Fusion of laser and radar sensor data with a sequential Monte Carlo Bayesian occupancy filter

Dominik Nuss, Ting Yuan, Gunther Krehl, M. Stuebler, Stephan Reuter, K. Dietmayer
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引用次数: 57

Abstract

Occupancy grid mapping is a well-known environment perception approach. A grid map divides the environment into cells and estimates the occupancy probability of each cell based on sensor measurements. An important extension is the Bayesian occupancy filter (BOF), which additionally estimates the dynamic state of grid cells and allows modeling changing environments. In recent years, the BOF attracted more and more attention, especially sequential Monte Carlo implementations (SMC-BOF), requiring less computational costs. An advantage compared to classical object tracking approaches is the object-free representation of arbitrarily shaped obstacles and free-space areas. Unfortunately, publications about BOF based on laser measurements report that grid cells representing big, contiguous, stationary obstacles are often mistaken as moving with the velocity of the ego vehicle (ghost movements). This paper presents a method to fuse laser and radar measurement data with the SMC-BOF. It shows that the doppler information of radar measurements significantly improves the dynamic estimation of the grid map, reduces ghost movements, and in general leads to a faster convergence of the dynamic estimation.
融合激光和雷达传感器数据与顺序蒙特卡罗贝叶斯占用滤波器
占用网格映射是一种众所周知的环境感知方法。网格地图将环境划分为单元,并根据传感器测量值估计每个单元的占用概率。一个重要的扩展是贝叶斯占用过滤器(BOF),它可以额外估计网格单元的动态状态,并允许对变化的环境进行建模。近年来,BOF越来越受到人们的关注,特别是顺序蒙特卡罗实现(SMC-BOF),它需要较少的计算成本。与经典的目标跟踪方法相比,一个优点是任意形状的障碍物和自由空间区域的无对象表示。不幸的是,关于基于激光测量的BOF的出版物报告说,代表大的、连续的、静止的障碍物的网格单元经常被误认为是以自我车辆的速度移动(幽灵运动)。本文提出了一种用SMC-BOF融合激光和雷达测量数据的方法。结果表明,雷达测量的多普勒信息显著改善了网格图的动态估计,减少了鬼影运动,总体上使动态估计的收敛速度更快。
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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