Wetterlind, Johanna
- Department of Soil and Environment, Swedish University of Agricultural Sciences
Research article2022Peer reviewedOpen access
Shen, Zefang; Ramirez-Lopez, Leonardo; Behrens, Thorsten; Cui, Lei; Zhang, Mingxi; Walden, Lewis; Wetterlind, Johanna; Shi, Zhou; Sudduth, Kenneth A.; Song, Yongze; Catambay, Kevin; Rossel, Raphael A. Viscarra
There is global interest in spectroscopy and the development of large and diverse soil spectral libraries (SSL) to model soil organic carbon (SOC) and monitor, report, and verify (MRV) its changes. The reason is that increasing SOC can improve food production and mitigate climate change. However, 'global' modelling of SOC with such diverse and hyperdimensional SSLs do not generalise well locally, e.g. at a field scale. To address this challenge, we propose deep transfer learning (DTL) to leverage useful information from large-scale SSLs to assist local modelling. We used one global, three country-specific SSLs and data from three local sites with DTL to improve the modelling and localise the SOC estimates in individual fields or farms in each country. With DTL, we transferred instances from the SSLs, representations from one-dimensional convolutional neural networks (1DCNNs) trained on the SSLs, and both instances and representations to improve local modelling. Transferring instances effectively used information from the global SSL to most accurately estimate SOC in each site, reducing the root mean square error (RMSE) by 25.8% on average compared with local modelling. Our results highlight the effectiveness of DTL and the value of diverse, global SSLs for accurate local SOC predictions. Applying DTL with a global SSL one could estimate SOC anywhere in the world more accurately, rapidly, and cost-effectively, enabling MRV protocols to monitor SOC changes.
Soil organic carbon; Visible -near-infrared spectra; Transfer learning; Deep learning; Spectral library
ISPRS Journal of Photogrammetry and Remote Sensing
2022, volume: 188, pages: 190-200
Publisher: ELSEVIER
Remote Sensing
Soil Science
https://res.slu.se/id/publ/117328