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Medical image fusion based on modified pulse coupled neural network model and kirsch operator

机译:基于改进脉冲耦合神经网络模型和Kirsch算子的医学图像融合

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The medical image fusion process integrates the information of multiple source images into a single image. This fused image can provide more comprehensive information and is helpful in clinical diagnosis and treatment. In this paper, a new medical image fusion algorithm is proposed. Firstly, the original image is decomposed into a low-frequency sub-band and a series of high-frequency sub-bands by using nonsubsampled shearlet transform (NSST). For the low-frequency sub-band, kirsch operator is used to extract the directional feature maps from eight directions and novel sum-modified-Laplacian (NSML) method is used to calculate the significant information of each directional feature map, and then, combining a sigmod function and the significant information updated by gradient domain guided image filtering (GDGF), calculate the fusion weight coefficients of the directional feature maps. The fused feature map is obtained by summing the convolutions of the weight coefficients and the directional feature maps. The final fused low-frequency sub-band is obtained by the linear combination of the eight fused directional feature maps. The modified pulse coupled neural network (MPCNN) model is used to calculate the firing times of each high-frequency sub-band coefficient, and the fused high-frequency sub-bands are selected according to the firing times. Finally, the inverse NSST acts on the fused low-frequency sub-band and the fused high-frequency sub-bands to obtain the fused image. The experimental results show that the proposed medical image fusion algorithm expresses some advantages over the classical medical image fusion algorithms in objective and subjective evaluation.
机译:医学图像融合过程将多个源图像的信息集成到单个图像中。这种融合图像可以提供更全面的信息,有助于临床诊断和治疗。本文提出了一种新的医学图像融合算法。首先,通过使用非管制的Shearlet变换(NSST)将原始图像分解成低频子带和一系列高频子带。对于低频子带,Kirsch操作员用于从八个方向和新颖的SUM-MODIFIED-LAPLACIAN(NSML)方法中提取方向特征映射用于计算每个定向特征图的重要信息,然后组合SigMod功能和由梯度域引导图像滤波(GDGF)更新的重要信息,计算定向特征映射的融合权重系数。通过求解权重系数和方向特征图的卷积来获得融合特征图。最终熔融的低频子带是通过八个融合方向特征图的线性组合获得的。修改的脉冲耦合神经网络(MPCNN)模型用于计算每个高频子带系数的射击时间,并且根据烧制时间选择融合的高频子带。最后,逆NSST在熔融的低频子带和熔融的高频子带上起作用以获得融合图像。实验结果表明,所提出的医学图像融合算法在客观和主观评估中的经典医学图像融合算法方面表达了一些优点。

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