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Infrared and visible image fusion using fuzzy logic and population-based optimization

机译:基于模糊逻辑和总体优化的红外与可见光图像融合

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This paper presents a new wavelet-based algorithm for the fusion of spatially registered infrared and visible images. Wavelet-based image fusion is the most common fusion method, which fuses the information from the source images in the wavelet transform domain according to some fusion rules. We specifically propose new fusion rules for fusion of low and high frequency wavelet coefficients of the source images in the second step of the wavelet-based image fusion algorithm. First, the source images are decomposed using dual-tree discrete wavelet transform (DT-DWT). Then, a fuzzy-based approach is used to fuse high frequency wavelet coefficients of the IR and visible images. Particularly, fuzzy logic is used to integrate the outputs of three different fusion rules (weighted averaging, selection using pixel-based decision map (PDM), and selection using region-based decision map (RDM)), based on a dissimilarity measure of the source images. The objective is to utilize the advantages of previous pixel- and region-based methods in a single scheme. The PDM is obtained based on local activity measurement in the DT-DWT domain of the source images. A new segmentation-based algorithm is also proposed to generate the RDM using the PDM. In addition, a new optimization-based approach using population-based optimization is proposed for the low frequency fusion rule instead of simple averaging. After fusing low and high frequency wavelet coefficients of the source images, the final fused image is obtained using the inverse DT-DWT. This new method provides improved subjective and objectives results as compared to previous image fusion methods.
机译:本文提出了一种新的基于小波的空间配准红外和可见光图像融合算法。基于小波的图像融合是最常见的融合方法,它根据一些融合规则在小波变换域中融合来自源图像的信息。在基于小波的图像融合算法的第二步中,我们专门提出了新的融合规则,用于融合源图像的低频和高频小波系数。首先,使用双树离散小波变换(DT-DWT)分解源图像。然后,基于模糊的方法被用于融合红外和可见光图像的高频小波系数。尤其是,基于模糊逻辑的模糊度度量,基于模糊逻辑的不同度量,使用模糊逻辑对三个不同融合规则(加权平均,使用基于像素的决策图(PDM)进行选择和使用基于区域的决策图(RDM)进行选择)的输出进行集成。源图像。目的是在单个方案中利用先前基于像素和区域的方法的优点。 PDM是基于源图像的DT-DWT域中的局部活动度量获得的。还提出了一种基于分段的新算法,以使用PDM生成RDM。此外,针对低频融合规则,提出了一种基于总体优化的基于优化的新方法,而不是简单的平均法。在融合源图像的低频和高频小波系数之后,使用逆DT-DWT获得最终的融合图像。与以前的图像融合方法相比,该新方法提供了改进的主观和客观结果。

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