Journal of Multimedia, Vol 7, No 3 (2012), 223-230, Jul 2012
doi:10.4304/jmm.7.3.223-230

A Survey on Video-based Vehicle Behavior Analysis Algorithms

Jian Wu, Zhi-ming Cui, Jian-ming Chen, Guang-ming Zhang

Abstract


Analysis of the Vehicle Behavior is mainly to analyze and identify the vehicles’ motion pattern, and describe it by the use of natural language. It is a considerable challenge to analyze and describe the vehicles’ behavior in a complex scene. This paper first hackles the development history of the intelligent transportation system and analysis of vehicles’ behavior, and then conducts an in-depth analysis of current situation of vehicle behavior analysis from the video processing, video analysis and video understanding, summarizes the achieved results and the key technical problems, and prospects the future development of vehicle behavior analysis.


Keywords


vehicle behavior analysis; vehicle detection; vehicle tracking; behavior understanding

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