NegRefine: Refining Negative Label-Based Zero-Shot OOD Detection
Ansari, Amirhossein, Wang, Ke, Xiong, Pulei
–arXiv.org Artificial Intelligence
Recent advancements in Vision-Language Models like CLIP have enabled zero-shot OOD detection by leveraging both image and textual label information. Among these, negative label-based methods such as NegLabel and CSP have shown promising results by utilizing a lexicon of words to define negative labels for distinguishing OOD samples. However, these methods suffer from detecting in-distribution samples as OOD due to negative labels that are subcategories of in-distribution labels or proper nouns. They also face limitations in handling images that match multiple in-distribution and negative labels. W e propose NegRefine, a novel negative label refinement framework for zero-shot OOD detection. By introducing a filtering mechanism to exclude subcategory labels and proper nouns from the negative label set and incorporating a multi-matching-aware scoring function that dynamically adjusts the contributions of multiple labels matching an image, NegRefine ensures a more robust separation between in-distribution and OOD samples. W e evaluate NegRefine on large-scale benchmarks, including ImageNet-1K.
arXiv.org Artificial Intelligence
Jul-22-2025
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