Vehicle Tracking Using Particle Filter for Parking Management System

K. Teo, R. Chin, N. K. Rao, F. Wong, W. L. Khong
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引用次数: 3

Abstract

Increment of on-road vehicles has urged public venues to provide visitors with a larger area of parking space. As the parking area grew larger for example in a hyper mall, a well-organized parking management system is necessary to assist drivers in locating parking position. Besides, it can also help the management team to monitor vehicle flow in the parking lot. Vehicle tracking plays an important role to the parking management system, as accurate tracking result will lead to a more efficient management system. Among commercially available sensors, video sensor has been commonly deployed in the parking area due to its ability in obtaining a wide range of vehicle information. However, images captured using video sensors are limited under situations where vehicles are undergoing occlusion and maneuvering incidents. This will cause tracking error therefore affecting the performance of the parking management system. Particle filter has been proven as one of the promising techniques to track vehicle under disturbances. Therefore, particle filter is proposed to track vehicle under occlusion and maneuvering incidents in this study. Experimental results show that the particle filter is able to track a target vehicle under different disturbances.
基于粒子滤波的停车管理系统车辆跟踪
道路车辆的增加,促使公众场地必须为游客提供更大面积的泊车位。随着停车场面积的扩大,例如在一个超级购物中心,一个组织良好的停车管理系统是必要的,以帮助司机找到停车位置。此外,它还可以帮助管理团队监控停车场的车辆流量。车辆跟踪在停车场管理系统中起着重要的作用,准确的跟踪结果将提高管理系统的效率。在商用传感器中,视频传感器由于能够获取广泛的车辆信息而被广泛应用于停车场。然而,使用视频传感器捕获的图像在车辆发生遮挡和机动事件的情况下是有限的。这将造成跟踪误差,从而影响停车场管理系统的性能。粒子滤波是一种很有前途的车辆跟踪技术。因此,本研究提出了粒子滤波来实现遮挡和机动事件下的车辆跟踪。实验结果表明,该粒子滤波器能够在不同的干扰条件下对目标车辆进行跟踪。
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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