From local spectral measurements to maps of vegetation cover and biomass on the Qinghai-Tibet-Plateau: Do we need hyperspectral information?

Meyer, H; Lehnert, LW; Wang, Y; Reudenbach, C; Nauss, T; Bendix, J

Research article (journal) | Peer reviewed

Abstract

Though the relevance of pasture degradation on the Qinghai-Tibet Plateau (QTP) is widely postulated, its extent is still unknown. Due to the enormous spatial extent, remote sensing provides the only possibility to investigate pasture degradation via frequently used proxies such as vegetation cover and aboveground biomass (AGB). However, unified remote sensing approaches are still lacking. This study tests the applicability of hyper- and multispectral in situ measurements to map vegetation cover and AGB on regional scales. Using machine learning techniques, it is tested whether the full hyperspectral information is needed or if multispectral information is sufficient to accurately estimate pasture degradation proxies. To regionalize pasture degradation proxies, the transferability of the locally derived ML-models to high resolution multispectral satellite data is assessed. 1183 hyperspectral measurements and vegetation records were performed at 18 locations on the QTP. Random Forests models with recursive feature selection were trained to estimate vegetation cover and AGB using narrow-band indices (NBI) as predictors. Separate models were calculated using NBI from hyperspectral data as well as from the same data resampled to WorldView-2, QuickBird and RapidEye channels. The hyperspectral results were compared to the multispectral results. Finally, the models were applied to satellite data to map vegetation cover and AGB on a regional scale. Vegetation cover was accurately predicted by Random Forest if hyperspectral measurements were used (cross validated R2=0.89). In contrast, errors in AGB estimations were considerably higher (cross validated R2=0.32). Only small differences in accuracy were observed between the models based on hyperspectral compared to multispectral data. The application of the models to satellite images generally resulted in an increase of the estimation error. Though this reflects the challenge of applying in situ measurements to satellite data, the results still show a high potential to map pasture degradation proxies on the QTP. Thus, this study presents robust methodology to remotely detect and monitor pasture degradation at high spatial resolutions.

Details about the publication

JournalInternational Journal of Applied Earth Observation and Geoinformation (Int J Appl Earth Obs Geoinf)
Volume55
Page range21-31
StatusPublished
Release year2017
Language in which the publication is writtenEnglish
DOI10.1016/j.jag.2016.10.001
Link to the full texthttps://doi.org/10.1016/j.jag.2016.10.001
KeywordsPasture degradation

Authors from the University of Münster

Meyer, Hanna
Junior professorship for remote sensing and image processing (Prof. Meyer)
Professorship of Remote Sensing and Spatial Modelling