Plant species richness prediction from DESIS hyperspectral data: A comparison study on feature extraction procedures and regression models
Yiqing Guo, Karel Mokany, Cindy Ong, Peyman Moghadam, Simon Ferrier,, Shaun R. Levick

TL;DR
This study evaluates the potential of DESIS satellite hyperspectral data for predicting plant species richness, comparing feature extraction methods and regression models, and finds it outperforms multispectral data in accuracy.
Contribution
It provides a comprehensive assessment of DESIS hyperspectral data for plant diversity monitoring and compares multiple feature extraction and regression techniques.
Findings
DESIS hyperspectral data predicts plant species richness with high accuracy.
Red-edge, red, and blue spectral regions are most important for predictions.
DESIS outperforms Sentinel-2 multispectral data in predicting plant diversity.
Abstract
The diversity of terrestrial vascular plants plays a key role in maintaining the stability and productivity of ecosystems. Airborne hyperspectral imaging has shown promise for measuring plant diversity remotely, but to operationalise these efforts over large regions we need to advance satellite-based alternatives. The advanced spectral and spatial specification of the recently launched DESIS (the DLR Earth Sensing Imaging Spectrometer) instrument provides a unique opportunity to test the potential for monitoring plant species diversity with spaceborne hyperspectral data. This study provides a quantitative assessment on the ability of DESIS hyperspectral data for predicting plant species richness in two different habitat types in southeast Australia. Spectral features were first extracted from the DESIS spectra, then regressed against on-ground estimates of plant species richness, with a…
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Taxonomy
TopicsRemote Sensing in Agriculture · Species Distribution and Climate Change · Remote-Sensing Image Classification
MethodsTest · Gaussian Process
