TY - JOUR
T1 - Real-IAD Variety
T2 - Pushing Industrial Anomaly Detection Dataset to a Modern Era
AU - Zhu, Wenbing
AU - Wang, Chengjie
AU - Gao, Bin Bin
AU - Zhang, Jiangning
AU - Jiang, Guannan
AU - Hu, Jie
AU - Gan, Zhenye
AU - Wang, Lidong
AU - Zhou, Ziqing
AU - Zhang, Jianghui
AU - Cheng, Linjie
AU - Pan, Yurui
AU - Peng, Bo
AU - Chi, Mingmin
AU - Ma, Lizhuang
N1 - Publisher Copyright:
© 2026 Elsevier Ltd
PY - 2026/10
Y1 - 2026/10
N2 - Industrial Anomaly Detection (IAD) is a cornerstone for ensuring operational safety, maintaining product quality, and optimizing manufacturing efficiency. However, the advancement of IAD algorithms is severely hindered by the limitations of existing public benchmarks. Current datasets often suffer from restricted category diversity and insufficient scale, leading to performance saturation and poor model transferability in complex, real-world scenarios. To bridge this gap, we introduce Real-IAD Variety, the largest and most diverse IAD benchmark. It comprises 198,950 high-resolution images across 160 distinct object categories. The dataset ensures unprecedented diversity by covering 28 industries, 24 material types, 22 color variations, and 27 defect types. Our extensive experimental analysis highlights the substantial challenges posed by this benchmark: state-of-the-art multi-class unsupervised anomaly detection methods suffer significant performance degradation (ranging from 10% to 20%) when scaled from 30 to 160 categories. Conversely, we demonstrate that zero-shot and few-shot IAD models exhibit remarkable robustness to category scale-up, maintaining consistent performance and significantly enhancing generalization across diverse industrial contexts. This unprecedented scale positions Real-IAD Variety as an essential resource for training and evaluating next-generation foundation IAD models.
AB - Industrial Anomaly Detection (IAD) is a cornerstone for ensuring operational safety, maintaining product quality, and optimizing manufacturing efficiency. However, the advancement of IAD algorithms is severely hindered by the limitations of existing public benchmarks. Current datasets often suffer from restricted category diversity and insufficient scale, leading to performance saturation and poor model transferability in complex, real-world scenarios. To bridge this gap, we introduce Real-IAD Variety, the largest and most diverse IAD benchmark. It comprises 198,950 high-resolution images across 160 distinct object categories. The dataset ensures unprecedented diversity by covering 28 industries, 24 material types, 22 color variations, and 27 defect types. Our extensive experimental analysis highlights the substantial challenges posed by this benchmark: state-of-the-art multi-class unsupervised anomaly detection methods suffer significant performance degradation (ranging from 10% to 20%) when scaled from 30 to 160 categories. Conversely, we demonstrate that zero-shot and few-shot IAD models exhibit remarkable robustness to category scale-up, maintaining consistent performance and significantly enhancing generalization across diverse industrial contexts. This unprecedented scale positions Real-IAD Variety as an essential resource for training and evaluating next-generation foundation IAD models.
KW - Foundation models
KW - Multi-Class unsupervised learning
KW - Zero-Shot and few-Shot anomaly detection
UR - https://www.scopus.com/pages/publications/105033240847
U2 - 10.1016/j.patcog.2026.113354
DO - 10.1016/j.patcog.2026.113354
M3 - 文章
AN - SCOPUS:105033240847
SN - 0031-3203
VL - 178
JO - Pattern Recognition
JF - Pattern Recognition
M1 - 113354
ER -