location:Home > 2020 Vol.3 Apr. No.2 > Selective encryption and compression algorithm of spatial domain CT mechanical scanning image in hyperchaotic system

2020 Vol.3 Apr. No.2

  • Title: Selective encryption and compression algorithm of spatial domain CT mechanical scanning image in hyperchaotic system
  • Name: Wang Rui
  • Company: Xinjiang Agricultural Vocational Technical College
  • Abstract:

    at present, special domain image encryption and compression algorithms have problems such as poor encryption and image compression, long time consuming of encryption and compression, and no guarantee of image compression quality. In this regard, this paper proposes an encryption and compression algorithm for spatial domain image selection based on hyperchaotic system. The hyperchaotic Chen system is selected to decompose the dynamics of the hyperchaotic system. The decomposition result is replaced by image scrambling, and the chaotic sequence output from the hyperchaotic Chen system is preprocessed. The two groups of sequences are used to complete the image scrambling so that the image is encrypted for the first time. The discrete cosine basis is applied to make sparse representation of the original image after scrambling. The partial Hadamard matrix, which is controlled by the Logistic chaotic map, is used as the measurement matrix in the compressed sensing, and the two-dimensional projection measurement of the image is done to complete the image compression. The hyperchaotic Chen system is used to cyclically shift the projection results to change the pixel value of the image, and the final cipher image is obtained. The experimental results show that the algorithm anti-attack coefficient is 0.99, the average compression time is 7s, and the compressed image has high resolution and strong confidentiality. The proposed algorithm is superior to the current algorithm in security and other performance, and can provide support for this field.

  • Keyword: hyperchaotic system; special domain image; selective encryption; compression;
  • DOI: 10.12250/jpciams2020020211
  • Citation form: Wang Rui.Selective encryption and compression algorithm of spatial domain CT mechanical scanning image in hyperchaotic system[J]. Computer Informatization and Mechanical System, 2020, vol. 3, pp. 131-141.
Reference:

[1] N.N.Xu,&C.G. Li, Application of 16 bit image lossy compression based on the JPEG standard. Telecommunications Science (2016),32:103-108.
[2] S.L.Zheng, M.Cao, D.H.Hu, et al., Reversible data hiding in encrypted images based on lossless compression. Journal of Hefei University of Technology(Natural Science) (2016),39:50-55.
[3] H.Guo, J.He,&L.Li, Robust JPEG compression image encryption algorithm with information embedding feature. Application Research of Computers (2016),33:2804-2809.
[4] M.T.Wang, X.Zhou, Y.J.Hu, et al.,  A new multiple-image encryption method based on compressive sensing. Laser Journal 37(3)(2016),:38-41.
[5] Y.X.Chen,Z.C.Huang,&L.Feng, Lossy image compression using SVD and Contourlet transform. Application Research of Computers (2017),34:317-320.
[6] Q.J.Hui, H.A.Li,&Y.Lu,Image compression algorithm based on wavelet transform and HVS. Journal of Electronic Measurement and Instrumentation (2016), 30:1838-1844.
[7] Q.Ji, W.X.Shi, M.Tian, et al., Multispectral image compression based on uniting KL transform and wavelet transform. Infrared and Laser Engineering (2016),45:267-273.
[8] K.P.Wang,Z.Y.Yang,&D.En, Image Compression Method Based on Sparse Representation of Classified Redundant Dictionary. Computer Engineering (2017),43:281-287.
[9] K.Mu,&W.N.Li, The Medical Image Compression Method Based on Fuzzy C-mean Clustering. Control Engineering of China (2016),23:706-710.
[10] G.F.Tang, H.F.Zhou,&Q.P.Tan, Design and implementation of space-borne parallel remote sensing image compression system based on multi-core DSP. Journal of Computer Applications (2017),37:1246-1250.
[11] H.Deng,D.H.Yin, B.T.Liu, et al.,Medical image compression method based on geometric flow multilevel tree Bandelet segmentation coding. Application Research of Computers (2017),34:3500-3503.
[12] Y.N.Wang, S.X.Chen,&C.M.Gui, A Fast Hyperspectral Image Compression Algorithm Combined with Group and Region Clustering. Telecommunication Engineering (2017),57:263-269.
[13] X.Yang,& F.S.Chen, Lossless Compression of Infrared Image Based on Prediction and JPEG2000. Infrared Technology (2016),38:144-148.
[14] X.Cai , Z.G.Xie , H.W.Huang, et al.,  An Adaptive Reconstruction Algorithm for Image Block Compressed Sensing Under Low Sampling Rate. Journal of Chinese Computer Systems (2016),37:612-616.
[15] R.B.Zhu, Optical Wireless Transmission under Static Image Information Hiding Method Exhibits the Simulation. Computer Simulation (2017),34:187-190.

Tsuruta Institute of Medical Information Technology
Address:[502,5-47-6], Tsuyama, Tsukuba, Saitama, Japan TEL:008148-28809 fax:008148-28808 Japan,Email:jpciams@hotmail.com,2019-09-16