Volume 15 (2024) . Issue 4 (63) . Paper No. 5 (452)

Artificial intelligence and machine learning

Research Article

Neural network classification of videos based on a small number of frames

Alexander Vladimirovich Smirnov1Correspondent author, Dmitry Denisovich Parfenov2, Igor Petrovich Tishchenko3

1,3Ailamazyan Program Systems Institute of RAS, Ves'kovo, Russia
2Admiral Makarov State University of Maritime and Inland Shipping, St. Petersburg, Russia
1 Alexander Vladimirovich Smirnov — Correspondent author asmirnov_1991@mail.ru

Abstract. The article proposes a method for neural network classification of short videos. The classification problem is considered from the point of view of reducing the number of operations required to categorize videos. The proposed solution consists of using a small number of frames (no more than 10) to perform classification using the lightest neural network architecture of the ResNet family of models. As part of the work, a proprietary training dataset was created, consisting of three classes: “animals”, “cars” and “people”. As a result, a classification accuracy of 79% was obtained, a database of classified videos was formed, and an application with GUI elements was developed for interacting with the classifier and viewing the results. (In Russian).

Keywords: Video classification, dataset, neural networks, graphical user interface

MSC-20202020 Mathematics Subject Classification 68T10; 68T45MSC-2020 68-XX: Computer science
MSC-2020 68Txx: Artificial intelligence
MSC-2020 68T10: Pattern recognition, speech recognition

For citation: Alexander V. Smirnov, Dmitry D. Parfenov, Igor P. Tishchenko. Neural network classification of videos based on a small number of frames. Program Systems: Theory and Applications, 2024, 15:4, pp. 79–96. (In Russ.). https://psta.psiras.ru/2024/4_79-96.

Full text of article (PDF): https://psta.psiras.ru/read/psta2024_4_79-96.pdf.

The article was submitted 01.10.2024; approved after reviewing 23.10.2024; accepted for publication 04.11.2024; published online 20.11.2024.

© Smirnov A. V., Parfenov D. D., Tishchenko I. P.
2024
Editorial address: Ailamazyan Program Systems Institute of the Russian Academy of Sciences, Peter the First Street 4«a», Veskovo village, Pereslavl area, Yaroslavl region, 152021 Russia; Phone: +7(4852) 695-228; E-mail: ; Website:  http://psta.psiras.ru
© Ailamazyan Program System Institute of Russian Academy of Science (site design) 2010–2024 The text of CC-BY-4.0 license