AI RESEARCH

Energy-Based Open-Set Active Learning for Object Classification

arXiv CS.LG

ArXi:2604.20083v1 Announce Type: new Active learning (AL) has emerged as a crucial methodology for minimizing labeling costs in deep learning by selecting the most valuable samples from a pool of unlabeled data for annotation. Traditional AL operates under a closed-set assumption, where all classes in the dataset are known and consistent. However, real-world scenarios often present open-set conditions in which unlabeled data contains both known and unknown classes. In such environments, standard AL techniques struggle.