AI RESEARCH

Specificity-aware reinforcement learning for fine-grained open-world classification

arXiv CS.CV

ArXi:2603.03197v3 Announce Type: replace Classifying fine-grained visual concepts under open-world settings, i.e., without a predefined label set, demands models to be both accurate and specific. Recent reasoning Large Multimodal Models (LMMs) exhibit strong visual understanding capability but tend to produce overly generic predictions when performing fine-grained image classification. Our preliminary analysis reveals that models do possess the intrinsic fine-grained domain knowledge.