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arXiv (Cornell University)
Human-Free Automated Prompting for Vision-Language Anomaly Detection: Prompt Optimization with Meta-guiding Prompt Scheme
June 2024 • P. C. Chen, Jerry Chun‐Wei Lin, Jia Ji, Feng-Hao Yeh, Chao‐Chun Chen
Pre-trained vision-language models (VLMs) are highly adaptable to various downstream tasks through few-shot learning, making prompt-based anomaly detection a promising approach. Traditional methods depend on human-crafted prompts that require prior knowledge of specific anomaly types. Our goal is to develop a human-free prompt-based anomaly detection framework that optimally learns prompts through data-driven methods, eliminating the need for human intervention. The primary challenge in this approach is the lack o…
Anomaly Detection
Computer Science
Artificial Intelligence
Physics
Mathematics
Mathematical Analysis
Condensed Matter Physics