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Image Fusion Algorithm Based on Energy of Laplacian and PCNN

机译:基于拉普拉斯能量和PCNN的图像融合算法

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Owing to the global coupling and pulse synchronization characteristic of pulse coupled neural networks (PCNN), it has been proved to be suitable for image processing and successfully employed in image fusion. However, in almost all the literatures of image processing about PCNN, linking strength of each neuron is assigned the same value which is chosen by experiments. This is not consistent with the human vision system in which the responses to the region with notable features are stronger than that to the region with nonnotable features. It is more reasonable that notable features, rather than the same value, are employed to linking strength of each neuron. As notable feature, energy of Laplacian (EOL) is used to obtain the value of linking strength in PCNN in this paper. Experimental results demonstrate that the proposed algorithm outperforms Laplacian-based, wavelet-based, PCNN -based fusion algorithms.
机译:由于脉冲耦合神经网络(PCNN)的全局耦合和脉冲同步特性,它已被证明适用于图像处理并成功地应用于图像融合。但是,在几乎所有有关PCNN的图像处理文献中,每个神经元的链接强度都分配了相同的值,该值是通过实验选择的。这与人类视觉系统不一致,在人类视觉系统中,对具有显着特征的区域的响应要强于对具有显着特征的区域的响应。将显着特征而不是相同的值用于链接每个神经元的强度是更合理的。值得注意的是,本文使用拉普拉斯能量(EOL)来获得PCNN中的连接强度值。实验结果表明,该算法优于基于拉普拉斯算子,基于小波和基于PCNN的融合算法。

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