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Infrared and visible image fusion based on nonlinear enhancement and NSST decomposition

机译:基于非线性增强和NSST分解的红外和可见图像融合

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In multi-scale geometric analysis (MGA)-based fusion methods for infrared and visible images, adopting the same representation for the two types of images will result in the non-obvious thermal radiation target in the fused image, which can hardly be distinguished from the background. To solve the problem, a novel fusion algorithm based on nonlinear enhancement and non-subsampled shearlet transform (NSST) decomposition is proposed. Firstly, NSST is used to decompose the two source images into low- and high-frequency sub-bands. Then, the wavelet transform (WT) is used to decompose high-frequency sub-bands to obtain approximate sub-bands and directional detail sub-bands. The “average” fusion rule is performed for fusion for approximate sub-bands. And the “max-absolute” fusion rule is performed for fusion for directional detail sub-bands. The inverse WT is used to reconstruct the highfrequency sub-bands. To highlight the thermal radiation target, we construct a nonlinear transform function to determine the fusion weight of low-frequency subbands, and whose parameters can be further adjusted to meet different fusion requirements. Finally, the inverse NSST is used to reconstruct the fused image. The experimental results show that the proposed method can simultaneously enhance the thermal target in infrared images and preserve the texture details in visible images, and which is competitive with or even superior to the state-of-the-art fusion methods in terms of both visual and quantitative evaluations.
机译:在用于红外和可见图像的多尺度几何分析(MGA)的基于融合方法中,采用两种类型的图像的相同表示将导致融合图像中的非明显的热辐射目标,这几乎不会区分背景。为了解决该问题,提出了一种基于非线性增强和非分离的Shearlet变换(NSST)分解的新型融合算法。首先,NSST用于将两个源图像分解成低频和高频子带。然后,小波变换(WT)用于分解高频子频带以获得近似子带和方向细节子带。对近似子带进行融合来执行“平均”融合规则。并且对定向细节子带进行融合来执行“Max-绝对”融合规则。逆WT用于重建初始子带。为了突出显示热辐射目标,我们构造非线性变换功能以确定低频子带的熔合重量,并且可以进一步调整其参数以满足不同的融合要求。最后,逆NSST用于重建融合图像。实验结果表明,该方法可以同时增强红外图像中的热目标,并在可见图像中保持纹理细节,并且在视觉上的竞争性甚至优于最先进的融合方法和量化评估。

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