SecDH: Security of COVID-19 images based on data hiding with PCA
Nowadays, image security and copyright protection become challenging, especially after the COVID-19 pandemic. In the paper, we develop SecDH as a medical data hiding scheme, which can guarantee the security and copyright protection of the COVID-19 images. Firstly, the cover image is normalized, which offers high resistance against the geometric attacks. Secondly, the normalized principal component as embedding factor is computed, which are calculated based on principal component analysis (PCA) between cover and mark image. Thirdly, the medical image is invisibly marked with secret mark based on normalized component, redundant discrete wavelet transform (RDWT) and randomized singular value decomposition (RSVD) is introduced. Finally, Arnold cat map scheme employed to ensure the security of the watermarking system. Under the experimental evaluation, our SecDH tool is not only imperceptible, but also has a satisfactory advantage in robustness and security compared with the traditional watermarking schemes.
Funding
IES\R2\212111 - InternationalExchanges 2021 Round 2, dt. 28 February, 2022, under Royal Society, UK
History
Citation
Computer Communications Volume 191, 1 July 2022, Pages 368-377Author affiliation
School of Computing and Mathematical Sciences, University of LeicesterVersion
- AM (Accepted Manuscript)