Title :
Automated Road Information Extraction From Mobile Laser Scanning Data
Author :
Haiyan Guan ; Li, Jonathan ; Yongtao Yu ; Chapman, Michael ; Cheng Wang
Author_Institution :
Dept. of Geogr. & Environ. Manage., Univ. of Waterloo, Waterloo, ON, Canada
Abstract :
This paper presents a survey of literature about road feature extraction, giving a detailed description of a Mobile Laser Scanning (MLS) system (RIEGL VMX-450) for transportation-related applications. This paper describes the development of automated algorithms for extracting road features (road surfaces, road markings, and pavement cracks) from MLS point cloud data. The proposed road surface extraction algorithm detects road curbs from a set of profiles that are sliced along vehicle trajectory data. Based on segmented road surface points, we create Geo-Referenced Feature (GRF) images and develop two algorithms, respectively, for extracting the following: 1) road markings with high retroreflectivity and 2) cracks containing low contrast with their surroundings, low signal-to-noise ratio, and poor continuity. A comprehensive comparison illustrates satisfactory performance of the proposed algorithms and concludes that MLS is a reliable and cost-effective alternative for rapid road inspection.
Keywords :
automatic optical inspection; civil engineering computing; crack detection; feature extraction; image segmentation; object detection; optical scanners; road safety; surface cracks; GRF images; MLS point cloud data; automated algorithms; automated road information extraction; georeferenced feature; mobile laser scanning data; pavement crack extraction; rapid road inspection; retroreflectivity; road curbs detection; road feature extraction; road markings; road surface extraction algorithm; road surface point segmentation; signal-to-noise ratio; vehicle trajectory data; Data mining; Feature extraction; Global Positioning System; Measurement by laser beam; Roads; Vehicles; Mobile Laser Scanning (MLS); pavement cracks; road markings; road surfaces; traffic safety;
Journal_Title :
Intelligent Transportation Systems, IEEE Transactions on
DOI :
10.1109/TITS.2014.2328589