4.7 Article

Multi- and hyperspectral classification of soft-bottom intertidal vegetation using a spectral library for coastal biodiversity remote sensing

Journal

REMOTE SENSING OF ENVIRONMENT
Volume 290, Issue -, Pages -

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.rse.2023.113554

Keywords

Remote sensing; Seagrass mapping; Intertidal mapping; Spectral-radiometry; Satellite spectral data; Machine learning; Essential biodiversity variables; Earth observation

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Monitoring biodiversity and the impact of human activities is crucial due to anthropogenic climate change. Intertidal areas face high pressures due to increased population density in coastal regions. Remote sensing is being increasingly used to monitor intertidal areas as traditional methods are not cost-effective or timely. However, accurately distinguishing between vegetation classes such as seagrass and green algae using multispectral data has proved challenging, often requiring hyperspectral data.
Monitoring biodiversity and how anthropogenic pressures impact this is critical, especially as anthropogenically driven climate change continues to affect all ecosystems. Intertidal areas are exposed to particularly high levels of pressures owing to increased population density in coastal areas. Traditional methods of monitoring intertidal areas do not provide datasets with full coverage in a cost-effective or timely manner, and so the use of remote sensing to monitor these areas is becoming more common. Monitoring of ecologically important monospecific habitats, such as seagrass beds, using remote sensing techniques is well documented. However, the ability for multispectral data to distinguish efficiently and accurately between classes of vegetation with similar pigment composition, such as seagrass and green algae, has proved difficult, often requiring hyperspectral data. A ma-chine learning approach was used to differentiate between soft-bottom intertidal vegetation classes when exposed at low tide, comparing 6 different multi-and hyperspectral remote and in situ sensors. For the library of 366 spectra, collected across Northern Europe, high accuracy (>80%) was found across all spectral resolutions. While a higher spectral resolution resulted in higher accuracy, there was no discernible increase in accuracy above 10 spectral bands (95%: Sentinel-2 MSI sensor with a spatial resolution of 20 m). This work highlights the ability of multispectral sensors to discriminate intertidal vegetation types, while also showing the most important wavelengths for this discrimination (-530 and -730 nm), giving recommendations for spectral ranges of future satellite missions. The ability for multispectral sensors to aid in accurate and rapid intertidal vegetation classi-fication at the taxonomic resolution of classes, could be a significant contribution for future sustainable and effective ecosystem management.

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