Hyperchaotic Bilateral Random Low-Rank Approximation Random Sequence Generation Method and Its Application on Compressive Ghost Imaging

Tan, Songyuan, Sun, Jingru, Tang, Yiping, Sun, Yichuang and Wang, Chunhua (2024) Hyperchaotic Bilateral Random Low-Rank Approximation Random Sequence Generation Method and Its Application on Compressive Ghost Imaging. Nonlinear Dynamics, 112 (7). pp. 5749-5763. ISSN 0924-090X
Copy

Hyperchaotic systems have been widely used in the field of communication and information security to generate random numbers due to their super-long sequences, pseudo-randomness, and unpredictability. However, chaotic systems still have certain periodicity and security risks. To improve the reliability of chaotic random sequences, in this paper, a new method of generating chaotic random sequences based on random bilateral projection is proposed. Through random bilateral projection algorithm, the matrix formed by chaotic sequences is decomposed into a noiseless low-rank matrix, sparse matrix, and noise matrix, and the noise matrix is retained as a random sequence, which can effectively remove the regular factors to improve the randomness of the generated sequence. To verify the effectiveness of the proposed sequence generation method, we apply it to the compressive ghost imaging encryption system, and through simulation verified that compared with the existing algorithms, the proposed random sequence generation method has better efficiency and randomness, and can improve the security and efficiency of the compressive ghost imaging system.


picture_as_pdf
ND-Random.pdf
subject
Submitted Version

View Download

Atom BibTeX OpenURL ContextObject in Span OpenURL ContextObject Dublin Core MPEG-21 DIDL Data Cite XML EndNote HTML Citation METS MODS RIOXX2 XML Reference Manager Refer ASCII Citation
Export

Downloads