EAGLE MSc Defense: Evaluating the Potential of a Deep Learning Framework for Detecting Mowing Events in German Grasslands with Sentinel-1 InSAR Coherence

EAGLE MSc Defense: Evaluating the Potential of a Deep Learning Framework for Detecting Mowing Events in German Grasslands with Sentinel-1 InSAR Coherence

May 19, 2026

On May 22, 2026, Laura Obrecht will present her Master Thesis on ” Evaluating the Potential of a Deep Learning Framework for Detecting Mowing Events in German Grasslands with Sentinel-1 InSAR Coherence” at 11:00 a.m. in room 01.B.03 (EORC meeting room 1st floor).
From the abstract: Monitoring grassland management intensity is essential for agricultural monitoring, biodiversity assessment, and policy support. Satellite-based detection of mowing events has primarily relied on optical data, which is limited by cloud cover and illumination conditions. Synthetic Aperture Radar (SAR), and in particular interferometric coherence derived from Sentinel-1, provides a weather-independent alternative that is sensitive to structural changes in vegetation. This study presents the first Germany-wide implementation of a high-temporal resolution (6-day) Sentinel-1 coherence processing pipeline for mowing detection. Building on this dataset, a one-dimensional convolutional neural network (1D-CNN) was trained on coherence time series sequences using weak supervision derived from an existing Sentinel-2-based mowing product. The model was designed to detect mowing events solely from temporal coherence dynamics and evaluated both at pixel level and after aggregation to spatial management units. Results show that coherence is a viable predictor for mowing events, capturing structural changes associated with biomass removal. Spatial aggregation to parcel-like units substantially improves the robustness and interpretability of the results by reducing speckle-related noise and enforcing realistic spatial patterns. The combination of coherence-based predictions with optical vegetation indices yields a more balanced detection product, increasing recall while maintaining acceptable precision. Overall, this study demonstrates that multi-sensor fusion of Sentinel-1 coherence and optical data enables robust, large-scale monitoring of grassland mowing events. The proposed methodology is transferable across regions and years and provides a foundation for operational monitoring of grassland management intensity under varying environmental conditions.
1st supervisor: Prof. Dr. Tobias Ullmann 2nd (external) supervisor: Dr. Sophie Reinermann, DLR

follow us and share it on:

you may also like:

Internship Presentation: Clemens Schömig at Allianz Reinsurance

Internship Presentation: Clemens Schömig at Allianz Reinsurance

Clemens's talk highlighted how geodata analysis is crucial for quantifying spatial risks, like floods and hurricanes. Reinsurance companies use this data to develop optimal products and monitor large asset portfolios, taking action if a significant portion is exposed...

Life in Science: voices from Würzburg & Mwanza

Life in Science: voices from Würzburg & Mwanza

Last winter semester, our EAGLE students, together with students from Museum Studies and ERASMUS+, worked intensively in a dedicated course to develop and curate the exhibition “Stories from Two Cities – Living with Science!” . Their work brings together perspectives,...

Contributions to the European Space Imaging conference

Contributions to the European Space Imaging conference

The European Space Imaging (EUSI) conference took place in Munich from the 18th to the 20th of May 2026 – https://www.euspaceimaging.com/eusi-conference-2026 . On Monday, the conference offered a visit to our "Center for satellite based crises information...

Share This