Smart City Gnosys

Smart city article details

Title An Intelligent Video Surveillance System Using Edge Computing Based Deep Learning Model
ID_Doc 8570
Authors Singh R.P.; Srivastava H.; Gautam H.; Shukla R.; Dwivedi R.K.
Year 2023
Published IDCIoT 2023 - International Conference on Intelligent Data Communication Technologies and Internet of Things, Proceedings
DOI http://dx.doi.org/10.1109/IDCIoT56793.2023.10053404
Abstract With the rapid increase in global data volume, various factors like low latency, high efficiency video surveillance is impossible to achieve in a centralized cloud computing model. Therefore, this paper proposes a distributed computing model for intelligent video surveillance system. This paper presents a smart video surveillance system which can execute Deep Learning algorithms in low power consumption embedded de vices. The proposed intelligent video surveillance system based on the edge computing consists of multi-camera for smart cities and homes. In general, the sending of original video surveillance data to the centralized computing model is too much time consuming and this will keep us far away to achieve our objective of real time data transmission so through this paper the edge computing technique is proposed, the idea is perform computation locally at the edge devices and then the computed data will be sent to the centralized computing model which is capable of performing the real time video surveillance by using the deep learning algorithm. © 2023 IEEE.
Author Keywords Deep Learning; Edge Computing; Multi-layer Intelligence Video Surveillance (MIVS); Object Detection; Video Surveillance


Similar Articles


Id Similarity Authors Title Published
21740 View0.882Choi Y.W.; Baek J.W.Edge Camera System Using Dee P Learning Method With Model Compression On Embedded ApplicationsDigest of Technical Papers - IEEE International Conference on Consumer Electronics, 2020-January (2020)
17919 View0.881Dankan Gowda V.; Vishnu Tej Y.; Potharaju V.S.; Jakkidi P.R.; Sharma A.; Sudhakar Reddy N.Deep Learning Techniques For Image Recognition In Iot-Enabled Surveillance Systems2024 Asian Conference on Intelligent Technologies, ACOIT 2024 (2024)
20701 View0.879Chen Y.-Y.; Lin Y.-H.; Hu Y.-C.; Hsia C.-H.; Lian Y.-A.; Jhong S.-Y.Distributed Real-Time Object Detection Based On Edge-Cloud Collaboration For Smart Video Surveillance ApplicationsIEEE Access, 10 (2022)
991 View0.875Dharan A.M.; Mukhopadhyay D.A Comprehensive Survey On Machine Learning Techniques To Mobilize Multi-Camera Network For Smart SurveillanceInnovations in Systems and Software Engineering, 21, 1 (2025)
22694 View0.864Martin J.; Cantero D.; González M.; Cabrera A.; Larrañaga M.; Maltezos E.; Lioupis P.; Kosyvas D.; Karagiannidis L.; Ouzounoglou E.; Amditis A.Embedded Vision Intelligence For The Safety Of Smart CitiesJournal of Imaging, 8, 12 (2022)
5203 View0.859Myagmar-Ochir Y.; Kim W.A Survey Of Video Surveillance Systems In Smart CityElectronics (Switzerland), 12, 17 (2023)
40272 View0.858Badidi E.; Moumane K.; Ghazi F.E.Opportunities, Applications, And Challenges Of Edge-Ai Enabled Video Analytics In Smart Cities: A Systematic ReviewIEEE Access, 11 (2023)
21807 View0.858Skadins A.; Ivanovs M.; Rava R.; Nesenbergs K.Edge Pre-Processing Of Traffic Surveillance Video For Bandwidth And Privacy Optimization In Smart CitiesProceedings of the Biennial Baltic Electronics Conference, BEC, 2020-October (2020)
14727 View0.855Pasandi H.B.; Nadeem T.Collaborative Intelligent Cross-Camera Video Analytics At Edge: Opportunities And ChallengesAIChallengeIoT 2019 - Proceedings of the 2019 International Workshop on Challenges in Artificial Intelligence and Machine Learning for Internet of Things (2019)
3217 View0.852Mendieta M.; Neff C.; Lingerfelt D.; Beam C.; George A.; Rogers S.; Ravindran A.; Tabkhi H.A Novel Application/Infrastructure Co-Design Approach For Real-Time Edge Video AnalyticsConference Proceedings - IEEE SOUTHEASTCON, 2019-April (2019)