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Image fusion algorithm based on adaptive pulse coupled neural networks in curvelet domain

机译:基于自适应脉冲耦合神经网络在Curvelet域中的图像融合算法

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Using the fast discrete curvelet transform, an image fusion algorithm based on adaptive pulse coupled neural networks (PCNNs) is proposed. PCNN is built in each high-frequency subband to simulate the biological activity of human visual system. Support vector machine is employed to achieve support values which represent subband features and then will be imported to motivate the neurons. The first firing time of each neuron is presented as the salience measure. Compared with traditional algorithms where the linking strength of each neuron is set as constant or always changed according to features of each pixel, in our algorithm, the linking strength as well as the linking range is determined by the prominence of corresponding low-frequency coefficients, which not only reduces the calculation of parameters but also flexibly makes good use of global features of images. Experimental results indicate superiority of the proposed algorithm in terms of visual effect and objective evaluations.
机译:使用快速离散的Curvelet变换,提出了一种基于自适应脉冲耦合神经网络(PCNNS)的图像融合算法。 PCNN内置于每个高频子带中,以模拟人类视觉系统的生物活动。支持向量机用于实现代表子带功能的支持值,然后将导入以激励神经元。每个神经元的第一次烧制时间作为显着措施呈现。与传统算法相比,其中每个神经元的连接强度设定为常数或始终根据每个像素的特征改变,在我们的算法中,通过对应的低频系数的突出来确定连接强度以及链接范围,这不仅减少了参数的计算,还可以灵活地利用图像的全局特征。实验结果表明了在视觉效果和客观评估方面的提出算法的优越性。

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