Development of an algorithm for identifying signs of intraframe editing of video images
https://doi.org/10.37493/2307-910X.2024.2.3
Abstract
This paper discusses an algorithm for detecting signs of intra-frame editing of video images when cutting or pasting into the source video stream. To do this, it is shown how images and video streams are formed, what algorithms are used to compress the video stream, as well as what main video codecs exist. Taking into account the specifications of the video codec, the work includes an algorithm for identifying signs of editing, which will allow us to determine the presence of cutting or inserting part of the video stream into the original video stream.
About the Author
D. A. KuzhevaRussian Federation
Diana A. Kuzheva – PhD student
Stavropol
References
1. Conrod R. Demystifying the active format description. Harris Assured Communications, Mason, Ohio, USA, White Book. 2008. (In Russ.).
2. Yan Y, Yuhua P, Zhaoguang L. Fast YCbCr to RGB conversion algorithm. IEEE Transactions on Consumer Electronics. 2007;53(4):1490-1493. (In Russ.).
3. Astridinov RK, Baranchuk NA, Rastimeshin GD. Application of a codec as a method of video compression in modern technical research. State and prospects for the development of modern science in the direction of “Technical vision and pattern recognition”: collection of articles of the II All-Russian scientific and technical conference. Volume 1. Military innovative technopolis "ERA". Anapa. 2020. P. 53-59. (In Russ.).
4. Bykov RE. Fundamentals of television and video technology [Text]: textbook for universities / RE Bykov. Moscow: Hotline – Telecom, 2006. P. 399. (In Russ.).
5. Vlasenko AV, Kiselev PS, Sklyarova EA. Artificial intelligence and cybersecurity problems. Deepfake technology. Young scientist. 2021;21(363):81-86. (In Russ.).
6. Gonta A. Image sharpness and video surveillance equipment [Electronic resource] / A Gonta, E Sedov. Available from: http://www.security-bridge.com [Accessed 2 March 2024]. (In Russ.).
7. Dovgal VA. Application of deep learning for creating and detecting fake images synthesized using artificial intelligence. Bulletin of the Adygea State University. Series 4: Natural, mathematical and technical sciences. 2021;4(291):82-94. (In Russ.).
8. Dogadova DM, Korelin ON. Features of the video compression standard h. 264. Information systems and technologies IST-2017. 2017. P. 471-474. (In Russ.).
9. Dorogov AYu, Kurbanov RG, Razin VV. High-speed algorithm for semantic classification of JPEG images. Neuroinformatics. 2006;1(2):124-145. (In Russ.).
10. Kirilenko AN, Gryzov GYu, Ciobanu MK. Research on the use of graphic processors for solving non-graphical problems. DSPA: Issues in the use of digital signal processing. 2011;1(4):212-214. (In Russ.).
11. Criteria and methods for integrated assessment of image quality in raster graphic formats [Electronic resource]. Available from: http://www.aiportal.ru/articles/other/evaluation-ofimage-quality.html [Accessed 2 March 2024]. (In Russ.).
Review
For citations:
Kuzheva D.A. Development of an algorithm for identifying signs of intraframe editing of video images. Modern Science and Innovations. 2024;(2):26-36. (In Russ.) https://doi.org/10.37493/2307-910X.2024.2.3