TY - JOUR
T1 - Reliable Anomaly Detection and Localization System
T2 - Implications on Manufacturing Industry
AU - Tang, Qing
AU - Jung, Hail
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2023
Y1 - 2023
N2 - Industry 4.0 has placed significant emphasis on interconnectivity, digitalization, and automation. Among the myriad innovative technologies that have surfaced, artificial intelligence (AI) stands out as especially instrumental in the development of fully autonomous factories. Product quality inspection is a critical component of industrial manufacturing. An accurate and reliable AI-based Anomaly Detection and Localization (ADL) system for industrial product quality inspection is essential in real-world manufacturing factories. Collecting massive anomalous products is difficult because the number of anomalous products is limited and rare in a realistic manufacturing scenario. Therefore, the paper treats the ADL problem as a cold-start challenge, training the defects inspection network only using nominal (non-defective) images. Significantly, the paper aims to bridge the gap between academic research and real-world manufacturing industry applications. The paper lists issues that current state-of-the-art academic research faces when applied in real-world manufacturing settings, then a Reliable Anomaly Detection and Localization (RADL) system is developed to solve the issues. RADL is improved in three aspects. Firstly, the common image pre-processing method is modified by considering the characteristics of real-world industrial images. Secondly, a Fake Defect Feature Augmentation (FDFA) strategy to mitigate the scarcity of real-world data. Thirdly, a Hardness-aware Cross-Entropy loss (HCELoss) is adopted to enhance the stability and reliability of the system. On the public MVTec AD benchmarks, the proposed RADL outperforms previous methods with 99.53% in I-AUROC, 97.85% in P-AUROC, and 91.60% in PRO. Furthermore, RADL is evaluated under industrial manufacturing settings in two real-world datasets collected from industrial production lines. The experimental results demonstrate the superiority of the proposed strategies in a public dataset and real-world manufacturing industrial environments.
AB - Industry 4.0 has placed significant emphasis on interconnectivity, digitalization, and automation. Among the myriad innovative technologies that have surfaced, artificial intelligence (AI) stands out as especially instrumental in the development of fully autonomous factories. Product quality inspection is a critical component of industrial manufacturing. An accurate and reliable AI-based Anomaly Detection and Localization (ADL) system for industrial product quality inspection is essential in real-world manufacturing factories. Collecting massive anomalous products is difficult because the number of anomalous products is limited and rare in a realistic manufacturing scenario. Therefore, the paper treats the ADL problem as a cold-start challenge, training the defects inspection network only using nominal (non-defective) images. Significantly, the paper aims to bridge the gap between academic research and real-world manufacturing industry applications. The paper lists issues that current state-of-the-art academic research faces when applied in real-world manufacturing settings, then a Reliable Anomaly Detection and Localization (RADL) system is developed to solve the issues. RADL is improved in three aspects. Firstly, the common image pre-processing method is modified by considering the characteristics of real-world industrial images. Secondly, a Fake Defect Feature Augmentation (FDFA) strategy to mitigate the scarcity of real-world data. Thirdly, a Hardness-aware Cross-Entropy loss (HCELoss) is adopted to enhance the stability and reliability of the system. On the public MVTec AD benchmarks, the proposed RADL outperforms previous methods with 99.53% in I-AUROC, 97.85% in P-AUROC, and 91.60% in PRO. Furthermore, RADL is evaluated under industrial manufacturing settings in two real-world datasets collected from industrial production lines. The experimental results demonstrate the superiority of the proposed strategies in a public dataset and real-world manufacturing industrial environments.
KW - anomaly detection
KW - autonomous factory
KW - Industry 40
KW - manufacturing industry
KW - system reliability
UR - http://www.scopus.com/inward/record.url?scp=85174816663&partnerID=8YFLogxK
U2 - 10.1109/ACCESS.2023.3324314
DO - 10.1109/ACCESS.2023.3324314
M3 - Article
AN - SCOPUS:85174816663
SN - 2169-3536
VL - 11
SP - 114613
EP - 114622
JO - IEEE Access
JF - IEEE Access
ER -