Bidimentional emphirical mode decomposition based image fusion

Arshi Khan, P. Agrawal, Himanshu Sainthiya
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引用次数: 1

Abstract

The image fusion plays a crucial role in many fields such as remote sensing, medical and robotics applications. This paper is focused on image fusion of images of different focus depth. The aim is to study these concepts and provide simulations and evaluations on various implementations. When performing image fusion the images are decomposed by bi-dimensional Empirical mode decomposition (BEMD) to obtain high frequency coefficients which is used to determine which parts of the input images that makes it into the fused image. The same technique is tested on images of different modality. In this thesis, a novel bi-dimensional Empirical mode decomposition (BEMD) based image fusion scheme is proposed. The BEMD decomposes the source images into intrinsic mode functions (IMFs) and residual components. IMF components of the first signal in the decomposition of the source images are used to generate the fused images using appropriate fusion rule. Performance evaluation of fused images is done by computing fusion quality metrics and the fusion results are compared with other existing fusion schemes. It is seen that the performance of the proposed scheme is better as compared with the existing fusion schemes.
基于二维经验模态分解的图像融合
图像融合在遥感、医学和机器人等领域的应用中发挥着至关重要的作用。本文主要研究不同焦深图像的融合问题。目的是研究这些概念,并提供各种实现的模拟和评估。在进行图像融合时,通过二维经验模态分解(BEMD)对图像进行分解,得到高频系数,用于确定输入图像的哪些部分进入融合图像。同样的技术在不同模态的图像上进行了测试。本文提出了一种新的基于二维经验模态分解(BEMD)的图像融合方案。BEMD将源图像分解为内禀模态函数(IMFs)和残差分量。利用源图像分解中第一信号的IMF分量,利用适当的融合规则生成融合图像。通过计算融合质量指标对融合图像进行性能评价,并将融合结果与现有融合方案进行比较。实验结果表明,与现有的融合方案相比,该方案具有更好的性能。
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