Abstract
The existing image encryption schemes are not suitable for the secure transmission of large amounts of data in range-gated laser imaging under high noise background. Aiming at this problem, a range-gated laser imaging image compression and encryption method based on bidirectional diffusion is proposed. The image data collected from the range-gated laser imaging source is sparsely represented by the discrete wavelet transform. Arnold chaotic system is used to scramble the sparse matrix, and then the measurement matrix is constructed by the quantum cellular neural network (QCNN) to compress the image. In addition, the random sequence generated by QCNN hyperchaotic system is used to carry out “bidirectional diffusion” operation on the compression result, so as to realize the security encryption of image data. The comparative analysis of the security encryption performance of different compression ratios shows that the histogram sample standard of the encrypted image can reach about 10, and the information entropy value is more than 7.99, which indicates that the encryption scheme effectively hides the plaintext information of the original image. When the encrypted image is attacked by different degrees of noise, this method can still reconstruct the image through the effective decryption process. The experimental results show that this method realizes the secure compression and encryption of gated-laser imaging image data, and effectively ensures the security of data while reducing the amount of channel transmission data.
Article PDF
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.Avoid common mistakes on your manuscript.
References
Wang Shu-yu, Tao Sheng-xiang, Chen Dong and Gu Guo-hua, Optoelectronics Letters 15, 21 (2019).
Andresen Bjørn F, Steinvall Ove, Fulop Gabor F, Andersson Pierre, Elmqvist Magnus, Norton Paul R and Tulldahl Michael, Proceedings of SPIE 6542, 654216 (2007).
Huckridge David A, Göhler B, Ebert Reinhard R, Lutzmann P and Anstett G, Proceedings of SPIE 7113, 711307 (2008).
Kamerman Gary W, Laurenzis Martin, Steinvall Ove, Christnacher Frank, Bacher Emmanuel, Bishop Gary J, Gonglewski John D, Metzger Nicolas, Schertzer Stéphane, Lewis Keith L, Hollins Richard C, Scholz Thomas and Merlet Thomas J, Proceedings of SPIE 8186, 818603 (2011).
Merritt Paul and Kramer Mark, Proceedings of SPIE 3086, 2 (1997).
Guan Bin and He Da-hua, Optics & Optoelectronic Technology 15, 10 (2017). (in Chinese)
Lv Wen-lei, Xu Zhang and Ke Liu, Journal of Ordnance Equipment Engineering 40, 199 (2019). (in Chinese)
Chen Xiaodong, Di Xiaoqiang, Li Jinqing, Zhao Jianping, Liu Xiaojie, Yu Hui, Pu Yifei, Li Chunming and Pan Zhigeng, Proceedings of SPIE 11069, 174 (2019).
Man Zhenlong, Li Jinqing, Di Xiaoqiang and Bai Ou, IEEE Access 7, 103047 (2019).
Yuan Han-qin, Journal of CAEIT 14, 831 (2019). (in Chinese)
Daniel Herrera C, Juho Kannala and Janne Heikkila, IEEE Trans. Pattern Anal. Mach. Intell. 34, 2058 (2012).
Xie Meilin, Liu Peng, Ma Caiwen, Huang Wei, Liang Jian and Feng Xubin, Optik 157, 556 (2018).
Donoho D. L., IEEE Transactions on Information Theory 52, 1289 (2006).
CANDÈS EMMANUEL J., ROMBERG JUSTIN K. and TAO TERENCE, Communications on Pure and Applied Mathematics 59, 1207 (2006).
FORTUNA LUIGI and PORTO DOMENICO, International Journal of Bifurcation and Chaos 14, 1085 (2004).
Wu Chuhan, Chang Jun, Quan Chenggen, Zhang Xiaofang and Zhang Yongjian, Results in Optics 1, 100021 (2020).
Wu Ming Te, Information Sciences 474, 125 (2019).
Tropp Joel A and Gilbert Anna C, IEEE Transactions on Information Theory 53, 4655 (2007).
Chai Xiuli, Gan Zhihua, Yang Kang, Chen Yiran and Liu Xianxing, Signal Processing: Image Communication 52, 6 (2017).
Pak Chanil and Huang Lilian, Signal Processing 138, 129 (2017).
Zhang Yong, Chen Aiguo, Tang Yingjun, Dang Jianwu and Wang Guoping, Information Sciences 526, 180 (2020).
Author information
Authors and Affiliations
Corresponding author
Additional information
This work has been supported by the National Key Research and Development Projects (No.2018YFB1800303), the Natural Science Foundation of Jilin Province (No.20190201188JC), and the Research on Teaching Reform of Higher Education in Jilin Province (No.JLLG685520190725093004).
Rights and permissions
About this article
Cite this article
Li, J., Sheng, Y., Di, X. et al. Range-gated laser image compression and encryption scheme based on bidirectional diffusion. Optoelectron. Lett. 17, 630–635 (2021). https://doi.org/10.1007/s11801-021-1003-8
Received:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s11801-021-1003-8