Zhihui Cheng This email address is being protected from spambots. You need JavaScript enabled to view it.1 and Xiong Cheng2

1School of foreign languages of Hubei University of Technology, wuhan, China, 430068
2School of mechanical and electrical engineering, Wuhan City Polytechnic, wuhan, China, 430070


Received: May 19, 2022
Accepted: June 20, 2022
Publication Date: September 12, 2022

 Copyright The Author(s). This is an open access article distributed under the terms of the Creative Commons Attribution License (CC BY 4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are cited.

Download Citation: ||https://doi.org/10.6180/jase.202306_26(6).0004  


Under the new situation of rapid popularization of new media information technology, the data of audio visual new media supervision is increasing day by day, so there is an urgent need to develop a more automated and intelligent audio-visual new media data processing system. In order to develop a special data processing system, the application of new technology and new technology management should be combined, so as to improve and perfect the supervision of data processing, to greatly improve the supervision ability, to safeguard the safety requirements of regulatory information and to promote the development of new audio-visual media supervision business. In this paper, according to the form of current regulatory business, the new data processing system of audio-visual new media which integrates data processing, reporting and storage was established, and the system architecture and functions of each module were described in detail. Audio-visual new media has become an important way for modern people to receive information, leisure and entertainment. Its appearance not only broke the boundaries between the original media, greatly expanded the autonomy and expression of netizens, but also challenged the traditional management system, and also played a role in promoting the reform of the media. The United States also has a balance problem between marketization and the management of the audiovisual new media industry. This dynamic balance is maintained through the coordination of different methods such as industrial management, enterprise operation, pressure groups, and industry association regulations. When the media industry as an interest group exerts its social influence, it is necessary to grasp the principle of "degree". In a relatively perfect market economy environment, how to determine the boundary of enterprise-level integration cannot be accurately grasped only by the enterprise itself. Therefore, in this respect, the market is not omnipotent, for which the intervention of government management becomes necessary.

Keywords: B/S architecture; database; system design


  1. [1] M. Berber and W. Wright, (2016) “Online kinematic GNSS data processing for small hydrographic surveys" Ocean engineering 112: 335–339. DOI: 10.1016/J.OCEANENG.2015.10.001.
  2. [2] M. Adam, O. Cardin, P. Berruet, and P. Castagna, (2012) “Data processing from manufacturing systems to decision support systems: propositions of alternative design approaches" IFAC Proceedings Volumes 45(6):1129–1134. DOI: 10.3182/20120523-3-RO-2023.00140.
  3. [3] Y. Shen, Q. Cai, W. Lu, D. Sun, and Z. Xie, (2016) “epiCG: A GraphUnit Based Graph Processing Engine on epiC" Big Data Research 4: 59–69. DOI: 10.1016/j.bdr.2016.04.002.
  4. [4] M. Persson and A. Hakansson, (2017) “Simultaneous Data Management in Sensor-Based Systems using Metadata, Disaggregation and Processing" Procedia computer science 112: 2117–2126. DOI: 10.1016/j.procs.2017.08.231.
  5. [5] Q. L. Niu, Z. Y.Wu, N. B. Liu, S. L. Hu, and C. L. Yang. Research on Data Processing Method of the CAD/CAM Integrated System of Super-Hard Cutting Tools. 42. Trans Tech Publ, 2011. DOI: 10.4028/www.scientific.net/AMM.42.413.
  6. [6] H. T. Guo, Z. G. Chang, and S. W. He. “Geostationary Meteorological Satellite Data Processing System”. In: Advanced Materials Research. 181. Trans Tech Publ. 2011, 257–260. DOI: 10.4028/www. scientific .net/AMR.181-182.257.
  7. [7] P. Li, L. K. Zeng, B. Wu, and X. S. Cheng. “Design of Data Processing System on Analysis of Variance”. In: Advanced Materials Research. 268. Trans Tech Publ. 2011, 2144–2149. DOI: 10.4028/www.scientific.net/AMR.268-270.2144.
  8. [8] G. Xiao, (2011) “Data Processing Model of Bank Credit Evaluation System." J. Softw. 6(7): 1241–1247. DOI:10.4304/JSW.6.7.1241-1247.
  9. [9] M. R. Ponomarenko and I. Y. Pimanov. “Implementation of synthetic aperture radar and geoinformation technologies in the complex monitoring and managing of the mining industry objects”. In: Computer Science On-line Conference. Springer. 2017, 291–299. DOI: 10.1007/978-3-319-57264-2_30.
  10. [10] W.-B. Zhao, M.-Q. Hong, and P. Lin. “Web-Based Geodetic Data Processing System”. In: Fuzzy System and Data Mining. IOS Press, 2016, 442–450. DOI: 10.3233/978-1-61499-619-4-442.
  11. [11] A. Freybott, (1976) “The data processing system in the Herford district hospital (author’s transl)" MMW, Munchener MedizinischeWochenschrift 118(32-33): 1011–1014.
  12. [12] H.-Y. Liu, J.-Q. Liu, and J.-J. Xi, (2014) “Data Collecting and Processing System and Hydraulic Control System of Hydraulic Support Model Test" Sensors & Transducers 181(10): 87.
  13. [13] W. Ju, J. Li,W. Yu, and R. Zhang, (2016) “iGraph: an incremental data processing system for dynamic graph" Frontiers of Computer Science 10(3): 462–476. DOI: 10.1007/s11704-016-5485-7.
  14. [14] M. Dziewiecki, G. Doma´ nski, W. Frey, B. Konarzewski, R. Kurjata, J. Marzec, A. Smolnik, K. Zaremba, and M. Ziembicki, (2010) “Readout System and Data Processing for OCT Pachymetry" International Journal of Electronics and Telecommunications 56: 223–230. DOI: 10.2478/V10177-010-0029-9.
  15. [15] I. Cavill, C. Ricketts, T. Moulding, A. Jacobs, and M. Page, (1974) “A system for data processing in haematology" Journal of Clinical Pathology 27(4): 330–333. DOI: 10.1136/jcp.27.4.330.
  16. [16] A. Nistor and E. Zadobrischi. “Analysis and Estimation of Economic Influence of IoT and Telecommunication in Regional Media Based on Evolution and Electronic Markets in Romania”. In: Telecom. 3. 1. MDPI. 2022, 195–217. DOI: 10.3390/telecom3010013.
  17. [17] N. Blum, S. Lachapelle, and H. Alvestrand, (2021) “WebRTC-Realtime Communication for the Open Web Platform: What was once a way to bring audio and video to the web has expanded into more use cases we could ever imagine." Queue 19(1): 77–93.
  18. [18] S. Kesavan, E. Saravana Kumar, A. Kumar, and K. Vengatesan, (2021) “An investigation on adaptive HTTP media streaming Quality-of-Experience (QoE) and agility using cloud media services" International Journal of Computers and Applications 43(5): 431–444. DOI: 10.1080/1206212X.2019.1575034.
  19. [19] P. Buitelaar, I. D. Wood, S. Negi, M. Arcan, J. P. Mc-Crae, A. Abele, C. Robin, V. Andryushechkin, H. Ziad, H. Sagha, et al., (2018) “Mixedemotions: An opensource toolbox for multimodal emotion analysis" IEEE Transactions on Multimedia 20(9): 2454–2465. DOI: 10.1109/TMM.2018.2798287.
  20. [20] M. Raza, M. Awais, K. Ali, N. Aslam, V. V. Paranthaman, M. Imran, and F. Ali, (2020) “Establishing effective communications in disaster affected areas and artificial intelligence based detection using social media platform" Future Generation Computer Systems 112: 1057–1069. DOI: 10.1016/j.future.2020.06.040.