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改进拉普拉斯能量和的尖锐频率局部化Contourlet域多聚焦图像融合方法

机译:改进拉普拉斯能量和的尖锐频率局部化Contourlet域多聚焦图像融合方法

摘要

In order to suppress the pseudo-Gibbs phenomena around singularities of fused images and to reduce significant amounts of aliasing components located far away from desired supports when the original Contourlet is employed in the image fusion,a multifocus image fusion method in Sharp Frequency Localized Contourlet Transform(SFLCT) domain based on a sum-modified-Laplacian is proposed.The SFLCT,instead of the original Contourlet,is utilized as the multiscale transform to decompose the original multifocus images into subbands.Then,typical measurements for the multifocus image fusion in a spatial domain are introduced to the Contourlet domain and Sum-modified-Laplacian(SML),and the criterion to distinguish SFLCT coefficients from the clear parts or from blurry parts of images are employed in SFCLT subbands to select the SFLCT transform coefficients.Finally,the inverse SFLCT is used to reconstruct fused images.Moreover,a cycle spinning method is applied to compensate for the lack of translation invariance property and to suppress the pseudo-Gibbs phenomena of fused images.Using the proposed fusion method,experimental results demonstrate that the mutual information has improved by 5.87% and transferred edge information QAB/F has improved by 2.70% as compared with those of the cycle spinning wavelet method,and has improved by 1.77% and 1.29% as compared with those of the cycle spinning Contourlet method.Meanwhile,the proposed fusion method has advantages of good visual effect over the block-based spatial SML method and shift-invariant wavelet method.
机译:当原始Contourlet用于图像融合时,为了抑制融合图像奇点周围的伪Gibbs现象并减少大量远离所需支撑的混叠分量,采用Sharp Frequency Localized Contourlet Transform中的多焦点图像融合方法提出了一种基于和-修正Laplacian的(SFLCT)域。该SFLCT代替原始的Contourlet被用作多尺度变换,将原始的多焦点图像分解为子带。将空间域引入到Contourlet域和Sum-modified-Laplacian(SML)中,并在SFCLT子带中采用区分图像的清晰部分或模糊部分的SFLCT系数的准则,以选择SFLCT变换系数。逆SFLCT用于重建融合图像。此外,采用循环旋转方法来弥补平移的不足。实验结果表明,所提出的融合方法与改进的融合方法相比,互信息提高了5.87%,转移边缘信息QAB / F提高了2.70%。循环旋转小波方法,与循环旋转Contourlet方法相比,分别提高了1.77%和1.29%。同时,与基于块的空间SML方法相比,该融合方法具有视觉效果好,不变移的优点。小波方法。

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