Publication | Closed Access
Video Surveillance on Mobile Edge Networks—A Reinforcement-Learning-Based Approach
42
Citations
32
References
2020
Year
EngineeringMachine LearningVideo ProcessingBiometricsVideo SurveillanceVisual SurveillanceMultimedia ThingsImage AnalysisReinforcement Learning (Computer Engineering)Pattern RecognitionCamera NetworkInternet Of ThingsEdge IntelligenceMachine VisionComputer EngineeringMobile ComputingComputer ScienceComputer VisionEdge ComputingVideo Surveillance SystemsMobile Edge ComputingVideo Transmission
Video surveillance systems or Internet of Multimedia Things are playing a more and more important role in our daily life. To obtain useful surveillance information timely and accurately, not only image recognition algorithms but also computing and communication resources can be bottlenecks of the whole system. In this article, taking face recognition application as an example, we study how to build video surveillance systems by utilizing mobile edge computing (MEC), one of the 5G's key technologies. Specifically, to achieve high recognition accuracy and low recognition time, we design image recognition algorithms for both the camera sensor and MEC server, and utilize the action-value methods to train actions of the system by jointly optimizing offloading decision and image compression parameters. The experimental results show the advantages of the proposed system for enabling communication environment-adaptive, efficient, and intelligent video surveillance.
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