Leaving No OODInstance Behind: Instance-Level OODFine-Tuning for Anomaly Segmentation
–Neural Information Processing Systems
Out-of-distribution (OOD) fine-tuning has emerged as a promising approach for anomaly segmentation. Current OOD fine-tuning strategies typically employ global-level objectives, aiming to guide segmentation models to accurately predict a large number of anomaly pixels. However, these strategies often perform poorly on small anomalies. To address this issue, we propose an instance-level OOD fine-tuning framework, dubbed LNOIB (Leaving No OODInstance Behind). We start by theoretically analyzing why global-level objectives fail to segment small anomalies. Building on this analysis, we introduce a simple yet effective instancelevel objective. Moreover, we propose a feature separation objective to explicitly constrain the representations of anomalies, which are prone to be smoothed by their in-distribution (ID) surroundings. LNOIB integrates these objectives to enhance the segmentation of small anomalies and serves as a paradigm adaptable to existing OOD fine-tuning strategies, without introducing additional inference cost. Experimental results show that integrating LNOIB into various OOD fine-tuning strategies yields significant improvements, particularly in component-level results, highlighting its strength in comprehensive anomaly segmentation.
Neural Information Processing Systems
Jun-21-2026, 19:57:16 GMT
- Genre:
- Research Report
- Experimental Study (1.00)
- New Finding (0.88)
- Research Report
- Technology:
- Information Technology > Artificial Intelligence
- Vision (1.00)
- Natural Language (1.00)
- Representation & Reasoning (0.93)
- Robots (0.67)
- Machine Learning
- Performance Analysis > Accuracy (0.94)
- Neural Networks (0.67)
- Information Technology > Artificial Intelligence