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Multi-focus image fusion algorithm using NSCT and MPCNN

机译:使用NSCT和MPCNN的多聚焦图像融合算法

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Based on nonsubsampled contourlet transform (NSCT) and modified pulse coupled neural network (MPCNN), the paper proposes an effective method of image fusion. Firstly, the paper decomposes the source image into the low-frequency components and high-frequency components using NSCT, and then processes the low-frequency components by regional statistical fusion rules. For high-frequency components, the paper calculates the spatial frequency (SF), which is input into MPCNN model to get relevant coefficients according to the fire-mapping image of MPCNN. At last, the paper restructures the final image by inverse transformation of low-frequency and high-frequency components. Compared with the wavelet transformation (WT) and the traditional NSCT algorithm, experimental results indicate that the method proposed in this paper achieves an improvement both in human visual perception and objective evaluation. It indicates that the method is effective, practical and good performance.
机译:基于非管道采样的轮廓变换(NSCT)和修改脉冲耦合神经网络(MPCNN),该论文提出了一种有效的图像融合方法。首先,纸张使用NSCT将源图像分解到低频分量和高频分量,然后通过区域统计融合规则处理低频分量。对于高频分量,纸张计算空间频率(SF),该空间频率(SF)被输入到MPCNN模型中,以根据MPCNN的灭火图像获得相关系数。最后,纸张通过低频和高频分量的逆变换来重新变量最终图像。与小波变换(WT)和传统的NSCT算法相比,实验结果表明,本文提出的方法在人类视觉感知和客观评价中实现了改进。它表明该方法是有效的,实用性和良好的性能。

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