AdapTS: Lightweight Teacher-Student Approach for Multi-Class and Continual Visual Anomaly Detection
arXiv cs.CV / 3/19/2026
💬 OpinionTools & Practical UsageModels & Research
Key Points
- AdapTS proposes a unified teacher-student architecture that handles both multi-class and continual visual anomaly detection while being suitable for edge deployment.
- It uses a single shared frozen backbone with lightweight adapters injected into the student pathway, eliminating the need for two separate architectures.
- The training incorporates a segmentation-guided objective and synthetic Perlin noise, plus a prototype-based task identification mechanism that dynamically selects adapters at inference with about 99% accuracy.
- Experimental results on MVTec AD and VisA show comparable performance to existing TS methods while achieving drastically reduced memory overhead, with AdapTS-S using only 8 MB of additional memory (significantly lower than STFPM, RD4AD, and DeSTSeg).
- The work demonstrates scalability for industrial edge environments, highlighting potential cost and deployment benefits in real-world inspection settings.
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