Vehicular Movement Tracking by Fuzzy C-means Clustering of Optical Flow Vectors

Patrick Matthew J. Chan, John Anthony C. Jose, A. Bandala, E. Dadios
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Abstract

Vehicle Tracking and Detection has many useful applications, ranging from Automated Parking Management, to a huge-scale Automated Traffic Violator Apprehension System. For vehicle tracking which this study focuses on, it proposes the use of optical flow for identifying movement of particles, as well as Fuzzy C-means clustering on optical flow output, in order to separate disconnected moving vehicles from one another. By the end of the study, the proposed algorithm made use of the previous vehicle count from the detection algorithm and was able to successfully identify the location of the different vehicles within the frame.
基于光流矢量模糊c均值聚类的车辆运动跟踪
车辆跟踪和检测有许多有用的应用,从自动停车管理到大规模的自动交通违规者逮捕系统。对于本研究重点关注的车辆跟踪,提出利用光流识别粒子的运动,并利用光流输出的模糊c均值聚类,将不相连的移动车辆相互分离。在研究结束时,所提出的算法利用了之前检测算法中的车辆计数,并能够成功地识别出框架内不同车辆的位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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