Abstract
AbstractConventional surveillance systems for preventing accidents and incidents do not identify 95% thereof after 22 min when one person monitors a plurality of closed circuit televisions (CCTV). To address this issue, while computer-based intelligent video surveillance systems have been studied to notify users of abnormal situations when they happen, it is not commonly used in real environment because of weakness of personal information leaks and high power consumption. To address this issue, intelligent video surveillance systems based on small devices have been studied. This paper suggests implement an intelligent video surveillance system based on embedded modules for intruder detection based on information learning, fire detection based on color and motion information, and loitering and fall detection based on human body motion. Moreover, an algorithm and an embedded module optimization method are applied for real-time processing. The implemented algorithm showed performance of 88.51% for intruder detection, 92.63% for fire detection, 80% for loitering detection and 93.54% for fall detection. The result of comparison before and after optimization about the algorithm processing time showed 50.53% of decrease, implying potential real-time driving of the intelligent image monitoring system based on embedded modules.
Publisher
Springer Science and Business Media LLC
Subject
Electrical and Electronic Engineering,Information Systems,Signal Processing
Reference46 articles.
1. H.J. Park, A study on monitoring system for an abnormal behaviors by object’s tracking. J Digit Contents Soc. 14(4), 589–596 (2013)
2. I.S. Chang et al., A study of scenario and trends in intelligent surveillance camera. J Korea Inst Intell Transp Syst. 8(4), 93–101 (2009)
3. W.J. Kim, CCTV market trends and forecasts. Electronic and Information Research Information Center (2011)
4. J.H. Kang, S.Y. Kwak, Loitering, sudden running and intruder detection for intelligent surveillance system. Korea Inf Sci Soc. 31(1), 353–355 (2012)
5. S.H. Hwang, S.B. Pan, Fall detection system using the open source hardware and RGB camera. J Korean Inst Inf Technol. 14(4), 19–24 (2016)
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