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A Novel Wavelet Image Fusion Algorithm Based on Chaotic Neural Network

机译:基于混沌神经网络的小波图像融合新算法

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In this paper, Transiently Chaotic Neural Network (TCNN) is used in wavelet image fusion method. This paper adopts the weighted average strategy for the fusion of the wavelet transform coefficients. The TCNN outputs the weighting coefficient of every wavelet transform pixel when the energy function of the neural network has achieved the global minimum. At the same time, the average gradient value of the region around every wavelet transform pixel gets the global maximum according to the relationship between the average gradient and energy. The wavelet transform coefficients of the fused image are got by using the weighting coefficients. The advantage of the algorithm is that the weighting coefficient is obtained through the dynamic searching optimization of the average gradient. Experiments show that the average gradient values of the fusion images using the proposed method are greater than the results using the region energy method. The TCNN method improves the performance of the fusion image effectively.
机译:本文将瞬态混沌神经网络(TCNN)用于小波图像融合方法。本文采用加权平均策略融合小波变换系数。当神经网络的能量函数达到全局最小值时,TCNN输出每个小波变换像素的加权系数。同时,根据平均梯度和能量之间的关系,每个小波变换像素周围区域的平均梯度值获得全局最大值。利用加权系数得到融合图像的小波变换系数。该算法的优点是加权系数是通过平均梯度的动态搜索优化获得的。实验表明,所提出的方法融合图像的平均梯度值大于区域能量方法的结果。 TCNN方法有效地提高了融合图像的性能。

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