Framework for cloud-video monitoring via IP-cameras with easily accessible control for users

Main Article Content

Анастасия Сергеевна Гришина
Влада Владимировна Кугуракова

Abstract

The article describes the main points of the process of creating a system that allows you to manage several cameras simultaneously while saving data on the server. The system has the ability to connect IP cameras and cameras on mobile devices, provide access to other users, and also allows you to watch video online. Hotspots in the architecture of the system have been identified and described. A separate Angular module was developed and design patterns were used. The interaction of the system with the user is described. The stages of further development of cloud video monitoring through ip-cameras with easily accessible control for the end-user are offered.

Article Details

Author Biographies

Анастасия Сергеевна Гришина

Bachelor’s degree of the Higher School of ITIS Kazan (Privolzhsky) Federal University. Research interests include video stream processing, cloud video monitoring, recognition of objects and other information in video sequences.

Влада Владимировна Кугуракова

Senior Lecturer of Higher School of Information Technology and Information Systems, Head of Laboratory “Virtual and simulation technologies in biomedicine”. Research interests include realism of visualization and simulation, immersion VR.

References

1. Choi K.I., Lee J.H., Lee B.C. A Distributed Cloud Based Video Storage System with Privacy Protection // Int. Conf. on Advanced Communication Technology – ICACT 2017. P. 830–835.
2. Sandar N.M., Chaisiri S., Yongchareon S., Liesaputra V. Cloud-based Video Monitoring Framework: An Approach Based on Software-defined Networking for Addressing Scalability Problems // Lecture Notes in Computer Science (including Subseries Lecture Notes in Artificial Intelligence and Lecture Notes in Bioinformatics). 2015. V. 9051.
3. Egilmez H.E., Dane S.T., Bagci K.T., Tekalp A.M., Koc Univ. In Signal & Information Processing Association Annual Summit and Conference // APSIPA ASC, 2012 Asia-Pacific – Istanbul, Turkey, 2012. P. 1–8.
4. FFMPEG. https://ffmpeg.org/.
5. Nginx-rtmp-module. https://github.com/arut/nginx-rtmp-module.
6. AngularJS. https://angularjs.org/.
7. Laravel. https://github.com/laravel/framework.
8. Artisan. http://laravel.su/docs/5.0/artisan.
9. PostgreSQL. https://www.postgresql.org/.
10. Dasu A., Panchanathan S. A Survey of Media Processing Approaches. Circuits and Systems for Video Technology // IEEE Transactions on. 2002. V. 12, No 8. P. 633–645.
11. Connolly J. F., Granger E., Sabourin R. An Adaptive Classification System for Video-based Face Recognition // Information Sciences. 2012. V. 192. P. 50–70.
12. Burghardt T., Cali´c J. Analysing Animal Behaviour in Wildlife Videos Using ´ Face Detection and Tracking // IEE Proceedings-Vision, Image and Signal Processing. 2006. V. 153, No 3. P. 305–312.
13. Du S., Ibrahim M., Shehata M., Badawy W. Automatic License Plate Recognition (ALPR): A State-of-the-art review // Circuits and Systems for Video Technology. IEEE Transactions on. 2013. V. 23, No 2. P. 311–325.
14. Lai C.L., Yang J.C., Chen Y.H. A Real Time Video Processing Based Surveillance System for Early Fire and Flood Detection // Instrumentation and Measurement Technology Conference Proceedings. 2007. IMTC 2007. IEEE. P. 1–6.


Most read articles by the same author(s)

1 2 3 4 > >>