Automatic classification of urban ground elements from mobile laser scanning data

Journal Article (2018)
Author(s)

J. Balado (University of Vigo)

L. Díaz Dìaz-Vilariño (University of Vigo, TU Delft - OLD Department of GIS Technology)

P. Arias (University of Vigo)

H. González-Jorge (University of Vigo)

Research Group
OLD Department of GIS Technology
DOI related publication
https://doi.org/10.1016/j.autcon.2017.09.004
More Info
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Publication Year
2018
Language
English
Research Group
OLD Department of GIS Technology
Volume number
86
Pages (from-to)
226-239

Abstract

Accessibility diagnosis of as-built urban environments is essential for path planning, especially in case of people with reduced mobility and it requires an in-depth knowledge of ground elements. In this paper, we present a new approach for automatically detect and classify urban ground elements from 3D point clouds. The methodology enables a high level of detail classification from the combination of geometric and topological information. The method starts by a planar segmentation followed by a refinement based on split and merge operations. Next, a feature analysis and a geometric decision tree are followed to classify regions in preliminary classes. Finally, adjacency is studied to verify and correct the preliminary classification based on a comparison with a topological graph library. The methodology is tested in four real complex case studies acquired with a Mobile Laser Scanner Device. In total, five classes are considered (roads, sidewalks, treads, risers and curbs). Results show a success rate of 97% in point classification, enough to analyse extensive urban areas from an accessibility point of view. The combination of topology and geometry improves a 10% to 20% the success rate obtained with only the use of geometry.

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