scale transforms, which is more suitable for objects with curves. Applications of the curvelet transform have increased rapidly in the field of image fusion. Image fusion means the combining of two images into a single image that has the maximum information content without producing details that are non-existent in the given images. In the present work an algorithm for image fusion based on the curvelet transform was implemented, analyzed, and compared with a wavelet-based fusion algorithm. Two famous applications of image fusion are introduced; fusion of multi-focus images and fusion of multi-exposure images. Fusion results were evaluated and compared according to three measures of performance; the entropy (H), the mutual information (MI) and the amount of edge information (QAB/F). The three quantitative performance measures have shown that the curvelet based image fusion algorithm provides a slightly better fused image than the wavelet algorithm. In addition, the fused image has a better eye perception than the input ones.
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