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- Title
Clasificación semiautomática de especies arbóreas basada en parámetros de rugosidad mediante datos LiDAR aéreos.
- Authors
Novo, Ana; González-Jorge, Higinio; Comesaña-Cebral, Lino-José; Lorenzo, Henrique; Martínez-Sánchez, Joaquin
- Abstract
Automated tree species classification using high density airborne LiDAR data supports precise forest inventory. This work shows a method based on evaluating roughness descriptors from aerial LiDAR data to automatically classify tree species. The proposed method includes treetops detection, neighboring distance analysis for selecting the interest points, 3D fit surface creation, evaluation of roughness parameters, and K-means clustering. Among the evaluated roughness parameters, Skewness (Rsk) and Kurtosis (Rku) show robust classification. A synthetic point cloud was generated to test the methodology in a mixed forest formed by three tree species, Pinus sp., Quercus sp., and Eucalyptus sp. The Overall Accuracy (OA) of the classification method was 80 % for Quercus sp., 100 % for Pinus sp. and 80.6 % for Eucalyptus sp. In addition, the methodology was tested in three study areas and the results demonstrate that roughness parameters can be used to individual tree species classification in a mixed temperate forest with an OA of 82% in study area 1, 93% in study area 2 and 92% in study area 3.
- Subjects
MIXED forests; FOREST surveys; TEMPERATE forests; K-means clustering; POINT cloud; EUCALYPTUS; DESCRIPTOR systems
- Publication
DYNA - Ingeniería e Industria, 2022, Vol 97, Issue 5, p528
- ISSN
0012-7361
- Publication type
Article
- DOI
10.6036/10567