AI RESEARCH

Multi-Rater Calibrated Segmentation Models

arXiv CS.CV

ArXi:2605.02437v1 Announce Type: new Objective: Accurate probability estimates are essential for the safe deployment of medical image segmentation models in clinical decision-making. However, modern deep segmentation networks are often poorly calibrated, a problem exacerbated when multiple expert annotations exhibit substantial disagreement. While inter-rater variability is typically treated as noise, it provides valuable information about intrinsic annotation ambiguity that must be reflected in model confidence.