Fast Bi-dimensional Empirical Mode based Multisource Image Fusion Decomposition

Huijuan Wang, Jiang Yong, Xingmin Ma
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引用次数: 1

Abstract

Bi-dimensional empirical mode decomposition can decompose the source image into several Bi-dimensional Intrinsic Mode Functions. In the process of image decomposition, interpolation is needed and the upper and lower envelopes will be drawn. However, these interpolations and the drawings of upper and lower envelopes require a lot of computation time and manual screening. This paper proposes a simple but effective method that can maintain the characteristics of the original BEMD method, and the Hermite interpolation reconstruction method is used to replace the surface interpolation, and the variable neighborhood window method is used to replace the fixed neighborhood window method. We call it fast bi-dimensional empirical mode decomposition of the variable neighborhood window method based on research characteristics, and we finally complete the image fusion. The empirical analysis shows that this method can overcome the shortcomings that the source image features and details information of BIMF component decomposed from the original BEMD method are not rich enough, and reduce the calculation time, and the fusion quality is better.
基于快速二维经验模的多源图像融合分解
二维经验模态分解可以将源图像分解为多个二维固有模态函数。在图像分解过程中,需要进行插值,绘制上、下包络线。然而,这些插值和上下信封的绘制需要大量的计算时间和人工筛选。本文提出了一种既简单有效又能保持原BEMD方法特征的方法,采用Hermite插值重建方法代替曲面插值,采用变邻域窗口法代替固定邻域窗口法。我们将其称为基于研究特征的快速二维经验模态分解变邻域窗方法,并最终完成图像融合。实证分析表明,该方法克服了原BEMD方法分解的BIMF分量源图像特征和细节信息不够丰富的缺点,减少了计算时间,融合质量较好。
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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