MedicalCLIP: Anomaly-Detection Domain Generalization with Asymmetric Constraints
Liujie Hua,
Yueyi Luo,
Qianqian Qi
et al.
Abstract:Medical data have unique specificity and professionalism, requiring substantial domain expertise for their annotation. Precise data annotation is essential for anomaly-detection tasks, making the training process complex. Domain generalization (DG) is an important approach to enhancing medical image anomaly detection (AD). This paper introduces a novel multimodal anomaly-detection framework called MedicalCLIP. MedicalCLIP utilizes multimodal data in anomaly-detection tasks and establishes irregular constraints… Show more
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