Scegli la tua regione

Seleziona la regione che meglio si adatta alla tua posizione o alle tue preferenze.

Scegli la lingua del sito

Questa impostazione controlla la lingua dell'interfaccia utente, inclusi i pulsanti, i menu e tutto il testo del sito. Seleziona la tua lingua preferita per la migliore esperienza di navigazione.

Scegli le lingue per gli annunci di lavoro

Seleziona le lingue per gli annunci di lavoro che desideri vedere. Questa impostazione determina quali annunci di lavoro ti verranno mostrati.

PhD student in Habitat change mapping with historical aerial imagery and deep learning 100% (f/m/d)
Swiss Federal Institute for Forest, Snow and Landscape Research WSL

PhD student in Habitat change mapping with historical aerial imagery and deep learning 100% (f/m/d)

Unspecified
Salva lavoro

The Swiss Federal Institute for Forest, Snow and Landscape Research WSL is part of the ETH Domain. Approximately 600 people work on the sustainable use and protection of the environment and on the handling of natural hazards.


The Land Change Science research unit studies patterns and processes of land systems and their dynamics over various spatial and temporal scales. Within an SNSF funded project, the Remote Sensing group is offering a 4 year position as of September 1, 2025 or by arrangement, as a

PhD student in Habitat change mapping with historical aerial imagery and deep learning 100% (f/m/d)


You will map Swiss-wide distributions of habitat types at multiple time steps using historical aerial imagery and artificial intelligence methods for image classification including machine learning and deep learning. You will determine changes in Swiss habitats since the 1940s and investigate the implications for biodiversity and ecological connectivity. You will develop a flexible habitat typology that allows consistent mapping of habitat types over multiple time steps, despite differences in the quality and specifications of available remote sensing imagery. Furthermore, you will exchange and collaborate with relevant experts both inside and outside of the research group. You will present your results to professional audiences, and both publish in scientific journals and contribute to project reports or outreach publications.

 

You have a Master’s degree in environmental science, spatial ecology, computer vision or an equivalent field. Your sound understanding of land change science is complemented by your knowledge of artificial intelligence methods for image classification (e.g. CNN). Furthermore, you are skilled in the analysis of large extent Earth Observation data, where experience with black and white aerial imagery is an advantage. You work comfortably with statistical computing and scripting languages (e.g. R, Python, MATLAB). You are highly motivated to analyse and understand spatial data using sophisticated modelling methods and tools. Good communication and organisation skills, an excellent team spirit and fluency in English is fundamental, knowledge of a Swiss national language is an advantage.

Please send your complete application to Beatrice Lamprecht, Human Resources WSL, by uploading the requested documents through our webpage. Applications via email or post will not be considered. Dr Bronwyn Price, phone +41 (0)44 739 2819, will be happy to answer any questions or offer further information. WSL is committed to diversity and inclusion as core values. We actively promote gender equality and foster an open, inclusive work environment.

Zürcherstrasse 111, CH-8903 Birmensdorf
Website
Company-Video

Dettagli del lavoro

Titolo
PhD student in Habitat change mapping with historical aerial imagery and deep learning 100% (f/m/d)
Sede
Zürcherstrasse 111 Birmensdorf, Svizzera
Pubblicato
2025-05-16
Scadenza candidatura
Unspecified
Tipo di lavoro
Salva lavoro

Jobs from this employer

Mostrando lavori in Inglese, Spagnolo Modifica impostazioni

Informazioni sul datore di lavoro

The Swiss Federal Institute for Forest, Snow and Landscape Research is concerned with the use, development and protection of natural and urban spaces.

Visita la pagina del datore di lavoro

Questo potrebbe interessarti