Joshua Scheuplein MT final talk: A Foundation Model for X-Ray Imaging
Join us for the final presentation of a Master’s thesis that investigates the development of a versatile foundation model for medical X-ray image analysis. By adapting the self-supervised learning method DINO, the thesis explores how a large dataset of 632,000 unlabeled X-ray images can be used to train foundational backbones capable of extracting meaningful features for tasks like body region classification, metal implant segmentation, and screw object detection. The findings highlight the potential of foundation models to improve feature extraction in medical X-ray imaging while streamlining development processes at the same time.
03
Jul
9:00 am - 9:10 am
Diffusion Transformer for CT Artifacts Compensation — MT Intro by Ziye Wang
Thursday
03
Jul
9:00 am - 10:00 am
Fine-Tuning Foundation Models for X-Ray Image Segmentation – MT Intro Talk by Maeen Abdelbadea Nasralla Alikarrar
Thursday
10
Jul
9:00 am - 9:45 pm
MA final talk Somali Roy: Generation of Artificial Vessel Trees for X-ray Image Analysis
Thursday
17
Jul
9:00 am - 10:00 am
Deep Learning-based Classification of Body Regions in Intraoperative X-Ray Images – MT Intro Talk by Anindya Banerjee
Thursday
17
Jul
12:30 pm - 1:30 pm
MT Intro – Bipin Yadav: Self-Supervised Dual Domain SwinBF for Super Resolution of Low Dose CT
Thursday, Hybrid
24
Jul
9:00 am - 10:00 am
Development of an AI-Based Algorithm for the Correction of Moiré Artifacts in Digital Radiography – MT Intro Talk by Shadi Khamseh
Thursday
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