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Perceived Sharpness-Based Multi-Focus Image Fusion with Uniform Discrete Curvelet Transform

机译:均匀离散Curvelet变换的基于感知的清晰度的多焦点图像融合

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A novel multi-focus image fusion algorithm is proposed, which is called UDCT-PS. This algorithm is developed based on the uniform discrete curvelet transform (UDCT) and the perceived sharpness (PS) measurement. Input images are first decomposed by UDCT which is a true tool of 2-D multi-scale transform. So as to the coefficients of different scales and directions are obtained. And then, an appropriate selection principle of the fused coefficients is built according to the characteristics of multi-focus images and decomposed coefficients. The structural features are contained in the coarsest scale coefficients which are merged to create a fusion principle based on the slope of the local magnitude spectrum (SLMS). Highpass directional subband coefficients represent the details of input images, which are merged by a fusion rule based on the local total variation (LTV). Compared with several state-of-the-art image fusion methods, experimental results demonstrate that the proposed algorithm generates encouraging performance.
机译:提出了一种新颖的多焦点图像融合算法,称为UDCT-PS。该算法是基于统一离散曲波变换(UDCT)和感知清晰度(PS)测量而开发的。输入图像首先由UDCT分解,UDCT是真正的2D多尺度变换工具。这样就得到了不同尺度和方向的系数。然后,根据多焦点图像的特征和分解后的系数,建立适当的融合系数选择原则。结构特征包含在最粗糙的比例系数中,这些系数被合并以基于局部幅度谱(SLMS)的斜率创建融合原理。高通方向子带系数代表输入图像的细节,这些细节通过基于局部总变化量(LTV)的融合规则进行合并。与几种最新的图像融合方法相比,实验结果表明,该算法产生了令人鼓舞的性能。

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