Automatic extraction of road features in urban environments using dense ALS data
DATE:
2018-02
UNIVERSAL IDENTIFIER: http://hdl.handle.net/11093/1342
EDITED VERSION: https://linkinghub.elsevier.com/retrieve/pii/S030324341730199X
UNESCO SUBJECT: 3305.06 Ingeniería Civil
DOCUMENT TYPE: article
ABSTRACT
This paper describes a methodology that automatically extracts semantic information from urban ALS data for urban parameterization and road network definition. First, building façades are segmented from the ground surface by combining knowledge-based information with both voxel and raster data. Next, heuristic rules and unsupervised learning are applied to the ground surface data to distinguish sidewalk and pavement points as a means for curb detection. Then radiometric information was employed for road marking extraction. Using high-density ALS data from Dublin, Ireland, this fully automatic workflow was able to generate a F-score close to 95% for pavement and sidewalk identification with a resolution of 20 cm and better than 80% for road marking detection.