Details zur Publikation

Kategorie Textpublikation
Referenztyp Zeitschriften
DOI 10.3390/agronomy16070750
Lizenz creative commons licence
Titel (primär) Integrated Exploitation of Sentinel-1 Backscatter, Interferometric Coherence, and Texture Features for Digital Mapping of Soil Total Nitrogen Across the Iberian Peninsula
Autor Dai, D.; Zhang, H.; Geng, Y.; Zhou, T.; Li, H.; Liu, J.; Liu, T.; Lausch, A. ORCID logo ; Si, B.
Quelle Agronomy
Erscheinungsjahr 2026
Department CLE
Band/Volume 16
Heft 7
Seite von art. 750
Sprache englisch
Topic T5 Future Landscapes
Keywords earth observation; soil total nitrogen; Sentinel-1; Sentinel-2; soil mapping
Abstract Accurate mapping of soil total nitrogen (STN) is fundamental for advancing sustainable and precision soil management. While digital soil mapping (DSM) has increasingly relied on Earth observation (EO) data, the potential of various synthetic aperture radar (SAR) features, particularly interferometric coherence and texture, remains underexplored for large-scale STN prediction. This study aimed to systematically evaluate the potential of multiple Sentinel-1 SAR-derived features, including backscatter coefficients, interferometric coherence, and texture metrics, for modeling and mapping STN across the Iberian Peninsula. We integrated 4296 soil samples from the 2018 LUCAS dataset with multi-source environmental covariates processed via the Google Earth Engine (GEE) platform. Nine modeling scenarios were designed to compare individual and combined contributions of Sentinel-1, Sentinel-2, topographic, and climatic variables using random forest (RF) and extreme gradient boosting (XGBoost) algorithms. The results indicated that the selection of SAR-derived features significantly influences prediction accuracy. Among individual Sentinel-1 feature groups, texture metrics and interferometric coherence outperformed the traditionally used backscatter coefficients, emphasizing their effectiveness in STN mapping. Specifically, texture-based and coherence-based models achieved R2 values of 0.34 to 0.35 and 0.33, respectively, whereas backscatter-only models yielded the lowest accuracy (R2 = 0.29 to 0.30). The integration of all three radar categories substantially improved performance (R2 = 0.39 to 0.42), surpassing the performance of models based solely on Sentinel-2 optical data (R2 = 0.33 to 0.34). The most comprehensive model, which combined multi-source EO data with topographic and climatic variables, achieved the highest overall accuracy with R2 values of 0.51 for RF and 0.52 for XGBoost. Variable importance analysis confirmed that satellite-derived variables were the most influential group. Spatial predictions successfully captured the heterogeneity of STN across the peninsula, with higher concentrations in humid, mountainous regions and lower values in arid central plateaus and southern regions. This study demonstrates that integrating diverse Sentinel-1 radar information, particularly coherence and texture, provides a robust alternative or complement to optical data, offering a powerful tool for large-scale soil property mapping.
Dai, D., Zhang, H., Geng, Y., Zhou, T., Li, H., Liu, J., Liu, T., Lausch, A., Si, B. (2026):
Integrated Exploitation of Sentinel-1 Backscatter, Interferometric Coherence, and Texture Features for Digital Mapping of Soil Total Nitrogen Across the Iberian Peninsula
Agronomy-Basel 16 (7), art. 750
10.3390/agronomy16070750