2024
DOI: 10.21203/rs.3.rs-3933273/v1
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DFTGL: Domain Filtered and Target Guided Learning for Few-Shot Anomaly Detection

Jiajun Zhang,
Yanzhi Song,
Zhouwang Yang

Abstract: This paper addresses cross-domain challenges in few-shot anomaly detection, where utilizing various source domains leads to diminished representations and compromised detection in the target domain. To tackle this, we propose Domain Filtering and Target-Guided Learning (DFTGL). Initially, we measure domain gaps and retain source domains with smaller disparities. We introduce a limited number of target domain samples to create an intermediate domain for better feature transfer during training. Additionally, we … Show more

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