AI RESEARCH

Leveraging Vision-Language Models as Weak Annotators in Active Learning

arXiv CS.CV

ArXi:2605.00480v1 Announce Type: new Active learning aims to reduce annotation cost by selectively querying informative samples for supervision under a limited labeling budget. In this work, we investigate how vision-language models (VLMs) can be leveraged to further reduce the reliance on costly human annotation within the active learning paradigm. To this end, we find that the reliability of VLMs varies significantly with label granularity in fine-grained recognition tasks: they perform poorly on fine-grained labels but can provide accurate coarse-grained labels.