Generating an optimal DTM from airborne laser scanning data for landslide mapping in a tropical forest environment
Publication date
2013
Authors
Razak, K.A.
Santangelo, M.
Westen, C. J. van
Straatsma, M.W.
Jong, S.M. de
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Supervisors
Document Type
Article
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(c) UU Universiteit Utrecht, 2013
Abstract
Landslide inventory maps are fundamental for assessing landslide susceptibility, hazard, and risk. In tropical
mountainous environments, mapping landslides is difficult as rapid and dense vegetation growth obscures landslides
soon after their occurrence. Airborne laser scanning (ALS) data have been used to construct the digital terrain
model (DTM) under dense vegetation, but its reliability for landslide recognition in the tropics remains
surprisingly unknown. This study evaluates the suitability of ALS for generating an optimal DTM for mapping
landslides in the Cameron Highlands, Malaysia. For the bare-earth extraction, we used hierarchical robust filtering
algorithmand a parameterization with three sequential filtering steps. After each filtering step, four interpolations
techniques were applied, namely: (i) the linear prediction derived from the SCOP++ (SCP), (ii) the
inverse distance weighting (IDW), (iii) the natural neighbor (NEN) and (iv) the topo-to-raster (T2R). We
assessed the quality of 12 DTMs in two ways: (1) with respect to 448 field-measured terrain heights and (2)
based on the interpretability of landslides. The lowest root-mean-square error (RMSE) was 0.89 m across the
landscape using three filtering steps and linear prediction as interpolation method. However, we found that a
less stringent DTM filtering unveiled more diagnostic micro-morphological features, but also retained some of
vegetation. Hence, a combination of filtering steps is required for optimal landslide interpretation, especially in
forestedmountainous areas. IDWwas favored as the interpolation technique because it combined computational
times more reasonably without adding artifacts to the DTM than T2R and NEN, which performed relatively well
in the first and second filtering steps, respectively. The laser point density and the resulting ground point density
after filtering are key parameters for producing a DTM applicable to landslide identification. The results showed
that the ALS-derived DTMs allowedmapping and classifying landslides beneath equatorialmountainous forests,
leading to a better understanding of hazardous geomorphic problems in tropical regions.
Keywords
ALS data filtering, Forested landslides, Interpolation surface, Landslide inventory, Equatorial mountainous region, Digital terrain model