Computer Science ›› 2013, Vol. 40 ›› Issue (Z11): 366-368.

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Human-centric Urban Transportation Multimedia Surveillance Method

YANG Tao,WANG Yong-gang,HU Jian-bin,GONG Bin and CHEN Zhong   

  • Online:2018-11-16 Published:2018-11-16

Abstract: With the rapid growth of the vehicles on the road,the urban transportation multimedia surveillance has become a very hot topic.Human operators remotely monitor the image scenes captured by the cameras can effectively monitor only four camera views.The event-false-rate would be very high in this traditional way.RFID is a very feasible technology to identify an item based on radio frequency transmission and it can be also used to track and detect a wide variety of objects,especially high-speed moving vehicles.Human-centric CCTV surveillance system is also another hot technology that can be used to help detect human’s attention in the CCTV views for important events.To implement the moving vehicle surveillance system in big cities practically,we propose a RFID-Vehicle-Tag,Event assisted and Human-centric urban transportation surveillance method.The method has two major features:1.the method computes the human operator’s attention in the CCTV views to automatically determine the importance of events captured by the respective cameras.2.The method combined the Human-centric CCTV surveillance tech.and the RFID tech.to improve event identification rate evidently.The method can be used efficiently by the system operators to track and detect events in moving vehicles easily.

Key words: Human-centric,CCTV,RFID,Transportation event

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