CVNov 27, 2024

PAD-F: Prior-Aware Debiasing Framework for Long-Tailed X-ray Prohibited Item Detection

arXiv:2411.18078v42 citationsh-index: 18
Originality Incremental advance
AI Analysis

It addresses a critical domain-specific problem in security screening, offering an effective solution for long-tailed detection in X-ray imagery.

The paper tackles the problem of detecting prohibited items in X-ray security imagery, which suffers from a long-tailed class distribution, by introducing the Prior-Aware Debiasing Framework (PAD-F), achieving up to +17.2% AP50 improvement for tail classes.

Detecting prohibited items in X-ray security imagery is a challenging yet crucial task. With the rapid advancement of deep learning, object detection algorithms have been widely applied in this area. However, the distribution of object classes in real-world prohibited item detection scenarios often exhibits a distinct long-tailed distribution. Due to the unique principles of X-ray imaging, conventional methods for long-tailed object detection are often ineffective in this domain. To tackle these challenges, we introduce the Prior-Aware Debiasing Framework (PAD-F), a novel approach that employs a two-pronged strategy leveraging both material and co-occurrence priors. At the data level, our Explicit Material-Aware Augmentation (EMAA) component generates numerous challenging training samples for tail classes. It achieves this through a placement strategy guided by material-specific absorption rates and a gradient-based Poisson blending technique. At the feature level, the Implicit Co-occurrence Aggregator (ICA) acts as a plug-in module that enhances features for ambiguous objects by implicitly learning and aggregating statistical co-occurrence relationships within the image. Extensive experiments on the HiXray and PIDray datasets demonstrate that PAD-F significantly boosts the performance of multiple popular detectors. It achieves an absolute improvement of up to +17.2% in AP50 for tail classes and comprehensively outperforms existing state-of-the-art methods. Our work provides an effective and versatile solution to the critical problem of long-tailed detection in X-ray security.

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