Smart City Gnosys

Smart city article details

Title Iot Based Smart Surveillance Monitoring By Using Model-Based Human Action Recognition Design
ID_Doc 33720
Authors Ebrahimy A.R.; Naghshnilchi A.R.; Monadjemi A.H.; Saeidehsani M.
Year 2021
Published Proceedings of 2021 5th International Conference on Internet of Things and Applications, IoT 2021
DOI http://dx.doi.org/10.1109/IoT52625.2021.9469601
Abstract In recent years, with the rapid development in IP camera usage, massive video surveillance data are produced at an unprecedented speed. IP camera is one of the most important elements in In Internet of things (IoT) and smart cities, in this era. IoT Based Smart Surveillance provides resources over the Internet and allows a plethora of applications to be deployed to provide services for different applications. Traditional solutions to deal with the big video data would require a large amount of computing and storage resources. one of the major bottleneck being faced the computational cost of spatio-Temporal deep neural networks making them run as fast as their 2D counterparts while preserving accuracy on video recognition benchmarks. To this end, we present the new model-based human action recognition design. In this method we use fixed dimensional representation for actions in video clips of varying lengths to decrees computational complexes. This representation, simplify clustering and comparing between videos. In addition, the methods based on CNN usually need manual annotation at the beginning and the meaning of characteristics is an abstract wonder and subjective phenomenon and hence a manual annotation of attributes is highly inconsistent [1]. Anyhow our proposed smart surveillance system is unsupervised and don't need inconsistent manual annotation of video clips attributes. Many researchers believe smart surveillance system is a critical component of smart cities and can be a solid foundation for future applications in intelligent surveillance systems focuses on human action Recognition. © 2021 IEEE.
Author Keywords Gaussian mixture model; Human Action Recognition; smart cities; Smart Surveillance System; Unsupervised Feature Extraction


Similar Articles


Id Similarity Authors Title Published
33935 View0.888Aminiyeganeh K.; Coutinho R.W.L.; Boukerche A.Iot Video Analytics For Surveillance-Based Systems In Smart CitiesComputer Communications, 224 (2024)
17919 View0.887Dankan 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)
8761 View0.885Khalifa O.O.; Roubleh A.; Esgiar A.; Abdelhaq M.; Alsaqour R.; Abdalla A.; Ali E.S.; Saeed R.An Iot-Platform-Based Deep Learning System For Human Behavior Recognition In Smart City Monitoring Using The Berkeley Mhad DatasetsSystems, 10, 5 (2022)
7626 View0.88Llaurado-Fons J.M.; Martinez A.; Pujol-López F.A.; Mora H.An Architecture For Human Action Recognition In Smart Cities Video Surveillance SystemsSpringer Proceedings in Complexity (2021)
59481 View0.877Ardabili B.R.; Pazho A.D.; Noghre G.A.; Neff C.; Bhaskararayuni S.D.; Ravindran A.; Reid S.; Tabkhi H.Understanding Policy And Technical Aspects Of Ai-Enabled Smart Video Surveillance To Address Public SafetyComputational Urban Science, 3, 1 (2023)
51476 View0.875Sharma H.; Kanwal N.Smart Surveillance Using Iot: A Review; [Розумне Відеоспостереження За Допомогою Інтернету Речей: Огляд]Radioelectronic and Computer Systems, 2024, 1(109) (2024)
38560 View0.874AL Zamil, MGH; Samarah, S; Rawashdeh, M; Karime, A; Hossain, MSMultimedia-Oriented Action Recognition In Smart City-Based Iot Using Multilayer PerceptronMULTIMEDIA TOOLS AND APPLICATIONS, 78, 21 (2019)
52569 View0.874Srihari P.; Harikiran J.Spatio-Temporal Information For Action Recognition In Thermal Video Using Deep Learning ModelInternational Journal of Electrical and Computer Engineering Systems, 13, 8 (2022)
6094 View0.871Rustemli S.; Alani A.Y.B.; Şahin G.; van Sark W.Action Detection Of Objects Devices Using Deep Learning In Iot ApplicationsAnalog Integrated Circuits and Signal Processing, 123, 1 (2025)
991 View0.87Dharan 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)