ORIGINAL RESEARCH article
Front. Remote Sens.
Sec. Remote Sensing Time Series Analysis
Crop type mapping in the pre-Sentinel era using variable-length Landsat time-series and self-supervised learning
Provisionally accepted- University of Kassel, Kassel, Germany
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Crop type mapping is crucial for agricultural land cover monitoring and decision-making. State-of-the-art methods developed using recent Sentinel satellite data have already demonstrated their ability to accurately map crop types. However, crop type mapping for the pre-Sentinel era remains challenging due to the limited availability of higher spatial-and temporal-resolution data. This study addresses this knowledge gap by leveraging variable-length Landsat satellite time-series (L-SITS) data in combination with a self-supervised learning model, SITS-BERT, for crop type mapping. This case study, conducted in two German districts, demonstrates the potential of mapping two different crop type levels (CTL1 - 5 and CTL2 - 9 classes) in the pre-Sentinel era. The SITS-BERT model, pre-trained on unlabelled L-SITS data, was fine-tuned on single-year and three-year datasets and evaluated using past and future years' data, compared with the model's training data. The SITS-BERT model achieved overall accuracies of 0.78-0.83 and 0.64-0.76 for CTL1 and CTL2, respectively, with fine-tuning on single-year data. The model fine-tuned with three years achieved higher accuracies (0.81-0.85 and 0.72-0.78). The results showed that the SITS-BERT model finetuned with single-year data outperforms the baseline random forest model trained on single-year fixed-length L-SITS data. The study highlighted that, with this approach, limited number of available SITS observations can still be useful. The findings of this study demonstrated the potential of the SITS-BERT model with L-SITS data for crop-type mapping in the pre-Sentinel era, contributing to a more comprehensive understanding of agricultural land cover dynamics and to the evaluation of agricultural policy impacts.
Keywords: Crop mapping, deep learning, satellite image time-series (SITS), SITS-BERT, transformers
Received: 06 Jan 2026; Accepted: 09 Feb 2026.
Copyright: © 2026 Wijesingha and Beila. This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) or licensor are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
* Correspondence: Jayan Wijesingha
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