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Combining vegetation indices, constrained ordination and fuzzy classification for mapping semi-natural vegetation units from hyperspectral imagery
Author
Oldeland, Jens
Dorigo, Wouter
Lieckfeld, Lena
Lucieer, Arko
Jurgens, Norbert
Publisher
Remote Sensing of Environment
Publication Year
2010
Body

Vegetation mapping of plant communities at fine spatial scales is increasingly supported by remote sensing technology. However, combining ecological ground truth information and remote sensing datasets for mapping approaches is complicated by the complexity of ecological datasets. In this study, we present a new approach that uses high spatial resolution hyperspectral datasets to map vegetation units of a semiarid rangeland in Central Namibia. Field vegetation surveys provide the input to the workflow presented in this study. The collected data were classified by hierarchical cluster analysis into seven vegetation units that reflect different ecological states occurring in the study area. Spectral indices covering vegetation and soil characteristics were calculated from hyperspectral remote sensing imagery and used as environmental variables in a constrained ordination by applying redundancy analysis (RDA). The resulting statistical relationships between vegetation data and spectral indices were transferred into images of ordination axes, which were subsequently used in a supervised fuzzy c-means classification approach relying on a k-NN distance metric. Membership images for each vegetation unit as well as a confusion image of the classification result allowed a sound ecological interpretation of the resulting hard classification map. Classification results were validated with two independent reference datasets. For an internal and external validation dataset, overall accuracy reached 98% and 64% with kappa values of 0.98 and 0.53, respectively. Critical steps during the mapping workflow were highlighted and compared with similar mapping approaches.

Language
English
Resource Type
Text
Document Type
Journal Issue/Article
Journal Volume
114
Journal Number
6
Journal Pages
1155-1166
Collection
Southern Africa Collection
Journal Name
Remote Sensing of Environment
Keywords
cluster analysis
Redundancy analysis
Multivariate
Supervised fuzzy c-means
semiarid
rangelands
Namibia
imaging spectroscopy
remote sensing
mapping
vegetation dynamics
Namibia
Africa