刘斯斯

副教授 硕士生导师

入职时间:2017-10-31

所在单位:交通运输工程学院

职务:铁路工程装备研究所副所长

学历:研究生(博士)毕业

办公地点:中南大学铁道学院交通楼412

性别:女

联系方式:scarlett.liu@csu.edu.cn

学位:博士学位

在职信息:在职

毕业院校:澳大利亚新南威尔士大学(TOP19)

学科:机械工程
计算机科学与技术
交通运输工程

曾获荣誉:

2023-05-18  当选:  2023年中南大学学习党的二十大精神知识竞赛优秀个人奖

2021-10-01  当选:  主创主讲的本科生专业课程《机器人视觉与应用》2021年被评为湖南省省级一流线上课程,2022 年入选推送国家高等教育智慧教育平台一流课程

2019-10-11  当选:  中南大学交通运输工程学院“三十佳”教学竞赛 一等奖

2018-10-04  当选:  亚太地区女性工程师提名奖

当前位置: 中文主页 >> 论文成果

A Lightweight LiDAR-Camera Sensing Method of Obstacles Detection and Classification for Autonomous Rail Rapid Transit

发布时间:2022-08-09

点击次数:

影响因子:9.55

DOI码:10.1109/TITS.2022.3194553

发表刊物:IEEE Transactions on Intelligent Transportation Systems

关键字:LiDAR and RGB camera, data fusion, autonomous rail rapid transit, point cloud classification

摘要:Detecting obstacles accurately is a vital part of realizing autonomous driving. But utilizing single sensors, for example, RGB camera or LiDAR itself, is difficult to meet the needs of autonomous driving under the condition of sparse environmental sensing data. In contrast, equipments that can collect data in large quantities are expensive and difficult to be utilized in practical applications. Hence, under the premise of ensuring low application costs, the difficult task is to obtain high-precision three-dimensional information of obstacles in real-time from sparse data. To overcome this problem, a real-time detection technique that combines LiDAR data and image information for obstacles detection is proposed in this article. It can detect vehicles close to the ART in sparse data in real-time. The sparse point cloud is de-noised initially and the ground is separated from the initial cloud data. The remained cloud, which includes surrounding vehicles, are processed by the clustering algorithm according to the structural relationship and scanning mechanism of the LiDAR. Then the processed LiDAR data is fused with the classification information generated from images based on a neural network to locate suspicious obstacles. The ratio values between the central values of vehicles and image width are obtained in the image coordinate system. Then the category information and ratio values are mapped on the processed LiDAR clusters during ART operation. The method is tested and verified in the real field. The evaluation results show that the proposed method can achieve an average accuracy of 85.5% for obstacle classification with a cost-effective sensing suit.

备注:IEEE Transactions on Intelligent Transportation Systems是智能交通系统领域top期刊,中科院大类分区一区,CCF B类期刊,最新的IF为9.55。属于交通领域顶刊。

合写作者:李超, 宇文天, 万政良

第一作者:刘斯斯

论文类型:期刊论文

通讯作者:罗意平

卷号:23

期号:12

页面范围:23043-23058

是否译文:

收录刊物:SCI

下一条: 基于 ROS 的动车组智能巡检平台