CSPCL: Category Semantic Prior Contrastive Learning for Deformable DETR-Based Prohibited Item Detectors

arXiv — cs.CVWednesday, November 12, 2025 at 5:00:00 AM
The introduction of the Category Semantic Prior Contrastive Learning (CSPCL) mechanism marks a significant advancement in prohibited item detection using X-ray images, a method known for its effectiveness in security inspections. Traditional detectors struggle due to the unique foreground-background feature coupling in X-ray images, leading to poor performance. CSPCL addresses this issue by aligning class prototypes with content queries, thereby correcting and supplementing missing semantic information critical for accurate classification. The mechanism employs a specific contrastive loss, CSP loss, which includes Intra-Class Truncated Attraction (ITA) loss and Inter-Class Adaptive Repulsion (IAR) loss, both of which have been shown to outperform classic contrastive losses. Extensive experiments conducted on various datasets, including PIXray and OPIXray, demonstrate CSPCL's effectiveness and its potential for integration into Deformable DETR-based models, enhancing the sensitivity of …
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