article id 471,
                            category
                        Research article
                    
        
                                    
                                    
                            Abstract |
                        
                                    View details
                             |
                            
Full text in PDF |
                        
Author Info
            
                            One of the most common applications of remote sensing in forestry is the  production of thematic maps, depicting e.g. tree species or stand age,  by means of image classification. Nevertheless, the absolute  quantification of stand variables is even more essential for forest  inventories. For both issues, satellite data are attractive for their  large-area and up-to-date mapping capacities. This study followed two  steps, and at first a supervised parametric classification was performed  for a German test site based on a radiometrically corrected Landsat-5  TM scene. There, eight forest classes were identified with an overall  accuracy of 87.5%. In the following, the study focused on the estimation  of one key stand variable, the stem number per hectare (SN), which was  carried out for a number of Norway spruce stands that had been clearly  identified in the multispectral classification. For the estimation of  SN, the approach of Linear Spectral Mixture Analysis (LSMA) was found to  be clearly more effective than spectral indices. LSMA is based on the  premise that measured reflectances can be linearly modelled from a set  of so-called endmember spectra. In this study, the endmember sets were  held variable to decompose pixel values to abundances of a vegetation, a  background (soil, litter, bark) and a shade fraction. Forest structure  determines the visible portions of these fractions, and therefore, a  multiple regression using them as predictor variables provided the best  SN estimates. LSMA allows a pixel-by-pixel quantification of SN for  complete satellite images. This opens the view to exploit these data for  an improved calibration of large-scale multi-parameter assessment  strategies (e.g. statistical modelling or the kNN method for satellite  data interpretation).
                        
                
                                            - 
                            Vohland,
                            University of Trier, Faculty of Geography and Geosciences, Remote Sensing Department, Trier, Germany
                                                        E-mail:
                                                            mv@nn.de
                                                                                          
- 
                            Stoffels,
                            University of Trier, Faculty of Geography and Geosciences, Remote Sensing Department, Trier, Germany
                                                        E-mail:
                                                            js@nn.de
                                                                                
- 
                            Hau,
                            University of Trier, Faculty of Geography and Geosciences, Remote Sensing Department, Trier, Germany
                                                        E-mail:
                                                            ch@nn.de
                                                                                
- 
                            Schüler,
                            Research Institution for Forest Ecology and Forestry (FAWF), Department of Forest Growth and Silviculture, Trippstadt, Germany
                                                        E-mail:
                                                            gs@nn.de