Authors :
Santhosh K; Gary D; Chris C; Samyek N
Volume/Issue :
Volume 10 - 2025, Issue 2 - February
Google Scholar :
https://tinyurl.com/2tn8zdhk
Scribd :
https://tinyurl.com/57cz8nnt
DOI :
https://doi.org/10.5281/zenodo.14849748
Abstract :
Multiple cameras feed their image analysis into this advanced security system which unites alarm activation
with surveillance functionality and automated real-time security verification. The system functionally reacts to pre-setup
scenarios including situations of break-ins and crimes as well as human supervision needs. The algorithm framework for
visual content analysis (VCA) supports this concept. Our algorithms require changes with specific modifications to achieve
requirements targets. A video processing framework detects foreground elements from background and performs
localization while extracting objects and tracking them. Multiple cameras provide the foundation for the recognition
process which relies on limited image sets and vector compositions. This system offers effective superiority over traditional
surveillance methods while maintaining enhanced performance.
Keywords :
Smart Surveillance, Object Recongnition, Visual Content Analysis, Citywide Surveillance, Video Processing.
References :
- A. Rahimpour, A. Taalimi, J. Luo, and H. Qi, "Distributed object recognition in smart camera networks," pp. 669-673: IEEE.
- K. Abas, C. Porto, and K. J. C. Obraczka, "Wireless smart camera networks for the surveillance of public spaces," vol. 47, no. 5, pp. 37-44, 2014.
- W.-T. Chen, P.-Y. Chen, W.-S. Lee, and C.-F. Huang, "Design and implementation of a real time video surveillance system with wireless sensor networks," in VTC Spring 2008-IEEE Vehicular Technology Conference, 2008, pp. 218-222: IEEE.
- T. Zhang, A. Chowdhery, P. V. Bahl, K. Jamieson, and S. Banerjee, "The design and implementation of a wireless video surveillance system," in Proceedings of the 21st Annual International Conference on Mobile Computing and Networking, 2015, pp. 426-438: ACM.
- F. Bashir and F. Porikli, "Performance evaluation of object detection and tracking systems," in Proceedings 9th IEEE International Workshop on PETS, 2006, pp. 7-14.
- K.-L. Su, S.-H. Chia, S.-V. Shiau, J.-H. J. A. L. Guo, and Robotics, "Developing a module-based security system for an intelligent home," vol. 14, no. 2, p. 242, 2009.
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- E. G. Jaspers et al., "Candela-Storage, Analysis and Retrieval of Video Content in Distributed Systems: Real-Time Video Surveillance and Retrieval," in 2005 IEEE International Conference on Multimedia and Expo, 2005, pp. 1553-1556: IEEE.
- D. Frejlichowski, K. Gościewska, P. Forczmański, and R. Hofman, "“SmartMonitor”—An Intelligent Security System for the Protection of Individuals and Small Properties with the Possibility of Home Automation," Sensors, vol. 14, no. 6, pp. 9922-9948, 2014.
- V. Casola, M. Esposito, F. Flammini, N. Mazzocca, and C. Pragliola, "Performance evaluation of video analytics for surveillance on-board trains," in International Conference on Advanced Concepts for Intelligent Vision Systems, 2013, pp. 414-425: Springer.
Multiple cameras feed their image analysis into this advanced security system which unites alarm activation
with surveillance functionality and automated real-time security verification. The system functionally reacts to pre-setup
scenarios including situations of break-ins and crimes as well as human supervision needs. The algorithm framework for
visual content analysis (VCA) supports this concept. Our algorithms require changes with specific modifications to achieve
requirements targets. A video processing framework detects foreground elements from background and performs
localization while extracting objects and tracking them. Multiple cameras provide the foundation for the recognition
process which relies on limited image sets and vector compositions. This system offers effective superiority over traditional
surveillance methods while maintaining enhanced performance.
Keywords :
Smart Surveillance, Object Recongnition, Visual Content Analysis, Citywide Surveillance, Video Processing.