| Remote Sensing | |
| Extraction of Plant Physiological Status from Hyperspectral Signatures Using Machine Learning Methods | |
| Daniel Doktor1  Angela Lausch1  Daniel Spengler2  Martin Thurner4  Alfredo R. Huete3  | |
| [1] Helmholtz Centre for Environmental Research-UFZ, Computational Landscape Ecology, Permoserstraße 15, 04318 Leipzig, Germany; E-Mail:;German Research Center for Geosciences, Section Remote Sensing, 14473 Potsdam, Germany; E-Mail:;Helmholtz Centre for Environmental Research-UFZ, Computational Landscape Ecology, Permoserstraße 15, 04318 Leipzig, Germany; E-Mail;Department of Applied Environmental Science (ITM) and the Bert Bolin Centre for Climate Research, Stockholm University, SE-106 91 Stockholm, Sweden; E-Mail: | |
| 关键词: hyperspectral data; vegetation status; random forest; PROSAIL; crop; | |
| DOI : 10.3390/rs61212247 | |
| 来源: mdpi | |
PDF
|
|
【 摘 要 】
The machine learning method, random forest (RF), is applied in order to derive biophysical and structural vegetation parameters from hyperspectral signatures. Hyperspectral data are, among other things, characterized by their high dimensionality and autocorrelation. Common multivariate regression approaches, which usually include only a limited number of spectral indices as predictors, do not make full use of the available information. In contrast, machine learning methods, such as RF, are supposed to be better suited to extract information on vegetation status. First, vegetation parameters are extracted from hyperspectral signatures simulated with the radiative transfer model, PROSAIL. Second, the transferability of these results with respect to laboratory and field measurements is investigated.
【 授权许可】
CC BY
© 2014 by the authors; licensee MDPI, Basel, Switzerland.
【 预 览 】
| Files | Size | Format | View |
|---|---|---|---|
| RO202003190019167ZK.pdf | 1343KB |
PDF