Vol. 16, No. 1, 9-20, 2017 |
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ALS for terrain mapping in forest environments: an analysis of lidar filtering algorithms
Mihnea Cățeanu, and Ciubotaru Arcadie
Abstract This paper aims to provide a performance analysis of nine algorithms for ALS data classification. The algorithm performance is reviewed for the case of mountainous terrain, characterised by moderate and steep slopes and forest vegetation of a generally high consistency. Out of the nine algorithms tested, two are commercial ones and the others are free. Our findings suggest that the Lasground-new algorithm implemented in the LAStools (Rapidlasso) software package provides the most accurate results, with a Root Mean Square Error of elevation values for the study site of 0.34 metres (with over 80 percent of the area having an elevation error of less than 0.20 metres) and an average RMSE for the field plots of 0.66 metres. Reference data for RMSE calculation is a DTM interpolated from the ALS point cloud, as classified by the data provider. Some of the free algorithms tested provide relatively similar results in terms of RMSE (for example, MLS and SMRF have RMSE values of 0.56 metres and 0.60 metres, respectively). The correlation between ground slope and RMSE of elevation values is considered for the eight field surveyed plots, with R² having a value of 0.89. Taking into account the difficult test conditions (topographically complex surface with dense canopy cover) we consider ALS data to be a possible solution for collecting geomorphological data for forestry applications, as long as data at a relatively low spatial resolution is sufficient. | |||||||||||||||||||||||
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DOI:
10.12760/01-2017-1-02 History Submitted: 30 Nov 2016 Revised: 08 Mar 2017 Accepted: 03 Apr 2017 Published: 05 May 2017 Responsible editor: Rainer Reuter Citation Cățeanu M & C Arcadie, 2017. ALS for terrain mapping in forest environments: an analysis of lidar filtering algorithms. EARSeL eProceedings, 16(1): 9-20 |
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ISSN 1729-3782 |