AI RESEARCH

Reward-Guided Semantic Evolution for Test-time Adaptive Object Detection

arXiv CS.CV

ArXi:2605.04531v1 Announce Type: new Open-vocabulary object detection with vision-language models (VLMs) such as Grounding DINO suffers from performance degradation under test-time distribution shifts, primarily due to semantic misalignment between text embeddings and shifted visual embeddings of region proposals. While recent test-time adaptive object detection methods for VLM-based either rely on costly backpropagation or bypass semantic misalignment via external memory, none directly and efficiently align text and vision in a.