This internship will focus on developing and benchmarking reconstruction algorithms for lensless structured illumination fluorescence imaging. The work will center on the computational pipeline that transforms multiplexed raw measurements into quantitatively reliable images, exploring a spectrum of approaches from physics-based inverse methods to data-driven schemes using modern machine learning. Depending on the student's background, tasks may include forward modelling, algorithm and network development, dataset generation, and the definition of application-oriented image quality metrics for high-throughput biological measurements.
Type of internship: Master internship
Required educational background: Computer Science, Electrotechnics/Electrical Engineering, Physics
Supervising scientist(s): For further information or for application, please contact Quentin Desmeth (< email deleted for security reasons >) and Steven Vanuytsel (< email deleted for security reasons >)
The reference code for this position is 2026-INT-054. Mention this reference code in your application.
Applications should include the following information:
- resume
- motivation
- current study
Incomplete applications will not be considered.