Data mining and image recognition
Intellectual systems and technologies
A.A. Ivanova, S.A. Gladilin, A.E. Zhukovsky, E.L. Pliskin Database for the administrative accounting of scientific publications
Image and signal processing
MACHINE LEARNING
A.A. Ivanova, S.A. Gladilin, A.E. Zhukovsky, E.L. Pliskin Database for the administrative accounting of scientific publications

Abstract.

The article considers software requirements for administrative accounting of scientific publications. We design the database structure, taking into account various aspects of the publication activity of the scientific
team.

Keywords:

bibliographic references, scientific publications, database, publication activity, scientometrics, administration of scientific research.

PP. 83-89.

DOI: 10.14357/20790279180509

References

1. Strakhov A.A., Anisimova Т.V. Automation of bibliographic description of sources and links in the MS Word 2010 document // Bulletin of the
Moscow University of the Ministry of Internal Affairs of Russia. 2017. №5.
2. I.V. Artemova. Accounting for R & D by the performer in 2018. URL: https://www.referent.com/40/11763 (retrieved 10.07.2018).
3. Informational and analytical system “TRUE”. User guide. Subsystem “Research work”. URL: http://docs.istina.msu.ru/data_input/research.html
(retrieved 10.07.2018).
4. Website SNOSKA.INFO for registration of bibliographic references. URL: http://www.snoskainfo.ru/ (retrieved 10.07.2018).
5. The ZoteroBib website for creating bibliographic lists. URL: https://zbib.org (retrieved 10.07.2018).
6. Gospodarik Yu.P. Accounting for individual achievements of students in research and
development / / Higher education in Russia. 2013. №3. URL: https://cyberleninka.ru/article/n/uchet-individualnyh-dostizheniy-studentov-vnauchno-
issledovatelskoy-deyatelnosti (retrieved 10.07.2018).
7. Nikolenko V.N., Vyalkov A.I., Martynchik S.A., Glukhova E.A. Approaches to the evaluation of effectiveness and ways to stimulate the
publication activity in a major medical college // Higher education in Russia. 2014. №10. URL:
https://cyberleninka.ru/article/n/podhody-kotsenke-effektivnosti-i-sposoby-stimulirovaniyap u b l i k a t s i o n n o y - a k t i v n o s t i - v - k r u p n o m -
meditsinskom-vuze (retrieved 10.07.2018).
8. Van Eck, Nees Jan, and Ludo Waltman. “CitNetExplorer: A new software tool for analyzing and visualizing citation networks.” Journal of
Informetrics 8.4 (2014): 802-823.
9. Pearce, Joshua M. “How to Perform a Literature Review with Free and Open Source Software.” Practical Assessment, Research & Evaluation
23.8 (2018): 2. URL: https://research.aalto.fi/files/21756617/ELEC_Pearce_How_to_perform_PaRE.pdf (retrieved 10.07.2018).
10. Mingers, John and Loet Leydesdorff. “A review of theory and practice in scientometrics.” European Journal of Operational Research
246.1 (2015): 1-19. URL: https://arxiv.org/ftp/ arxiv/papers/1501/1501.05462.pdf (retrieved 10.07.2018).
11. Ulanin S.E. Virtual research environment // Bulletin of the State University of Management. 2017. №2. URL: https://cyberleninka.ru/article/n/
virtualnaya-nauchno-issledovatelskaya-sreda (retrieved 11.07.2018).
12. K. Bulatov, V.V. Arlazarov, T. Chernov, O. Slavin and D. Nikolaev. “Smart IDReader: Document Recognition in Video Stream,” 2017 14th IAPR
International Conference on Document Analysis and Recognition (ICDAR), Kyoto, 2017, pp. 39-44. doi: 10.1109/ICDAR.2017.347
13. A. Zhukovsky et al. “Segments Graph-Based Approach for Document Capture in a Smartphone Video Stream,” 2017 14th IAPR International
Conference on Document Analysis and Recognition (ICDAR), Kyoto, 2017, pp. 337-342. doi: 10.1109/ICDAR.2017.63
14. T.S. Chernov, N.P. Razumnuy, A.S. Kozharinov, D.P. Nikolaev and V.V. Arlazarov. “Image quality assessment for video stream recognition systems,”
Proc. SPIE 10696, Tenth International Conference on Machine Vision (ICMV 2017), 106961U, pp. 1-8, 2018, DOI: 10.1117/12.2309628.
15. D. Ilin, E. Limonova, V. Arlazarov and D. Nikolaev. “Fast Integer Approximations In Convolutional Neural Networks Using Layer-By-Layer Training,” Proceedings SPIE 10341, Ninth
International Conference on Machine Vision (ICMV 2016), 103410Q, pp. 1-5, 2017, DOI: 10.1117/12.2268722.
16. V.V. Arlazarov, O.A. Slavin, A.V. Uskov and I.M. Yanishevskiy. “Modelling the flow of character recognition results in video stream,” Bulletin of
the South Ural State University. Ser. Mathematical Modelling, Programming & Computer Software, vol. 11, no 2, pp. 14-28, 2018.
17. D. Abulkhanov, I. Konovalenko, D. Nikolaev, A. Savchik, E. Shvets and D. Sidorchuk. “Neural Network-based Feature Point Descriptors for
Registration of Optical and SAR Images,” Proc. SPIE 10696, Tenth International Conference on Machine Vision (ICMV 2017), 106960L, pp. 1-8,
2018, DOI: 10.1117/12.2310085.
18. Ingacheva A., Nikolaev D., Khanipov T., Chukalina M. Algebraic reconstruction of the hardware function of the blurred image along the
brightness profiles of object boundaries // Sensory systems. – 2018. – Vol. 32. – No. 1. – P. 67-72. – DOI: 10.7868 / S0235009218010109.
19. T.S. Chernov, S.I. Kolmakov and D.P. Nikolaev. “An algorithm for detection and phase estimation of protective elements periodic lattice on
document image,” Pattern Recognition and Image Analysis, vol. 27, no 1, pp. 53-65, 2017, DOI: 10.1134/S1054661817010023.
 

2024-74-1
2023-73-4
2023-73-3
2023-73-2

© ФИЦ ИУ РАН 2008-2018. Создание сайта "РосИнтернет технологии".