Visual Odometry Based Vehicle Lane-changing Detection

D. Salleh, E. Seignez, K. Kipli
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Abstract

Lane-changing detection is necessary for accurate positioning, to allow vehicle navigation system to generate more specific path planning. Lane-changing detection method in this paper is more of a deterministic task, proposed based on curve analysis obtained from visual odometry. From the visual odometry trajectory, we have the estimation of vehicle lateral/longitudinal position, yaw, and speed. We also used the road lane information from digital map provided by OpenStreetMap to narrow the lane-changing event possibility. The analysis is conducted on sequences from KITTI dataset that contains lane-changing scenarios to study the potential of lane-changing detection by using visual odometry trajectory curve. Cumulative sum and curve fitting methods were utilized for the lane-changing detection from visual odometry curve. The detection was conducted on several visual odometry approaches for comparison and system feasibility. Our analysis shows that trajectory generated by visual odometry is highly potential for a low-cost and effective lane-changing detection with 90.9% precision and 93.8% recall accuracy to complement more accurate routing service and safety application in Advanced Driver Assistance System.
基于视觉里程计的车辆变道检测
变道检测是精确定位的必要条件,可以让车辆导航系统生成更具体的路径规划。本文的变道检测方法更多的是一种确定性任务,它是基于视觉里程计得到的曲线分析提出的。从视觉里程计轨迹,我们有估计车辆的横向/纵向位置,偏航和速度。我们还利用OpenStreetMap提供的数字地图中的道路车道信息来缩小变道事件的可能性。对KITTI数据集中包含变道场景的序列进行分析,研究利用视觉里程计轨迹曲线检测变道的潜力。利用累积和法和曲线拟合法对视觉里程计曲线进行变道检测。为了比较和系统的可行性,对几种视觉里程计方法进行了检测。我们的分析表明,视觉里程计生成的轨迹在低成本、高效的变道检测方面具有很大的潜力,其准确率为90.9%,召回准确率为93.8%,可以为高级驾驶辅助系统提供更准确的路线服务和安全应用。
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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