Suggested by: Martin Sudmanns, Dirk Tiede
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Abrupt
changes in vegetation are easy to spot, gradual changes; however, such as those
resulting from disease are difficult to identify. |
Short description
Understanding the gradual loss of tree vitality is essential for
sustainable forest management, particularly in the face of climate change and
other environmental stressors. Long-term trends in forest health can be analysed
using Earth observation data. Sen2Cube.at is a semantic EO data cube, that enables
the analysis of large volumes of Sentinel-2 data semantically enriched over
extended periods to monitor changes in forest vitality.
The goal of this master thesis is to develop a workflow for detecting and analysing temporal changes in forest vitality using the Sen2Cube.at . This study, to be conducted in collaboration with the “Bundesforschungszentrum für Wald” will focus on making use of spectral indices and semantic layers to assess vitality loss in forests, with a specific focus on gradual changes.
A specific forest area will be selected as a case study, with results validated using in-situ measurement. The outcomes of this thesis are expected to enhance the understanding of long-term forest health trends and support evidence-based forest management strategies.
Suggested reading
Sudmanns, M., Augustin, H., van der Meer, L., Baraldi, A., & Tiede, D. (2021). The Austrian semantic EO data cube infrastructure. Remote Sensing, 13(23), 4807. https://www.mdpi.com/2072-4292/13/23/4807
Start
As soon as possible
Prerequisites/qualification
- Remote Sensing & GIS
- Basic Scripting/Programming (e.g., Python)
- Interest in the topic