TRB Pubsindex
Text Size:

Title:

Automatic Vehicle Classification using Roadside LiDAR Data

Accession Number:

01704838

Record Type:

Component

Availability:

Find a library where document is available


Order URL: http://worldcat.org/issn/03611981

Abstract:

This research presented a new approach for vehicle classification using roadside LiDAR sensor. Six features (one feature, object height profile, contains 10 sub-features) extracted from the vehicle trajectories were applied to distinguish different classes of vehicles. The vehicle classification aims to assign the objects into ten different types defined by FHWA. A database containing 1,056 manually marked samples and their corresponding pictures was provided for analysis. Those samples were collected at different scenarios (roads and intersections, different speed limits, day and night, different distance to LiDAR, etc.). Naïve Bayes, K-nearest neighbor classification, random forest (RF), and support vector machine were applied for vehicle classification. The results showed that the performance of different methods varied by class. RF has the highest overall accuracy among those investigated methods. Some types were merged together to serve different types of users, which can also improve the accuracy of vehicle classification. The validation indicated that the distance between the object and the roadside LiDAR can influence the accuracy. This research also provided the distribution of the overall accuracy of RF along the distance to LiDAR. For the VLP-16 LiDAR, to achieve an accuracy of 91.98%, the distance between the object and LiDAR should be less than 30 ft. Users can set up the location of the roadside LiDAR based on their own requirements of the classification accuracy.

Report/Paper Numbers:

19-00874

Language:

English

Authors:

Wu, Jianqing
Xu, Hao
Zheng, Yichen
Zhang, Yongsheng
Lv, Bin
Tian, Zong

Pagination:

pp 153-164

Publication Date:

2019-6

Serial:

Transportation Research Record: Journal of the Transportation Research Board

Volume: 2673
Issue Number: 6
Publisher: Sage Publications, Incorporated
ISSN: 0361-1981
EISSN: 2169-4052
Serial URL: http://journals.sagepub.com/home/trr

Media Type:

Digital/other

Features:

Figures (10) ; References (39) ; Tables (7)

Subject Areas:

Data and Information Technology; Highways

Files:

TRIS, TRB, ATRI

Created Date:

Mar 27 2019 12:35PM

More Articles from this Serial Issue: