3D Road Boundary Estimation using 3D LiDAR with Scanline-wise 1D Deep Feature and Particle Filtering

Yuta Nakayama, J. Miura
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引用次数: 2

Abstract

Recognizing road shape is one of the fundamental functions for outdoor navigation of mobile robots and vehicles. This function is crucial for safe control and used for autonomous navigation combined with global localization using maps or GNSS. This paper describes a method of estimating the 3D structure of road boundaries using a 3D LiDAR with a combination of scanline-wise 1D feature extraction and temporal filtering by particle filter. In outdoor environments, since the road shape changes not on a horizontal plane but three-dimensionally, we model the road boundary shape with a series of 3D segments and estimate its parameters repeatedly with the feature extraction and particle filter. The proposed method is tested in terms of the feature extraction performance and the applicability of autonomous navigation.
基于扫描线一维深度特征和粒子滤波的三维激光雷达道路边界估计
道路形状识别是移动机器人和车辆户外导航的基本功能之一。该功能对于安全控制至关重要,并用于结合使用地图或GNSS的全球定位的自主导航。本文介绍了一种利用三维激光雷达估计道路边界三维结构的方法,该方法结合了扫描线方向的一维特征提取和粒子滤波的时间滤波。在室外环境中,由于道路形状的变化不是在水平面上而是三维的,因此我们用一系列的三维段来建模道路边界形状,并通过特征提取和粒子滤波来重复估计其参数。从特征提取性能和自主导航的适用性方面对所提方法进行了测试。
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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