Application of particle filter tracking algorithm in autonomous vehicle navigation

K. Li, G. Lin, L. Lee, J. Juang
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引用次数: 1

Abstract

The paper describes the design, implementation, and test of an autonomous vehicle navigation system using vehicle model and particle filter tracking algorithm. Typically, a vehicle navigation system comprises of real-time environment perception, vehicle localization, collision avoidance, path planning, and path following. In order to achieve the features for intelligent autonomous vehicle, a sensor suite of integrated inertial measurement unit (IMU), GNSS receiver, and incremental encoder is developed for vehicle position estimation. A map-aided path planning strategy is employed to generate a reference route. To this end, a UMI (User Machine Interface) is developed to facilitate the observation of a goal-oriented path tracking situation. The system utilizes particle filter algorithm to guide the vehicle following the planned path in terms of vehicle estimation control. The recursive particle filter is able to weight the cells and response the angle as well as estimated position information. All the sensors are integrated into an embedded computer platform and able to assess the autonomous driving capability. The test is conducted on campus by installing the sensor suite and embedded computer platform into an electricintegrated inertial measurement unit vehicle.
粒子滤波跟踪算法在自动驾驶汽车导航中的应用
本文介绍了一种基于车辆模型和粒子滤波跟踪算法的自动驾驶汽车导航系统的设计、实现和测试。典型的车辆导航系统包括实时环境感知、车辆定位、避碰、路径规划和路径跟踪。为了实现智能自动驾驶汽车的特点,开发了一套集成惯性测量单元(IMU)、GNSS接收机和增量编码器的车辆位置估计传感器套件。采用地图辅助路径规划策略生成参考路径。为此,开发了一个UMI(用户机器接口),以方便观察面向目标的路径跟踪情况。在车辆估计控制方面,系统采用粒子滤波算法引导车辆沿规划路径行驶。递归粒子滤波能够对细胞进行加权,并对角度和估计的位置信息做出响应。所有传感器都集成到嵌入式计算机平台中,能够评估自动驾驶能力。通过将传感器套件和嵌入式计算机平台安装到电集成惯性测量单元车辆中,在校园进行了测试。
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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