Research focus
The group’s research focuses mainly on:
- Development of robust, generalizable neural networks (CNNs, Deep Learning)
- Data-/Annotation-efficient models based on Semi-/Self-Supervised Learning (SSL)
- Outlier-detection and imputation of incomplete data records
- Reconstruction of image and video data. e.g., by means of super-resolution
- Segmentation problems, particularly MRI Brain Segmentation
- Quantification of uncertainties in classification problems
- Development of interpretable features to improve user-/patient-communication
- Evaluation of algorithm performance and quantification of data-biases
- Translation of research results into industry and medical workflows
- Quantification of human anatomy based on image data (MRI, X-ray, CT) in the context of diseases such as dementia, tumor and traumas