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An artificial intelligence approach to remotely assess pale lichen biomass.

Authors :
Erlandsson, Rasmus
Bjerke, Jarle W.
Finne, Eirik A.
Myneni, Ranga B.
Piao, Shilong
Wang, Xuhui
Virtanen, Tarmo
Räsänen, Aleksi
Kumpula, Timo
Kolari, Tiina H.M.
Tahvanainen, Teemu
Tømmervik, Hans
Source :
Remote Sensing of Environment. Oct2022, Vol. 280, pN.PAG-N.PAG. 1p.
Publication Year :
2022

Abstract

Although generally given little attention in vegetation studies, ground-dwelling (terricolous) lichens are major contributors to overall carbon and nitrogen cycling, albedo, biodiversity and biomass in many high-latitude ecosystems. Changes in biomass of mat-forming pale lichens have the potential to affect vegetation, fauna, climate and human activities including reindeer husbandry. Lichens have a complex spectral signature and terricolous lichens have limited growth height, often growing in mixtures with taller vegetation. This has, so far, prevented the development of remote sensing techniques to accurately assess lichen biomass, which would be a powerful tool in ecosystem and ecological research and rangeland management. We present a Landsat based remote sensing model developed using deep neural networks, trained with 8914 field records of lichen volume collected for >20 years. In contrast to earlier proposed machine learning and regression methods for lichens, our model exploited the ability of neural networks to handle mixed spatial resolution input. We trained candidate models using input of 1 × 1 (30 × 30 m) and 3 × 3 Landsat pixels based on 7 reflective bands and 3 indices, combined with a 10 m spatial resolution digital elevation model. We normalised elevation data locally for each plot to remove the region-specific variation, while maintaining informative local variation in topography. The final model predicted lichen volume in an evaluation set (n = 159) reaching an R2 of 0.57. NDVI and elevation were the most important predictors, followed by the green band. Even with moderate tree cover density, the model was efficient, offering a considerable improvement compared to earlier methods based on specific reflectance. The model was in principle trained on data from Scandinavia, but when applied to sites in North America and Russia, the predictions of the model corresponded well with our visual interpretations of lichen abundance. We also accurately quantified a recent historic (35 years) change in lichen abundance in northern Norway. This new method enables further spatial and temporal studies of variation and changes in lichen biomass related to multiple research questions as well as rangeland management and economic and cultural ecosystem services. Combined with information on changes in drivers such as climate, land use and management, and air pollution, our model can be used to provide accurate estimates of ecosystem changes and to improve vegetation-climate models by including pale lichens. • We used AI to detect biomass of pale mat-forming terricolous lichens using Landsat. • Our final model reached a R2 of 0.57 (RMSE = 11.24). • NDVI, terrain and the green band were the most important predictors. • Though trained on European data, we got plausible results in North America. • Using historical satellite images we quantified spatiotemporal changes in lichens. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
00344257
Volume :
280
Database :
Academic Search Index
Journal :
Remote Sensing of Environment
Publication Type :
Academic Journal
Accession number :
158885936
Full Text :
https://doi.org/10.1016/j.rse.2022.113201