4.7 Article

Extraction of Spectral Information from Airborne 3D Data for Assessment of Tree Species Proportions

Journal

REMOTE SENSING
Volume 13, Issue 4, Pages -

Publisher

MDPI
DOI: 10.3390/rs13040720

Keywords

aerial images; multi-spectral lidar; Optec Titan; photogrammetry; species-specific proportion; stem volume; UltraCam

Funding

  1. Hildur and Sven Wingquist's Foundation

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Using methods for coloring point clouds and analyzing the importance of different metrics, this study aimed to estimate tree species-specific proportions and stem volumes at a coniferous hemi-boreal test site in southern Sweden. Results showed that simple averages of spectral metrics were most important, and utilizing spectral data from two seasons improved species prediction, especially for deciduous trees. The best estimates for tree species-specific proportion were obtained using multi-spectral lidar data, with corresponding root mean square errors (RMSE) of 0.22 for pine, 0.22 for spruce, and 0.16 for deciduous trees.
With the rapid development of photogrammetric software and accessible camera technology, land surveys and other mapping organizations now provide various point cloud and digital surface model products from aerial images, often including spectral information. In this study, methods for colouring the point cloud and the importance of different metrics were compared for tree species-specific estimates at a coniferous hemi-boreal test site in southern Sweden. A total of three different data sets of aerial image-based products and one multi-spectral lidar data set were used to estimate tree species-specific proportion and stem volume using an area-based approach. Metrics were calculated for 156 field plots (10 m radius) from point cloud data and used in a Random Forest analysis. Plot level accuracy was evaluated using leave-one-out cross-validation. The results showed small differences in estimation accuracy of species-specific variables between the colouring methods. Simple averages of the spectral metrics had the highest importance and using spectral data from two seasons improved species prediction, especially deciduous proportion. Best tree species-specific proportion was estimated using multi-spectral lidar with 0.22 root mean square error (RMSE) for pine, 0.22 for spruce and 0.16 for deciduous. Corresponding RMSE for aerial images was 0.24, 0.23 and 0.20 for pine, spruce and deciduous, respectively. For the species-specific stem volume at plot level using image data, the RMSE in percent of surveyed mean was 129% for pine, 60% for spruce and 118% for deciduous.

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