BGM: Background Mixup for X-ray Prohibited Items Detection
Prohibited item detection is crucial for ensuring public safety, yet current X-ray image-based detection methods often lack comprehensive data-driven exploration. This paper introduces a novel data augmentation approach tailored for prohibited item detection, leveraging unique characteristics inhere...
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Zusammenfassung: | Prohibited item detection is crucial for ensuring public safety, yet current
X-ray image-based detection methods often lack comprehensive data-driven
exploration. This paper introduces a novel data augmentation approach tailored
for prohibited item detection, leveraging unique characteristics inherent to
X-ray imagery. Our method is motivated by observations of physical properties
including: 1) X-ray Transmission Imagery: Unlike reflected light images,
transmitted X-ray pixels represent composite information from multiple
materials along the imaging path. 2) Material-based Pseudo-coloring:
Pseudo-color rendering in X-ray images correlates directly with material
properties, aiding in material distinction. Building on a novel perspective
from physical properties, we propose a simple yet effective X-ray image
augmentation technique, Background Mixup (BGM), for prohibited item detection
in security screening contexts. The essence is the rich background simulation
of X-ray images to induce the model to increase its attention to the
foreground. The approach introduces 1) contour information of baggage and 2)
variation of material information into the original image by Mixup at patch
level. Background Mixup is plug-and-play, parameter-free, highly generalizable
and provides an effective solution to the limitations of classical visual
augmentations in non-reflected light imagery. When implemented with different
high-performance detectors, our augmentation method consistently boosts
performance across diverse X-ray datasets from various devices and
environments. Extensive experimental results demonstrate that our approach
surpasses strong baselines while maintaining similar training resources. |
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DOI: | 10.48550/arxiv.2412.00460 |