Postdoc in Sensing Data Analysis, Aarhus University, Denmark

Postdoc Position in Denmark, Aarhus University Denmark

Postdoc in Sensing Data Analysis: Join the Department of Electrical and Computer Engineering at Aarhus University for a one-year postdoctoral position focused on deep learning for remote sensing data analysis, aimed at improving sustainable water management through AI-driven solutions.

Postdoc in Deep Learning Based Remote Sensing Data Analysis

Designation

Postdoctoral Researcher in Deep Learning Based Remote Sensing Data Analysis


DetailInformation
Research AreaDeep Learning, Remote Sensing, Groundwater Management
LocationAarhus University, Finlandsgade 22, 8200 Aarhus N, Denmark
Duration of EmploymentInitial 1-year term (15 Apr 2026 – 14 Apr 2027), with a potential 1-year extension
Expected Start DateApril 15, 2026, or as soon as possible thereafter

Eligibility/Qualification

  • Educational Background: PhD in Electrical Engineering, Computer Engineering, Geoinformatics, Computer Science, or related fields with a focus on deep learning applied to remote sensing or geospatial data.
  • Experience:
  • Documented experience in deep learning model development (e.g., CNNs, UNets, Transformers).
  • Experience with satellite data, particularly SAR and multi-spectral imagery.
  • Proficiency in Python and familiarity with deep learning frameworks (e.g., PyTorch).
  • Strong understanding of geospatial data handling, time series analysis, and model evaluation metrics.
  • Publication Record: Strong track record relative to career stage.
  • Communication Skills: Excellent written and spoken English.

Preferred Qualifications:

  • Experience with deep learning analysis of satellite soil moisture missions (e.g., SMAP, SMOS).
  • Knowledge of super-resolution techniques and explainable AI methods (e.g., Shapley values).
  • Experience in collaborative, cross-cultural research environments.

Job Description

The postdoctoral researcher will develop, evaluate, and interpret deep learning models for multi-sensor satellite data, focusing on challenges such as spatiotemporal learning and super-resolution. Key responsibilities include:

  • Developing models for spatiotemporal fusion of satellite data (e.g., SAR and SMAP) targeting soil moisture.
  • Designing and evaluating architectures for remote sensing super-resolution.
  • Applying explainable AI methods to interpret model behavior and predictions.
  • Publishing research findings and contributing to outreach activities.
  • Collaborating with geophysicists and supervising students.

How to Apply

Interested candidates should submit their application via Aarhus Universityโ€™s recruitment system. The application must include:

  • Curriculum vitae
  • Degree certificate
  • List of publications
  • Statement of future research plans
  • Teaching portfolio (if applicable)

For reference letters, please state the refereeโ€™s contact information during your application.


Last Date to Apply

February 9, 2026, at 23:59 CET

For more information, please contact:

Assistant Professor Muhammad Rizwan Asif
Phone: +4560909831
Email: rizwanasif@ece.au.dk

For application-related inquiries:
Nat-Tech HR
Phone: +4520675285
Email: nat-tech.HR.team2@au.dk


Aarhus University is committed to diversity and encourages applications from all qualified candidates, especially women and individuals from underrepresented backgrounds in STEM fields.

Link

LEAVE A REPLY

Please enter your comment!
Please enter your name here