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Classification of forest land attributes using multi-source remotely sensed data
Affiliation:1. Estación Experimental de Aula Dei, CSIC, Ave. Montañana 1005, 50059 Zaragoza, Spain;2. Departamento de Ciencias de la Tierra, Universidad de Zaragoza, c/Pedro Cerbuna 12, 50009 Zaragoza, Spain;1. School of Forest Sciences, University of Eastern Finland, P.O. Box 111, FI-80101 Joensuu, Finland;2. Finnish Forest Research Institute, Joensuu Unit, P.O. Box 68, FI-80101 Joensuu, Finland;1. Anthropology Department, University of Oklahoma, Norman, OK 73019, United States;2. Sam Noble Oklahoma Museum of Natural History, University of Oklahoma, Norman, OK 73019, United States;3. Electron Microprobe Laboratory, University of Oklahoma, Norman, OK 73019, United States;4. Manitou Springs, CO 80829, United States;5. Ardmore, OK 73401, United States
Abstract:The aim of the study was to (1) examine the classification of forest land using airborne laser scanning (ALS) data, satellite images and sample plots of the Finnish National Forest Inventory (NFI) as training data and to (2) identify best performing metrics for classifying forest land attributes. Six different schemes of forest land classification were studied: land use/land cover (LU/LC) classification using both national classes and FAO (Food and Agricultural Organization of the United Nations) classes, main type, site type, peat land type and drainage status. Special interest was to test different ALS-based surface metrics in classification of forest land attributes. Field data consisted of 828 NFI plots collected in 2008–2012 in southern Finland and remotely sensed data was from summer 2010. Multinomial logistic regression was used as the classification method. Classification of LU/LC classes were highly accurate (kappa-values 0.90 and 0.91) but also the classification of site type, peat land type and drainage status succeeded moderately well (kappa-values 0.51, 0.69 and 0.52). ALS-based surface metrics were found to be the most important predictor variables in classification of LU/LC class, main type and drainage status. In best classification models of forest site types both spectral metrics from satellite data and point cloud metrics from ALS were used. In turn, in the classification of peat land types ALS point cloud metrics played the most important role. Results indicated that the prediction of site type and forest land category could be incorporated into stand level forest management inventory system in Finland.
Keywords:Classification  Forest land  Landsat  LiDAR  Site type  Surface model
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