A multi-focus image fusion algorithm using modified adaptive PCNN model

Yongxing Jia, Chuanzhen Rong, Y. Wang, Ying Zhu, Yu Yang
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引用次数: 4

Abstract

Image fusion is the technology that combines more than one images into an image, to lay the foundation for further image processing tasks. The paper proposed a novel image fusion framework based on improved adaptive PCNN. PCNN is evolved from mammal's visual cortex neuron model, and characterized by its pulse synchronization and acquisition of the neurons. It has been proved that it is very suitable for the field of image processing, and it has been successfully applied in the field of image fusion. The two source images were input into two parallel PCNN networks, and the gray value of the image was used as the external stimuli of PCNN; At the same time, an improved Sum-modified-laplacian was selected as the image focus evaluation fuction, and linking strength of the corresponding neuron of the PCNN was calculated. The ignition map could be obtained after PCNN ignition, and the clearer part of the images were selected to generate the fused image by comparing the ignition map. In the end, the fused image was generated by pixel by pixel window-based consistency verification, and the final fusion result was obtained. Experimental results show that the proposed method is superior to the traditional image fusion methods in terms of subjective and objective evaluation criteria.
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基于改进自适应PCNN模型的多焦点图像融合算法
图像融合是一种将多个图像合并成图像的技术,为进一步的图像处理任务奠定基础。提出了一种基于改进自适应PCNN的图像融合框架。PCNN是由哺乳动物的视觉皮层神经元模型进化而来,具有脉冲同步和神经元获取的特点。实践证明,该方法非常适用于图像处理领域,并已成功应用于图像融合领域。将两幅源图像分别输入到两个平行的PCNN网络中,图像的灰度值作为PCNN的外部刺激;同时,选择改进的sum -modified- laplace作为图像焦点评价函数,计算PCNN对应神经元的连接强度。得到PCNN点火后的点火图,通过比较点火图,选择图像中较清晰的部分生成融合图像。最后,通过逐像素窗口一致性验证生成融合图像,得到最终融合结果。实验结果表明,该方法在主客观评价标准上均优于传统的图像融合方法。
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