4.7 Article

Joint Estimation of Leaf Area Density and Leaf Angle Distribution Using TLS Point Cloud for Forest Stands

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/JSTARS.2021.3120521

关键词

Vegetation; Forestry; Vegetation mapping; Three-dimensional displays; Indexes; Estimation; Sociology; Leaf angle distribution (LAD); leaf area density; leaf area index (LAI); leaf properties; TLS; voxel-based method

资金

  1. INFOTEL-3 project by the National Center for Mapping and Remote Sensing, Tunisia
  2. EU through the Emori Program

向作者/读者索取更多资源

This study proposed a method based on TLS point cloud to jointly estimate foliage density and leaf angle distribution, utilizing direct/inverse radiative transfer modeling and shuffled complex evolution method. The estimated values are close to the actual values, demonstrating the effectiveness of the approach in forest canopy characterization.
The foliage density (u(l)) and the leaf angle distribution (LAD) are important properties that impact radiation transmission, interception, absorption and, therefore, photosynthesis. Their estimation in a forested scene is a challenging task due to their interdependence in addition to the large variability in the forest structure and the heterogeneity of the vegetation. In this work, we propose to jointly estimate both of them using terrestrial laser scanner (TLS) point cloud for different forest stands. Our approach is based on direct/inverse radiative transfer modeling. The direct model was developed to simulate TLS shots within a vegetation scene having known foliage properties (i.e., u(l) and LAD) resulting in a 3-D point cloud of the observed scene. Then, the inverse model was developed to jointly estimate u(l) and LAD decomposing the 3-D point cloud into voxels. The problem turns out to a high-dimensional cost function to optimize. To do it, the shuffled complex evolution method has been adopted. Our approach is validated with results derived from several simulated homogeneous and heterogeneous vegetation canopies as well as from actual TLS point cloud acquired from Estonian Birch, Pine, and Spruce stands. Our findings revealed that our estimates were considerably close to the actual u(l) and leaf inclination distribution function (LIDF) values with (Biais(ul) is an element of [0.001 0.006], RMSEul is an element of [0.019 0.045], RMSELIDF is an element of [0.019 0.038]) for homogeneous dataset and (Biais(ul) is an element of [0.001 0.045], RMSEul is an element of [0.023 0.078], RMSELIDF is an element of [0.011 0.018]) for heterogeneous dataset with different tree crown geometries (i.e., conical and elliptical). In the actual case (Birch, Pine, and Spruce stands), our approach with the traditional and novel techniques, RMSELAI are 0.526 and 0.105, respectively. The results outperform those of the baseline technique (i.e., assuming spherical LAD) with RMSELAI = 2.651.

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