Classification of mobile laser scanning point clouds from height features

Conference Paper (2017)
Author(s)

M. Zheng (TU Delft - OLD Department of GIS Technology, Wuhan University)

M.J.P.M. Lemmens (TU Delft - OLD Department of GIS Technology)

P.J.M. van Oosterom (TU Delft - OLD Department of GIS Technology)

Research Group
OLD Department of GIS Technology
Copyright
© 2017 M. Zheng, M.J.P.M. Lemmens, P.J.M. van Oosterom
DOI related publication
https://doi.org/10.5194/isprs-archives-XLII-2-W7-321-2017
More Info
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Publication Year
2017
Language
English
Copyright
© 2017 M. Zheng, M.J.P.M. Lemmens, P.J.M. van Oosterom
Research Group
OLD Department of GIS Technology
Volume number
XLII-2/W7
Pages (from-to)
321-325
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Abstract

The demand for 3D maps of cities and road networks is steadily growing and mobile laser scanning (MLS) systems are often the preferred geo-data acquisition method for capturing such scenes. Because MLS systems are mounted on cars or vans they can acquire billions of points of road scenes within a few hours of survey. Manual processing of point clouds is labour intensive and thus time consuming and expensive. Hence, the need for rapid and automated methods for 3D mapping of dense point clouds is growing exponentially. The last five years the research on automated 3D mapping of MLS data has tremendously intensified. In this paper, we present our work on automated classification of MLS point clouds. In the present stage of the research we exploited three features - two height components and one reflectance value, and achieved an overall accuracy of 73%, which is really encouraging for further refining our approach.