Smart City Gnosys

Smart city article details

Title Action Detection Of Objects Devices Using Deep Learning In Iot Applications
ID_Doc 6094
Authors Rustemli S.; Alani A.Y.B.; Şahin G.; van Sark W.
Year 2025
Published Analog Integrated Circuits and Signal Processing, 123, 1
DOI http://dx.doi.org/10.1007/s10470-025-02350-y
Abstract Internet of Things (IoT) technology is the communication and communication of smart technological devices with each other. However, with the development of the Internet of Things (IoT), the number of smart applications and interconnected devices is increasing day by day. Deep Learning (DL) method has become necessary to process the large amount of raw data collected and to further improve intelligence and application capabilities. It is seen that the majority of researchers focus on action detection. Standard Deep Learning techniques are difficult to use in IoT devices as Deep Learning applications require high CPU, RAM and storage. In this study, an action detection technique has been developed directly on the edge device by enabling the use of deep learning techniques in IoT devices. This technique, as a representation of neural networks, divides it into on-board computers. Visual action detection is one of the critical components of a smart city. High processing capacity and storage requirements severely limit comprehensive and precise monitoring within the IoT and edge computing framework. The structure proposed in this paper suggests the deployment of micro deep learning algorithms to the latest IoT and embedded devices, including the utilisation of minimal computing resources such as processor, power and memory, with a contribution to IoT and embedded device activities in action detection. The systematic analysis shows that many IoT devices can be applied to the proposed optimisation design. The proposed model is much smaller in size than existing models. © The Author(s) 2025.
Author Keywords Action detection; Deep learning; Edge computing; Embedded devices; IoT; Smart city


Similar Articles


Id Similarity Authors Title Published
17877 View0.906Diwan T.; Tembhurne J.V.; Jain T.K.; Jain P.Deep Learning For IotInternet of Things, Part F1851 (2024)
32139 View0.896Elhanashi A.; Dini P.; Saponara S.; Zheng Q.Integration Of Deep Learning Into The Iot: A Survey Of Techniques And Challenges For Real-World ApplicationsElectronics (Switzerland), 12, 24 (2023)
30732 View0.892Amine M.S.; Nada F.A.; Hosny K.M.Improved Model For Intrusion Detection In The Internet Of ThingsScientific Reports, 15, 1 (2025)
17919 View0.886Dankan 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)
34139 View0.88Selvam R.; Velliangiri S.Iotsdl: Internet Of Things Security For Deep Learning Techniques-A Research Perspectives2023 International Conference on Computer Communication and Informatics, ICCCI 2023 (2023)
6497 View0.88Goyal H.R.; Husain S.O.; Dixit K.K.; Boob N.S.; Reddy B.R.; Kumar J.; Sharma S.Advanced Deep Learning Approaches For Real-Time Anomaly Detection In Iot EnvironmentsProceedings of International Conference on Contemporary Computing and Informatics, IC3I 2024 (2024)
5144 View0.878Liao H.; Murah M.Z.; Hasan M.K.; Aman A.H.M.; Fang J.; Hu X.; Khan A.U.R.A Survey Of Deep Learning Technologies For Intrusion Detection In Internet Of ThingsIEEE Access, 12 (2024)
38560 View0.877AL 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)
8761 View0.876Khalifa 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)
33508 View0.876Saini K.S.; Chaudhary S.Investigation On Attack Detection In Iot Networks: A Study And Analysis Of The Existing Machine Learning And Deep Learning Techniques3rd International Conference on Intelligent Data Communication Technologies and Internet of Things, IDCIoT 2025 (2025)