庄严

个人信息Personal Information

教授

博士生导师

硕士生导师

主要任职:Vice Dean of School of Control Science and Engineering

性别:男

毕业院校:大连理工大学

学位:博士

所在单位:控制科学与工程学院

学科:模式识别与智能系统. 控制理论与控制工程. 导航、制导与控制. 人工智能

办公地点:大连理工大学 创新园大厦 A611室

联系方式:办公电话:0411-84707581

电子邮箱:zhuang@dlut.edu.cn

扫描关注

论文成果

当前位置: 庄严中文主页 >> 科学研究 >> 论文成果

Outdoor Scene Understanding Based on Multi-Scale PBA Image Features and Point Cloud Features

点击次数:

论文类型:期刊论文

发表时间:2019-10-02

发表刊物:SENSORS

收录刊物:PubMed、EI、SCIE

卷号:19

期号:20

关键字:3D point cloud; outdoor scene understanding; mobile laser scanning

摘要:Outdoor scene understanding based on the results of point cloud classification plays an important role in mobile robots and autonomous vehicles equipped with a light detection and ranging (LiDAR) system. In this paper, a novel model named Panoramic Bearing Angle (PBA) images is proposed which is generated from 3D point clouds. In a PBA model, laser point clouds are projected onto the spherical surface to establish the correspondence relationship between the laser ranging point and the image pixels, and then we use the relative location relationship of the laser point in the 3D space to calculate the gray value of the corresponding pixel. To extract robust features from 3D laser point clouds, both image pyramid model and point cloud pyramid model are utilized to extract multiple-scale features from PBA images and original point clouds, respectively. A Random Forest classifier is used to accomplish feature screening on extracted high-dimensional features to obtain the initial classification results. Moreover, reclassification is carried out to correct the misclassification points by remapping the classification results into the PBA images and using superpixel segmentation, which makes full use of the contextual information between laser points. Within each superpixel block, the reclassification is carried out again based on the results of the initial classification results, so as to correct some misclassification points and improve the classification accuracy. Two datasets published by ETH Zurich and MINES ParisTech are used to test the classification performance, and the results show the precision and recall rate of the proposed algorithms.