While improvements in the spectral and spatial resolution of satellite imagery have opened up new prospects for large-scale environmental monitoring, this potential has remained largely unrealised in dune ecogeomorphology. This is especially true for Mediterranean coastal dunes, where the highly mixed and sparse vegetation requires high resolution satellites and spectral unmixing techniques. To achieve this aim, we employed random forest regressors to predict the fractional cover of dune plant species in two of the sandy barriers of Ria Formosa (S. Portugal) fromWorldView-2 imagery (June 2024). The algorithm, tested with spatially upscaled multispectral drone data and satellite imagery, detected the fractional cover of major species (most abundant classes and bushy vegetation) with reasonable to very good accuracy (coefficient of determination, CoD: 0.4 to 0.8) for the former and reasonable to good accuracy (CoD: 0.4 to 0.6) for the latter. Additional tests showed that (a) including the distance to the shoreline can increase model accuracy (CoD by ~0.1); (b) the grouping of species resulted in an insignificant increase in model skill; and (c) testing over independent dune plots showed generalisation beyond the training set and low risk of overfitting or noise. Overall, the approach showed promising results for large-scale observations in highly mixed coastal dunes.

Kombiadou, K., Costas, S., Bautista Gallego-Fernández, J., Yang, Z., Bon De Sousa, L., Silvestri, S. (2025). Spectral Unmixing of Coastal Dune Plant Species from Very High Resolution Satellite Imagery. REMOTE SENSING, 17(24), 1-36 [10.3390/rs17243991].

Spectral Unmixing of Coastal Dune Plant Species from Very High Resolution Satellite Imagery

Sonia Silvestri
2025

Abstract

While improvements in the spectral and spatial resolution of satellite imagery have opened up new prospects for large-scale environmental monitoring, this potential has remained largely unrealised in dune ecogeomorphology. This is especially true for Mediterranean coastal dunes, where the highly mixed and sparse vegetation requires high resolution satellites and spectral unmixing techniques. To achieve this aim, we employed random forest regressors to predict the fractional cover of dune plant species in two of the sandy barriers of Ria Formosa (S. Portugal) fromWorldView-2 imagery (June 2024). The algorithm, tested with spatially upscaled multispectral drone data and satellite imagery, detected the fractional cover of major species (most abundant classes and bushy vegetation) with reasonable to very good accuracy (coefficient of determination, CoD: 0.4 to 0.8) for the former and reasonable to good accuracy (CoD: 0.4 to 0.6) for the latter. Additional tests showed that (a) including the distance to the shoreline can increase model accuracy (CoD by ~0.1); (b) the grouping of species resulted in an insignificant increase in model skill; and (c) testing over independent dune plots showed generalisation beyond the training set and low risk of overfitting or noise. Overall, the approach showed promising results for large-scale observations in highly mixed coastal dunes.
2025
Kombiadou, K., Costas, S., Bautista Gallego-Fernández, J., Yang, Z., Bon De Sousa, L., Silvestri, S. (2025). Spectral Unmixing of Coastal Dune Plant Species from Very High Resolution Satellite Imagery. REMOTE SENSING, 17(24), 1-36 [10.3390/rs17243991].
Kombiadou, Katerina; Costas, Susana; Bautista Gallego-Fernández, Juan; Yang, Zhicheng; Bon De Sousa, Luisa; Silvestri, Sonia
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/1033755
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