12 research outputs found
Estimation of the occurrence, severity, and volume of heartwood rot using airborne laser scanning and optical satellite data
Rot in commercial timber reduces the value of the wood substantially and estimating the occurrence, severity, and volume of heartwood rot would be a useful tool in decision-making to minimize economic losses. Remotely sensed data has recently been used for mapping rot on a single-tree level, and although the results have been relatively poor, some potential has been shown. This study applied area-based approaches to predict rot occurrence, rot severity, and rot volume , at an area level. Ground reference data were collected from harvester operations in 2019–2021. Predictor variables were calculated from multi-temporal remotely sensed data together with environmental variables. Response variables from the harvester data and predictor variables from remotely sensed data were aggregated to grid cells and to forest stands. Random Forest models were built for the different combinations of response variables and predictor subsets, and validated with both random- and spatial cross-validation. The results showed that it was not possible to estimate rot occurrence and rot severity with the applied modeling procedure (pR2: 0.00–0.16), without spatially close training data. The better performance of rot volume models (pR2: 0.12–0.37) was mainly due to the correlation between timber volume and rot volum
Effects of forest structure and airborne laser scanning point cloud density on 3D delineation of individual tree crowns
This paper presents a 3D delineation method for airborne laser scanning point cloud. The method is based on an unsupervised clustering technique applied on horizontal slices followed by vertical merging based on overlapping among clusters. On an Alpine forest dataset, we analysed the effects of different forest structures and point cloud densities on tree crown delineation. Forest structure affects mainly the omission error, which eases with homogeneous tree spacing and sizes, while on the commission error forest structure has only slight effect. Delineation accuracy increases with higher point densities where Mann-Whitney-Wilcoxon test shows that accuracy differences between thinned data and original data are statistically significan
Tree species classification in boreal forests with hyperspectral data
Tree species mapping in forest areas is an important topic in forest inventory. In recent years, several studies have been carried out using different types of hyperspectral sensors under various forest conditions. The aim of this work was to evaluate the potential of two high spectral and spatial resolution hyperspectral sensors (HySpex-VNIR 1600 and HySpex-SWIR 320i), operating at different wavelengths, for tree species classification of boreal forests. To address this objective many experiments were carried out, taking into consideration: i) three classifiers (Support Vector Machines, Random Forest, and Gaussian Maximum Likelihood); ii) two spatial resolutions (1.5 m and 0.4 m pixel sizes); iii) two subsets of spectral bands (all and a selection); and iv) two spatial levels (pixel and tree level). The study area is characterized by the presence of four classes 1) Norway spruce, 2) Scots pine, together with 3) scattered Birch and 4) other broadleaves. Our results showed that: i) the HySpex VNIR 1600 sensor is effective in boreal tree species classification with kappa accuracies over 0.8 (with Pine and Spruce reaching producer’s accuracies higher than 95%); ii) the role of the HySpex-SWIR 320i is limited, and its bands alone are able to properly separate only Pine and Spruce species; iii) the spatial resolution has a strong effect on the classification accuracy (an overall decrease of more than 20% between 0.4 m and 1.5 m spatial resolution); and iv) there is no significant difference between Support Vector Machines or Random Forest classifiers
Prediction of species-specific volume using different inventory approaches by fusing airborne laser scanning and hyperspectral data
Fusion of ALS and hyperspectral data can offer a powerful basis for the discrimination of
tree species and enables an accurate prediction of species-specific attributes. In this study, the fused
airborne laser scanning (ALS) data and hyperspectral images were used to model and predict the total
and species-specific volumes based on three forest inventory approaches, namely the individual tree
crown (ITC) approach, the semi-ITC approach, and the area-based approach (ABA). The performances
of these inventory approaches were analyzed and compared at the plot level in a complex Alpine
forest in Italy. For the ITC and semi-ITC approaches, an ITC delineation algorithm was applied. With
the ITC approach, the species-specific volumes were predicted with allometric models for each crown
segment and aggregated to the total volume. For the semi-ITC and ABA, a multivariate k-most similar
neighbor method was applied to simultaneously predict the total and species-specific volumes using
leave-one-out cross-validation at the plot level. In both methods, the ALS and hyperspectral variables
were important for volume modeling. The total volume of the ITC, semi-ITC, and ABA resulted in
relative root mean square errors (RMSEs) of 25.31%, 17.41%, 30.95% of the mean and systematic errors
(mean differences) of 21.59%, −0.27%, and −2.69% of the mean, respectively. The ITC approach
achieved high accuracies but large systematic errors for minority species. For majority species, the
semi-ITC performed slightly better compared to the ABA, resulting in higher accuracies and smaller
systematic errors. The results indicated that the semi-ITC outperformed the two other inventory
approaches. To conclude, we suggest that the semi-ITC method is further tested and assessed with
attention to its potential in operational forestry applications, especially in cases for which accurate
species-specific forest biophysical attributes are neede