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http://dx.doi.org/10.13067/JKIECS.2018.13.1.169

Implementation of Smart Video Surveillance System Based on Safety Map  

Park, Jang-Sik (Dept. Electronic Engineering, Kyungsung University)
Publication Information
The Journal of the Korea institute of electronic communication sciences / v.13, no.1, 2018 , pp. 169-174 More about this Journal
Abstract
There are many CCTV cameras connected to the video surveillance and monitoring center for the safety of citizens, and it is difficult for a few monitoring agents to monitor many channels of videos. In this paper, we propose an intelligent video surveillance system utilizing a safety map to efficiently monitor many channels of CCTV camera videos. The safety map establishes the frequency of crime occurrence as a database, expresses the degree of crime risk and makes it possible for agents of the video surveillance center to pay attention when a woman enters the crime risk area. The proposed gender classification method is processed in the order of pedestrian detection, tracking and classification with deep training. The pedestrian detection and tracking uses Adaboost algorithm and probabilistic data association filter, respectively. In order to classify the gender of the pedestrian, relatively simple AlexNet is applied to determine gender. Experimental results show that the proposed gender classification method is more effective than the conventional algorithm. In addition, the results of implementation of intelligent video security system combined with safety map are introduced.
Keywords
Safty Map; Video Surveillance; Adaboost Algorithm; Probablistic Data Association; Deep Learning;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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