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A Kernel-Learning-Based Fusion Scheme for Multi-Modal Medical Image Fusion in Shift-Invariant Shearlet Transform Domain

机译:换档不变剪切变换域中多模态医学图像融合的基于内核学习的融合方案

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摘要

By combing the shift-invariant shearlet transform (SSIT) and the kernel-learning based fusion rule, a fusion algorithm to improve the performance of the traditional multi-scale decomposition (MSD) based fusion methods is proposed. The SSIT is firstly employed to provide better sparse representations for the features; then, the kernel principle components analysis and a support vector machine with the generic multiple kernel learning scheme is constructed to produce the composite SIST coefficients; The final fused results are obtained via the inversion of the SIST. According to the visual comparison on the experimental results, the pseudo-Gibbs phenomenon can be effectively suppressed. Furthermore, the best value of five selected quantitative metrics, whose higher value indicates better fusion results, can be obtained by the proposed method. All the experimental facts demonstrate that the proposed fusion method outperforms the traditional MSD-based fusion methods, such as the wavelet-based, contourlet-based, both visually and quantitatively.
机译:通过梳理换档不变的Shearlet变换(SSIT)和基于内核学习的融合规则,提出了一种提高了基于多尺度分解(MSD)的融合方法的性能的融合算法。首先用于SSIT为特征提供更好的稀疏表示;然后,构建具有通用多核学习方案的内核原理分量分析和支持向量机以产生复合SIST系数;最终融合结果是通过SIST的反演获得的。根据实验结果的视觉比较,可以有效地抑制伪GIBB现象。此外,五种选定的定量度量的最佳值,其较高值表示更好的融合结果,可以通过所提出的方法获得。所有实验事实都表明,所提出的融合方法优于视觉和定量的基于传统的基于MSD的融合方法,例如基于小波的熔接方法,例如基于小波的轮廓。

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