A distribution-aware replay strategy for medical image segmentation mitigates forgetting through feature auto-encoding while detecting model failure from out-of-distribution instances, addressing privacy concerns and unexpected distribution shifts.
Jun 30, 2024
UNEG, a multi-model benchmark for continual learning in medical image segmentation, outperforms existing methods by maintaining separate networks for each training stage and using reconstruction error to select the appropriate model during inference, highlighting the importance of robust baselines over catastrophic forgetting prevention.
Feb 10, 2023