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Infrared and Visible Image Fusion Using Improved QPSO-PCNN Algorithm

机译:使用改进的QPSO-PCNN算法红外和可见图像融合

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This paper constructs a modified adaptive pulse coupled neural network (PCNN) model applied to infrared and visible image fusion. The PCNN model is improved by the quantum-behaved particle swarm optimization (QPSO) to set the parameters automatically. Two source images are processed by the QPSO-PCNN model respectively. Two hybrid fitness functions are proposed for QPSO algorithm. The first hybrid fitness function is made up of three evaluation criteria, spatial frequency (SF), average gradient (AG), and image entropy (EN). The other one uses mutual information based on image complex matrix (QCSVD_MI) instead of EN. Then, the fused image is generated by comparing the pulse output matrix of the two source images based on the judgment threshold. Finally, the proposed method is tested and verified with four pairs of infrared and visible images. Furthermore, the performances of different methods are judged with QCSVD_MI, EN, SF, AG and standard deviation (STD). Based on the experimental results, the proposed method is proved to be more suitable for complex infrared and visible image fusion. Especially, the method with fitness function based on QCSVD_MI, AG, and SF shows much better performance for relatively complex images. Because QCSVD_MI extracts more sensitive information of human visual system (HVS) which is more suitable for human eye observation.
机译:本文构建了应用于红外和可见图像融合的改进的自适应脉冲耦合神经网络(PCNN)模型。通过量子表现粒子群优化(QPSO)改进了PCNN模型以自动设置参数。分别由QPSO-PCNN模型处理两个源图像。提出了两个混合体函数用于QPSO算法。第一混合体函数由三个评估标准,空间频率(SF),平均梯度(AG)和图像熵(ZH)组成。另一个使用基于图像复杂矩阵(QCSVD_MI)而不是EN的互信息。然后,通过基于判断阈值比较两个源图像的脉冲输出矩阵来生成融合图像。最后,用四对红外和可见图像进行测试和验证所提出的方法。此外,使用QCSVD_MI,EN,SF,AG和标准偏差(STD)判断不同方法的性能。基于实验结果,证明了该方法更适合于复杂的红外和可见图像融合。特别是,基于QCSVD_MI,AG和SF具有适合功能的方法对相对复杂的图像显示了更好的性能。因为QCSVD_MI提取人类视觉系统(HVS)的更敏感信息,这更适合于人眼观察。

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