Master's thesis; Machine learning and Earth observation data for monitoring nature restoration
The EU’s new nature restoration law and Sweden’s biodiversity targets put strong emphasis on recovering semi-natural grasslands and open habitats – systems that store carbon and host pollinators and other species. However, they depend on well-timed grazing to maintain their potential to host these species. Many of those areas are in need for restoration and would be considered to be included in new restoration projects. Yet verifying where and when nature restoration occurs is difficult; field inspections are expensive and sparse, and self-reports are noisy. Earth observation (EO) can potentially streamline this significantly – satellites like Sentinel-2 provide free, multi-spectral imagery every few days over all of Sweden. The challenge, and opportunity, is to turn these raw time series into operational, trustworthy signals about restoration on the ground.
The thesis is part of the 2-year ongoing project “AI-based remote sensing for monitoring nature restoration and landscape elements at farm level” (https://www.rymdstyrelsen.se/innovation/beviljade-bidrag/rymdtillampningsprogrammet-2024-3/ai-basera...), where Arla is a key actor and stakeholder, and with stakeholders also including the Swedish Board of Agriculture and the Swedish Environmental Protection Agency.
Related reading:
• EU Nature Restoration Regulations: https://environment.ec.europa.eu/topics/nature-and-biodiversity/nature-restoration-regulation_en
• Swedish Board of Agriculture about nature restoration (Swedish): https://jordbruksverket.se/vaxter/odling/biologisk-mangfald/naturrestaurerings-forordningen
• The Swedish Environmental Protection Agency about nature restoration (Swedish): https://www.naturvardsverket.se/amnesomraden/mark-och-vattenanvandning/eu-forordning-for-att-restaur...
Description
In this master thesis, you will develop and train machine learning (ML) models for monitoring nature restoration in Swedish pastures, based on multi-year time series of satellite data. The work will include e.g. (i) preprocess existing nature restoration data to make it ML-ready; (ii) develop and implement ML method(s) in modern AI frameworks such as PyTorch; (iii) train and evaluate the ML methods and compare results with simpler / non-ML-based approaches.
The work requires students with skills in machine learning, image processing, and preferably also remote sensing, GIS and/or ecology. You will be expected to start out with a literature study, then begin with simpler models and eventually extend or develop more advanced solutions. As this is a master thesis project with a research organization, we will help you reach a high level of research excellence, and a successful project will ideally result in writing a joint research paper in addition to the master thesis.
Key Responsibilities
- Data handling and processing, to make data “ML-ready”
• Machine learning model development and implementation
• Training and evaluation of machine learning models
• Literature study
• Writing and defending a master thesis
• Recurrent presentations of project progress
Qualifications
Required skills:
• Experience of implementing machine learning models
• Courses in machine learning, image analysis, and similar
• Programming skills, with experience of relevant frameworks such as PyTorch
Preferred skills:
• Courses / expertise in GIS, remote sensing, or similar
• Courses / expertise in ecology and similar
We encourage students to pair up with their applications and work together on the project. Each person should submit an individual application, but please mark in the respective applications with whom you propose to work with and emphasize how your experiences and skillsets complement each other for the benefit of this project
Terms
• Location: Lund
• Time: January to June, 2026
• Credits: 30 ECTS
• Suitable for a team of two students. Team up and apply together with someone.
What we offer
• An opportunity to work in a multi-disciplinary team which includes AI, remote sensing and ecology researchers.
• Working at the intersection AI-conservation, in particular toward recent nature restoration goals and targets, can have actual downstream impact in the real world.
• Access to relevant data as well as computational resources.
• Office space will be provided at RISE Lund.
• After a successful project completion, RISE will pay each student SEK 30,000 (before taxes).
Welcome with your application!
Application process: Interested candidates should submit the following in TeamsTailor by November 14:
• A curriculum vitae (CV);
• A brief cover letter mentioning motivation and relevant experience (mention relevant meriting projects and experience only);
• Academic transcripts.
Contact; aleksis.pirinen@ri.se
Supervisors at RISE: Dr. Aleksis Pirinen (aleksis.pirinen@ri.se), Dr. Delia Fano Yela (delia.fano.yela@ri.se) and Dr. Georg Andersson (georg.andersson@ri.se)
- Category
- Student - Thesis
- Locations
- Lund
- Remote status
- Hybrid
About RISE Research Institutes of Sweden AB
RISE is Sweden’s research institute and innovation partner. Through our international collaboration programmes with industry, academia and the public sector, we ensure the competitiveness of the Swedish business community on an international level and contribute to a sustainable society. Our almost 3300 employees engage in and support all types of innovation processes. RISE is an independent, State-owned research institute, which offers unique expertise and over 130 testbeds and demonstration environments for future-proof technologies, products and services.