Multi Sensor based Approach for Road Region Extraction for Autonomous Vehicles

M. RanjithRochan, K. AarthiAlagammai, J. Sujatha
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引用次数: 1

Abstract

Automatic road region extraction is an important component of intelligent and driverless vehicles towards providing smooth navigation. This paper presents a novel method of extracting road region using LiDAR and camera in coherence. The ground region is extracted from LiDAR while camera also gives input on the current scene in parallel. The data obtained from LiDAR and camera is mapped using trigonometric equations. A patch from the camera data is extracted and pixel values of the patch are sent to Gaussian Mixture Model-Expectation Maximization (GMM-EM) algorithm for training at periodic intervals. Based on this training, a drivable region is identified in every frame of the camera input. Thus, obtained drivable road region is further processed and is used in decision-making during navigation. The proposed system works efficiently on different kinds of roads with different lighting conditions and gives a good estimation of the drivable road region in presence of objects or obstacles.
基于多传感器的自动驾驶车辆道路区域提取方法
道路区域自动提取是实现智能无人驾驶车辆平稳导航的重要组成部分。提出了一种利用激光雷达和相机进行相干道路区域提取的新方法。地面区域从激光雷达中提取,同时相机也提供当前场景的并行输入。从激光雷达和相机获得的数据使用三角方程进行映射。从相机数据中提取一个patch,并将patch的像素值发送给高斯混合模型-期望最大化(GMM-EM)算法进行周期性训练。在此训练的基础上,在摄像机输入的每一帧中识别出一个可驱动区域。从而对得到的可行驶道路区域进行进一步处理,用于导航决策。该系统在不同光照条件下的不同道路上都能有效地工作,并能很好地估计存在物体或障碍物的可驾驶道路区域。
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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