A BLOCKCHAIN-BASED SCHEME FOR CLOUD STORAGE DATA ACCESS CONTROL AND ANTI-COPYING
Volume 6, Issue 4, Pp 25-31, 2024
DOI: https://doi.org/10.61784/jcsee3023
Author(s)
Jie Huang1,2,*, JiangYi Yi2
Affiliation(s)
1Hunan Provincial Engineering Research Center for Missile Maintenance, Changsha 410024, Hunan, China.
2Department of Aviation Electronic Equipment Maintenance, Changsha Aeronautical Vocational and Technical College, Changsha 410024, Hunan, China.
Corresponding Author
Jie Huang
ABSTRACT
This paper addresses data usage security issues and proposes a blockchain-based cloud storage data access control and anti-replication solution. The scheme introduces CP-ABE (Cipher Policy Attribute-Based Encryption) encryption technology and digital watermarking technology. By combining the two, a watermark embedding and CP-ABE encryption model based on orthogonal operation domains is proposed, and specific watermark embedding and CP-ABE encryption methods for image-type data based on orthogonal operation domains are provided. The solution stores request-confirmation records in the blockchain, further strengthening user access control rights and establishing a correlation between the requestor and the watermark in the data, preventing the requestor from denying the fact of their illegal copying. Through security analysis, the solution is shown to be secure and feasible.
KEYWORDS
Blockchain; Cloud storage security; Access control; Anti-copying
CITE THIS PAPER
Jie Huang, JiangYi Yi. A blockchain-based scheme for cloud storage data access control and anti-copying. Journal of Computer Science and Electrical Engineering. 2024, 6(4): 25-31. DOI: https://doi.org/10.61784/jcsee3023.
REFERENCES
[1] Liu H, Frej M B H, Wen B. A novel method for recognition, localization, and alarming to prevent swimmers from drowning//2019 IEEE Cloud Summit. IEEE, 2019: 65-71.
[2] Liu T, He X, He L, et al. A video drowning detection device based on underwater computer vision. IET image processing, 2023, 17(6): 1905-1918.
[3] Yang R, Wang K, Yang L. An Improved YOLOv5 Algorithm for Drowning Detection in the Indoor Swimming Pool. Applied Sciences, 2023, 14(1): 200.
[4] Li D, Yu L, Jin W, et al. An improved detection method of human target at sea based on Yolov3//2021 IEEE International Conference on Consumer Electronics and Computer Engineering (ICCECE). IEEE, 2021: 100-103.
[5] Handalage U, Nikapotha N, Subasinghe C, et al. Computer vision enabled drowning detection system//2021 3rd International Conference on Advancements in Computing (ICAC). IEEE, 2021: 240-245.
[6] He Q, Mei Z, Zhang H, et al. Automatic real-time detection of infant drowning using YOLOv5 and faster R-CNN models based on video surveillance. Journal of Social Computing, 2023, 4(1): 62-73.
[7] Shatnawi M, Albreiki F, Alkhoori A, et al. Deep learning and vision-based early drowning detection. Information, 2023, 14(1): 52.
[8] Alqahtani A, Alsubai S, Sha M, et al. Falling and drowning detection framework using smartphone sensors. Computational intelligence and neuroscience, 2022, 2022(1): 6468870.
[9] Kozlov E, Gibadullin R. Prerequisites for developing the computer vision system for drowning detection//E3S Web of Conferences. EDP Sciences, 2024, 474: 02031.
[10] Jalalifar S, Belford A, Erfani E, et al. Enhancing water safety: exploring recent technological approaches for drowning detection. Sensors, 2024, 24(2): 331.
[11] Zhou B, Zhao H, Puig X, et al. Scene parsing through ade20k dataset//Proceedings of the IEEE conference on computer vision and pattern recognition. 2017: 633-641.
[12] Zhou B, Zhao H, Puig X, et al. Semantic understanding of scenes through the ade20k dataset. International Journal of Computer Vision, 2019, 127: 302-321.
[13] Lin T Y, Maire M, Belongie S, et al. Microsoft coco: Common objects in context//Computer Vision–ECCV 2014: 13th European Conference, Zurich, Switzerland, September 6-12, 2014, Proceedings, Part V 13. Springer International Publishing, 2014: 740-755.