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A robust NIfTI image authentication framework to ensure reliable and safe diagnosis.

Basheer, Shakila; Singh, Kamred Udham; Sharma, Vandana; Bhatia, Surbhi; Pande, Nilesh; Kumar, Ankit

A robust NIfTI image authentication framework to ensure reliable and safe diagnosis. Thumbnail


Authors

Shakila Basheer

Kamred Udham Singh

Vandana Sharma

Nilesh Pande

Ankit Kumar



Abstract

Advancements in digital medical imaging technologies have significantly impacted the healthcare system. It enables the diagnosis of various diseases through the interpretation of medical images. In addition, telemedicine, including teleradiology, has been a crucial impact on remote medical consultation, especially during the COVID-19 pandemic. However, with the increasing reliance on digital medical images comes the risk of digital media attacks that can compromise the authenticity and ownership of these images. Therefore, it is crucial to develop reliable and secure methods to authenticate these images that are in NIfTI image format. The proposed method in this research involves meticulously integrating a watermark into the slice of the NIfTI image. The Slantlet transform allows modification during insertion, while the Hessenberg matrix decomposition is applied to the LL subband, which retains the most energy of the image. The Affine transform scrambles the watermark before embedding it in the slice. The hybrid combination of these functions has outperformed previous methods, with good trade-offs between security, imperceptibility, and robustness. The performance measures used, such as NC, PSNR, SNR, and SSIM, indicate good results, with PSNR ranging from 60 to 61 dB, image quality index, and NC all close to one. Furthermore, the simulation results have been tested against image processing threats, demonstrating the effectiveness of this method in ensuring the authenticity and ownership of NIfTI images. Thus, the proposed method in this research provides a reliable and secure solution for the authentication of NIfTI images, which can have significant implications in the healthcare industry.

Citation

Basheer, S., Singh, K. U., Sharma, V., Bhatia, S., Pande, N., & Kumar, A. (2023). A robust NIfTI image authentication framework to ensure reliable and safe diagnosis. PeerJ Computer Science, 9, e1323. https://doi.org/10.7717/peerj-cs.1323

Journal Article Type Article
Acceptance Date Mar 10, 2023
Online Publication Date Apr 21, 2023
Publication Date Jan 1, 2023
Deposit Date Jul 6, 2023
Publicly Available Date Jul 6, 2023
Journal PeerJ. Computer science
Electronic ISSN 2376-5992
Publisher PeerJ
Peer Reviewed Peer Reviewed
Volume 9
Pages e1323
DOI https://doi.org/10.7717/peerj-cs.1323
Keywords Watermarking, Affine Transform, Nifti Medical Image, Lwt, Hessenberg Matrix Decomposition
PMID 37346677

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