Publication Details

Category Text Publication
Reference Category Journals
DOI 10.3390/rs16091493
Licence creative commons licence
Title (Primary) Transferability of machine learning models for crop classification in remote sensing imagery using a new test methodology: s study on phenological, temporal, and spatial influences
Author Hoppe, H.; Dietrich, P. ORCID logo ; Marzahn, P.; Weiß, T.; Nitzsche, C.; Freiherr von Lukas, U.; Wengerek, T.; Borg, E.
Source Titel Remote Sensing
Year 2024
Department MET
Volume 16
Issue 9
Topic T5 Future Landscapes
Keywords machine learning; spatial transferability; crop classification; Sentinel-2
Abstract Machine learning models are used to identify crops in satellite data, which achieve high classification accuracy but do not necessarily have a high degree of transferability to new regions. This paper investigates the use of machine learning models for crop classification using Sentinel-2 imagery. It proposes a new testing methodology that systematically analyzes the quality of the spatial transfer of trained models. In this study, the classification results of Random Forest (RF), eXtreme Gradient Boosting (XGBoost), Stochastic Gradient Descent (SGD), Multilayer Perceptron (MLP), Support Vector Machines (SVM), and a Majority Voting of all models and their spatial transferability are assessed. The proposed testing methodology comprises 18 test scenarios to investigate phenological, temporal, spatial, and quantitative (quantitative regarding available training data) influences. Results show that the model accuracies tend to decrease with increasing time due to the differences in phenological phases in different regions, with a combined F1-score of 82% (XGBoost) when trained on a single day, 72% (XGBoost) when trained on the half-season, and 61% when trained over the entire growing season (Majority Voting).
Persistent UFZ Identifier https://www.ufz.de/index.php?en=20939&ufzPublicationIdentifier=29091
Hoppe, H., Dietrich, P., Marzahn, P., Weiß, T., Nitzsche, C., Freiherr von Lukas, U., Wengerek, T., Borg, E. (2024):
Transferability of machine learning models for crop classification in remote sensing imagery using a new test methodology: s study on phenological, temporal, and spatial influences
Remote Sens. 16 (9) 10.3390/rs16091493