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http://dx.doi.org/10.11108/kagis.2018.21.1.001

Accurate Spatial Information Mapping System Using MMS LiDAR Data  

CHOUNG, Yun-Jae (Research Institute for Spatial Information Technology, GEO C&I Co., Ltd.)
CHOI, Hyeoung-Wook (Research Institute for Spatial Information Technology, GEO C&I Co., Ltd.)
PARK, Hyeon-Cheol (Research Institute for Spatial Information Technology, GEO C&I Co., Ltd.)
Publication Information
Journal of the Korean Association of Geographic Information Studies / v.21, no.1, 2018 , pp. 1-11 More about this Journal
Abstract
Mapping accurate spatial information is important for constructing three-dimensional (3D) spatial models and managing artificial facilities, and, especially, mapping road centerlines is necessary for constructing accurate road maps. This research developed a semi-automatic methodology for mapping road centerlines using the MMS(Mobile Mapping System) LiDAR(Light Detection And Ranging) point cloud as follows. First, the intensity image was generated from the given MMS LiDAR data through the interpolation method. Next, the line segments were extracted from the intensity image through the edge detection technique. Finally, the road centerline segments were manually selected among the extracted line segments. The statistical results showed that the generated road centerlines had 0.065 m overall accuracy but had some errors in the areas near road signs.
Keywords
Accurate Spatial Information; Road Centerlines; MMS LiDAR; Intensity; IDW interpolation; Canny Edge Detector;
Citations & Related Records
Times Cited By KSCI : 5  (Citation Analysis)
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