Graph-Based Active Learning With Uncertainty and Representativeness for Industrial Anomaly Detection

被引:7
作者
Xiao, Kanhong [1 ]
Cao, Jiangzhong [1 ]
Zeng, Zekai [1 ]
Ling, Wing-Kuen [1 ]
机构
[1] Guangdong Univ Technol, Sch Informat Engn, Guangzhou 510006, Peoples R China
基金
中国国家自然科学基金;
关键词
Anomaly detection; Labeling; Uncertainty; Task analysis; Manuals; Production; Feature extraction; Active learning; anomaly detection; autoencoder (AE); automated optical inspection (AOI); graph-based method; QUERY STRATEGIES; CLASSIFICATION;
D O I
10.1109/TIM.2023.3279422
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
Anomaly detection is essential for automated industrial production. Sufficiently labeled samples play an important role in improving the detection capability of the model. However, existing anomaly detection methods cannot balance the detection performance against the labeling cost in practice owing to the lack of an effective and efficient sample selection strategy. To address this issue, a graph-based active anomaly detection (AAD) method called GAAD is proposed in this article. In the proposed method, a graph structure is adopted to rapidly spread the labeling information, and a heuristic strategy is designed to select samples combined with uncertainty and representativeness, which can rapidly and adequately explore the sample distribution with limited labeled samples. Moreover, a simple but effective autoencoder (AE) is proposed to confuse low-level features and preserve the locality by a pretrained model, which achieves a better image encoding and anomaly detection performance. We created a new through-hole technology (THT) solder joint dataset and conducted extensive comparative experiments with mainstream active and semisupervised anomaly detection methods on both the THT and the publicly available NEU datasets. In the experiments, GAAD achieved the best detection performance and had an extremely low update time of 0.0071 s during active learning, demonstrating its superiority for industrial applications.
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收藏
页数:14
相关论文
共 74 条
  • [1] Graph Regularized Autoencoder and its Application in Unsupervised Anomaly Detection
    Ahmed, Imtiaz
    Galoppo, Travis
    Hu, Xia
    Ding, Yu
    [J]. IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2022, 44 (08) : 4110 - 4124
  • [2] GANomaly: Semi-supervised Anomaly Detection via Adversarial Training
    Akcay, Samet
    Atapour-Abarghouei, Amir
    Breckon, Toby P.
    [J]. COMPUTER VISION - ACCV 2018, PT III, 2019, 11363 : 622 - 637
  • [3] A support vector method for anomaly detection in hyperspectral imagery
    Banerjee, Amit
    Burlina, Philippe
    Diehl, Chris
    [J]. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2006, 44 (08): : 2282 - 2291
  • [4] Bergman L, 2020, Arxiv, DOI arXiv:2002.10445
  • [5] Uninformed Students: Student-Teacher Anomaly Detection with Discriminative Latent Embeddings
    Bergmann, Paul
    Fauser, Michael
    Sattlegger, David
    Steger, Carsten
    [J]. 2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR), 2020, : 4182 - 4191
  • [6] MVTec AD - A Comprehensive Real-World Dataset for Unsupervised Anomaly Detection
    Bergmann, Paul
    Fauser, Michael
    Sattlegger, David
    Steger, Carsten
    [J]. 2019 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION (CVPR 2019), 2019, : 9584 - 9592
  • [7] LOF: Identifying density-based local outliers
    Breunig, MM
    Kriegel, HP
    Ng, RT
    Sander, J
    [J]. SIGMOD RECORD, 2000, 29 (02) : 93 - 104
  • [8] Hyperspectral Image Classification With Convolutional Neural Network and Active Learning
    Cao, Xiangyong
    Yao, Jing
    Xu, Zongben
    Meng, Deyu
    [J]. IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2020, 58 (07): : 4604 - 4616
  • [9] Cohen N, 2021, Arxiv, DOI arXiv:2005.02357
  • [10] Cunhe L., 2010, PROC 2 INT C FUTURE, V3, pV3