AI RESEARCH

TALON: Test-time Adaptive Learning for On-the-Fly Category Discovery

arXiv CS.CV

ArXi:2603.08075v1 Announce Type: new On-the-fly category discovery (OCD) aims to recognize known categories while simultaneously discovering novel ones from an unlabeled online stream, using a model trained only on labeled data. Existing approaches freeze the feature extractor trained offline and employ a hash-based framework that quantizes features into binary codes as class prototypes. However, discovering novel categories with a fixed knowledge base is counterintuitive, as the learning potential of incoming data is entirely neglected. In addition, feature quantization