• Infrared and Laser Engineering
  • Vol. 51, Issue 4, 20210996 (2022)
Hongxia Gao and Tao Wei*
Author Affiliations
  • School of Software, Henan University of Engineering, Zhengzhou 451191, China
  • show less
    DOI: 10.3788/IRLA20210996 Cite this Article
    Hongxia Gao, Tao Wei. Image fusion algorithm based on improved PCNN and average energy contrast[J]. Infrared and Laser Engineering, 2022, 51(4): 20210996 Copy Citation Text show less
    References

    [1] W Z Zhou, C Fan, X P Hu, et al. Multi-scale singular value decomposition polarization image fusion defogging algorithm and experiment. Chinese of Optics, 14, 298-306(2021).

    [2] M H Gu, M M Wang, L Y Li, et al. Color image multi-scale fusion graying algorithm. Computer Engineering and Applications, 54, 209-215(2021).

    [3] Y Shen, C H Huang, F Huang, et al. Research progress of infrared and visible image fusion technology. Infrared and Laser Engineering, 50, 20200467(2021).

    [4] H R Zhu, Y Q Liu, W Y Zhang. Night-vision image fusion based on intensity transformation and two-scale decomposition. Journal of Electronics & Information Technology, 41, 640-648(2019).

    [5] S Lin, K C Chi, W T Li, et al. Underwater optical image enhancement based on dominant feature image fusion. Acta Photonica Sinica, 49, 203-215(2020).

    [6] W Wang, J E Zhang. A remote sensing image fusion algorithm based on guided filtering and shearlet sparse base. Computer Engineering & Science, 40, 1453-1458(2018).

    [7] L M Cai, X F Li, X D Tian. Virtual viewpoint rendering algorithm based on hierarchical image fusio. Computer Engineering, 47, 204-210(2021).

    [8] X Feng, J H Zhang, K Q Hu, et al. The infrared and visible image fusion method based on variational multiscale. Acta Electronica Sinica, 46, 680-687(2018).

    [9] J Jiao, L D Wu, S B Yu, et al. Image fusion method using multi-scale analysis and improved PCNN. Journal of Computer-Aided Design & Computer Graphics, 31, 988-996(2019).

    [10] F Wang, Y M Chen, H Li. Image fusion algorithm of focal region detection and TAM-SCM based on SHT domain. Journal of Northwestern Polytechnical University, 37, 114-121(2019).

    [11] M Che, H M Zhang, M F Tuo. Spectral image fusion based on wavelet transform and edge information. Laser Journal, 40, 71-75(2019).

    [12] Z Liu, T Xu, Y Q Song, et al. Image fusion technology based on NSCT and robust principal component analysis model with similar information. Journal of Jilin University (Engineering and Technology Edition), 1614-1620(2018).

    [13] J P Lin, Y P Liao. A novel image fusion method with fractional saliency detection and QFWA in NSST. Optics and Precision Engineering, 29, 1406-1419(2021).

    [14] Y J Bai, S H Xiong, X Q Wu, et al. Infrared and visible images fusion based on FDST and MSS. Science Technology and Engineering, 17, 215-219(2017).

    [15] Z W Liu, H Li, Z K Zhao. Improving multi-focus image fusion algorithm with finite discrete shearlet domain. Electronics Optics & Control, 26, 49-53, 105(2019).

    [16] Y Zhou, Y Zhou, X H Wang. Grayscale image fusion based on finite discrete shearlet transform. Computer Engineering, 42, 222-227(2016).

    [17] Y Wang, F Liu, Z H Chen. Image fusion algorithm based on improved weighted method and adaptive pulse coupled neural network in shearlet domain. Computer Science, 46, 261-267(2019).

    [18] J Wang, X S Wu. Image fusion based on the improved sparse representation and PCNN. CAAI Transactions on Intelligent Systems, 14, 922-928(2019).

    [19] W Xie, L M Wang, H J Hu, et al. Adaptive multi-exposure image fusion with guided filtering. Computer Engineering and Applications, 55, 193-199(2019).

    [20] J D Dai, Y D Liu, X Y Mao, et al. Infrared and visible image fusion based on FDST and dual-channel PCNN. Infrared and Laser Engineering, 48, 0204001(2019).

    Hongxia Gao, Tao Wei. Image fusion algorithm based on improved PCNN and average energy contrast[J]. Infrared and Laser Engineering, 2022, 51(4): 20210996
    Download Citation