Methodological base for transformants representation in nonequilibrium positional uneven-diagonal space

Authors

  • Володимир Вікторович Баранік Kharkiv national University of Air forces of them. Ivan Kozhedub
  • Юрій Миколайович Рябуха Kharkiv national University of Air forces of them. Ivan Kozhedub
  • Альберт Анатолійович Леках Kharkiv national University of Air forces of them. Ivan Kozhedub
  • Оксана Миколаївна Стеценко Kharkiv national University of radio electronics
  • Олег Сергійович Куліца National University of civil protection of Ukraine

DOI:

https://doi.org/10.18372/2310-5461.45.14570

Keywords:

multi-agent processing, information intensity, video-stream

Abstract

Revealed the method of video data processing at the source level operation conceptual essence, based on the multiagent processing scheme. In the framework of multi-agent approach, the principle of this system operation described in the conditions of necessity to ensure a rapid change of video stream intensity in the process of transmitting video data to end users. An overview of the features of this processing scheme, the principle of intelligent agents functioning and the essence of the processing model are conducted. The general principles of multiagent system functioning are given, considering that each of its functional units is an intellectual agent - a module that performs processing at one particular stage of the general technological process within the framework of basic technology. In other words, an intellectual agent is seen as a set of functions and tools for data processing, and it refers to one or another technological stage of the underlying technology. The essence of application of processing models in the course of video data encoding is revealed, and it is also logically substantiated that such an approach contributes both to reducing the necessary computing resources for the system as a whole and, on the other hand, also contributes to increasing the performance at the same computing capacities. This is achieved, in particular, by dividing the shared resources of the base platform between the individual agents, that is, in this case it is possible to perform parallel computations, and by the fact that the presence of a processing model allows the multiagent system to operate in two modes - the main and the training mode. In the training mode, the system detects regularities between the content features of the video stream fragments that are received for processing, as well as a set of coding parameters for each of the agents, which together will ensure optimal processing. The functioning of the nodes of this system, implemented on the basis of the basic MPEG algorithm is considered.

Author Biographies

Володимир Вікторович Баранік, Kharkiv national University of Air forces of them. Ivan Kozhedub

doctor of technical Sciences, Professor

Юрій Миколайович Рябуха, Kharkiv national University of Air forces of them. Ivan Kozhedub

doctor of technical Sciences, Professor

Альберт Анатолійович Леках, Kharkiv national University of Air forces of them. Ivan Kozhedub

candidate of technical Sciences

Олег Сергійович Куліца, National University of civil protection of Ukraine

candidate of technical Sciences

References

Barannik V.V., Ryabukha Yu. N., Podlesnyi S.A. Structural slotting with uniform redistribution for enhancing trustworthiness of information streams. Telecommunications and Radio Engineering. 2017. Vol. 76. No 7. DOI: 10.1615/TelecomRadEng.v76.i7.40

Barannik V., Podlesny S.A., Yalivets K., Bekirov Ali The analysis of the use of technologies of error resilient coding at influence of an error in the codeword. Modern Problems of Radio Engineering. Telecommunications and Computer Science (TCSET). 13th International Conference. 2016. pp. 52-54. DOI: 10.1109/TCSET.2016.7451965.

Barannik V., Krasnorutskiy A., Ryabukha Yu. N., Okladnoy D. Model intelligent processing of aerial photographs with a dedicated key features interpretation. Modern Problems of Radio Engineer-ing. Telecommunications and Computer Science (TCSET), 13th International Conference. 2016. pp. 736-738. DOI: 10.1109/TCSET.2016.7452167.

Salomon D. Data Compression: The Complete Reference. Fourth Edition. Springer-Verlag Lon-don Limited, 2007. 899 p.

Richardson Ian. H.264 and MPEG-4 Video Compression: Video Coding for Next-Generation Multimedia. 2005. pp. 368.

Vatolin D., Ratushnyak A., Smirnov M. and Yukin V. Methods of data compression. The device archiver, compression of images and videos. M.: DIALOG MIFI, 2013. 384 p.

Ablamejko S.V., Lagunovskij D.M. Obrabotka izobrazhenij: tehnologija, metody, primenenie. - Minsk: Amalfeja, 2000. 303 s.

Tanenbaum A., Van Steen M. Distributed systems. Pearson Prentice Hall, 2007.

Barannik V.V, Ryabukha Yu.N., Tverdokhleb V.V., Barannik D.V. Methodological basis for constructing a method for compressing of transformants bit representation, based on non-equilibrium positional encoding. 2nd IEEE International Conference on Advanced Information and Communication Technologies (AICT 2017). Lviv, 2017. pp. 188-192. DOI: 10.1109/AIACT.2017.8020096.

Musienko A., Ganjaric J. Technology of coding of digital aerial photographs taking into account classes of a semantic saturation of blocks in system of air monitoring. VII Inter University Confer-ence of Students, PhD Students and Young Scientists ["Engineer of XXI Century"], 08 December 2016 at the University of Bielsko-Biała (ATH). Bielsko-Biała, Poland. 2016. pp. 215-220.

Bezgubova Yu. Multi-Agent Distributed Management Information Flows. Educational resources and technology. 2015. № 1 (9). pp 113-119.

Miano J. Compressed image file formats: JPEG, PNG, GIF, XBM, BMP. 1999. 264 p.

Barannik V., Bekirov А., Lekakh A., Barannik D. A steganographic method based on the modifi-cation of regions of the image with different saturation. Modern Problems of Radio Engineering, Telecommunications and Computer Science, (TCSET’2018): XIVth Intern conf., (Lviv-Slavske, Ukraine, febr. 23–25, 2018). Lviv-Slavske: 2018. pp. 542-545. DOI: 10.1109/TCSET.2018.8336260.

Wallace G. K. The JPEG Still Picture Compression Standard.Communication in ACM. 1991. V34. №4. P. 31 34.

Stankiewicz O., Wegner K., Karwowski D., Stankowski J., Klimaszewski K., Grajek T. Encoding mode selection in HEVC with theтuse of noise reduction. 2017 International Conference on Sys-tems, Signals and Image Processing (IWSSIP). Poznan, 2017. pp. 1-6.

Barannik V., Alimpiev A., Bekirov A., Barannik D., Barannik N. Detections of sustainable areas for steganographic embedding. East-West Design & Test Symposium (EWDTS). 2017. P. 1-4. DOI: 10.1109/EWDTS.2017.8110028.

Christophe E., Lager D., Mailhes C. Quality criteria benchmark for hiperspectral imagery. IEEE Transactions on Geoscience and Remote Sensing. Sept 2005. Vol. 43. No 9. P. 2103–2114.

Wallace G.K. Overview of the JPEG (ISO/CCITT) Still image compression: image processing al-gorithms and techniques. Processing of the SPIE. 1990. Vol. 1244. P. 220 233.

Sindeev M., Konushin A., Rother C. Alpha-flow for video matting. Technical Report. 2012. P. 41–46.

Tsai W. J., Sun Y. C. Error-resilient video coding using multiple reference frames. 8th IEEE In-ternational Conference on Communication Software and Networks (ICCSN), pp. 561-564, 2016.

Tsvetkov V.Ya. Cognitive information models. Life Science Journal. 2014. 11(4). рр468-471.

Published

2020-04-30

Issue

Section

Information technology, cybersecurity