Computer Science ›› 2017, Vol. 44 ›› Issue (Z6): 342-347.doi: 10.11896/j.issn.1002-137X.2017.6A.078

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Data Surge Models for Public Security Data Processing and Its Application in Unity of Security System

GAO Di, XU Zheng and LIU Yun-huai   

  • Online:2017-12-01 Published:2018-12-01

Abstract: In recent years,with the construction and development of the intelligent City project and safe city,video surveillance systems have become a efficient way of public security authority security control,combating crime,and preventing emergency incidents.With the rapid development of network communication technology and mobile intelligent terminals (such as smart phones,tablets,etc),the rapid proliferation of smart terminals has carried sensing devices such as video surveillance,audio,speed sensors and so on.Video equipment parts in high-end smart terminal can carry over parts of the lo-wer end of video surveillance equipment.Intelligent terminal mass popularity makes building a people-centric sensing and computing networks possible in order to achieve the perfect fusion of the physical world and the digital world.Effective integration of different information spaces of information can enhance public safety and effective sensing and detection.According to the multi-source information fusion of public safety incidents,surge of data model was proposed,and the model was defined.And witness in one system by the model was verified.The unity of witness systems have been developed in several Beijing bus stations and train stations.

Key words: Public safety,Data fusion,Surge models

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