CVMay 6, 2025

CXR-AD: Component X-ray Image Dataset for Industrial Anomaly Detection

arXiv:2505.03412v1h-index: 10
Originality Synthesis-oriented
AI Analysis

This provides a new benchmark for improving anomaly detection algorithms in industrial inspection, though it is incremental as it focuses on a specific domain.

The authors tackled the lack of publicly available X-ray datasets for internal defect detection in industrial components by constructing the CXR-AD dataset, which includes real-world X-ray images with annotations, and found that current anomaly detection algorithms suffer a 29.78% average performance degradation on it compared to existing benchmarks.

Internal defect detection constitutes a critical process in ensuring component quality, for which anomaly detection serves as an effective solution. However, existing anomaly detection datasets predominantly focus on surface defects in visible-light images, lacking publicly available X-ray datasets targeting internal defects in components. To address this gap, we construct the first publicly accessible component X-ray anomaly detection (CXR-AD) dataset, comprising real-world X-ray images. The dataset covers five industrial component categories, including 653 normal samples and 561 defect samples with precise pixel-level mask annotations. We systematically analyze the dataset characteristics and identify three major technical challenges: (1) strong coupling between complex internal structures and defect regions, (2) inherent low contrast and high noise interference in X-ray imaging, and (3) significant variations in defect scales and morphologies. To evaluate dataset complexity, we benchmark three state-of-the-art anomaly detection frameworks (feature-based, reconstruction-based, and zero-shot learning methods). Experimental results demonstrate a 29.78% average performance degradation on CXR-AD compared to MVTec AD, highlighting the limitations of current algorithms in handling internal defect detection tasks. To the best of our knowledge, CXR-AD represents the first publicly available X-ray dataset for component anomaly detection, providing a real-world industrial benchmark to advance algorithm development and enhance precision in internal defect inspection technologies.

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