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Shearlet transform based technique for image fusion using median fusion rule

机译:使用中值融合规则的Shearlet变换基于图像融合的技术

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Image fusion is a challenging research area which is useful in various image processing applications. Image fusion integrates information from multiple source images into a single composite image for better visual quality and information content than any of its source images. In the present paper, we have proposed a new median based image fusion algorithm using nonsubsampled shearlet transform. Nonsubsampled shearlet transform is a powerful multiscale geometrical analysis (MGA) tool having rich mathematical structure, high directionality, anisotropy and shift-invariance features. Due to these features nonsubsampled shearlet transform can efficiently capture information of the source images in its coefficient sets. The coefficient sets of the source images are fused by using a new median based fusion rule. Median is an important statistical measurement, which is enriched with two outstanding properties that are edge preserving and robustness against noise. Hence, median based fusion rule increases the quality of fused image. The proposed fusion rule is simple and easy to understand. Strength of the proposed fusion method is verified visually as well as quantitatively by comparing it with different state of the art methods. We have performed experiments on three different types of images (medical, remote sensing and multifocus). Results of the experiments confirm that the proposed method outperform in comparison with other state-of-the-art fusion methods visually as well as quantitatively in terms of different quantitative performance measures such as entropy, standard deviation, edge strength, fusion factor, and running time.
机译:图像融合是一个具有挑战性的研究区域,可用于各种图像处理应用。图像融合将来自多个源图像的信息集成到单个合成图像中以获得比任何源图像更好的视觉质量和信息内容。在本文中,我们已经提出了一种使用非管制率剪切变换的新的基于中值的图像融合算法。 NonsubS采样Shearlet变换是具有丰富的数学结构,高方向性,各向异性和换档功能的强大的多尺度几何分析(MGA)工具。由于这些特征,非资格采样的Shearlet变换可以有效地捕获其系数集中的源图像的信息。通过使用新的基于中值的融合规则来融合源图像的系数组。中位数是一个重要的统计测量,它丰富了两个优异的属性,这些属性是抗噪声的边缘和稳健性。因此,基于中位的融合规则增加了融合图像的质量。建议的融合规则简单易懂。通过将其与现有技术的不同状态进行比较,在视觉上以及定量地验证所提出的融合方法的强度。我们在三种不同类型的图像(医疗,遥感和多孔)上进行了实验。实验结果证实,与其他最先进的融合方法相比,该方法越优于视觉上的不同的定量性能测量,如熵,标准偏差,边缘强度,融合因子和运行而定量时间。

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