Metric-Based Meta-Learning for Cross-Domain Few-Shot Identification of Welding Defect

被引:3
作者
Xie, Tingli [1 ]
Huang, Xufeng [2 ]
Choi, Seung-Kyum [3 ]
机构
[1] Georgia Inst Technol, Atlanta, GA 30332 USA
[2] Huazhong Univ Sci & Technol, Wuhan 430074, Peoples R China
[3] Georgia Inst Technol, Atlanta, GA 30332 USA
关键词
welding defect identification; few-shot learning; meta-learning; cross-domain; prototypical network; artificial intelligence; data-driven engineering; machine learning for engineering applications; process modeling for engineering applications; FAULT-DIAGNOSIS; FUSION; SYSTEM;
D O I
10.1115/1.4056219
中图分类号
TP39 [计算机的应用];
学科分类号
081203 ; 0835 ;
摘要
With the development of deep learning and information technologies, intelligent welding systems have been further developed, which achieve satisfactory identification of defective welds. However, the lack of labeled samples and complex working conditions can hinder the improvement of identification models. This paper explores a novel method based on metric-based meta-learning for the classification of welding defects with cross-domain few-shot (CDFS) problems. First, an embedding module using convolutional neural network (CNN) is applied to perform feature extraction and generate prototypes. The embedding module only contains one input layer, multiple convolutions, max-pooling operators, and batch normalization layers, which has the advantages of low computational cost and high generalization of images. Then the prototypical module using a prototypical network (PN) is proposed to reduce the influence of domain-shift caused by different materials or measurements using the representations in embedding space, which can improve the performance of few-shot welding defects identification. The proposed approach is verified on real welding defects under different welding conditions from the Camera-Welds dataset. For the K-shot classification on different tasks, the proposed method achieves the highest average testing accuracy compared to the existing methods. The results show the proposed method outperforms the model-based meta-learning (MAML) and transfer-learning method.
引用
收藏
页数:6
相关论文
共 31 条
  • [1] Image-Based Surface Defect Detection Using Deep Learning: A Review
    Bhatt, Prahar M.
    Malhan, Rishi K.
    Rajendran, Pradeep
    Shah, Brual C.
    Thakar, Shantanu
    Yoon, Yeo Jung
    Gupta, Satyandra K.
    [J]. JOURNAL OF COMPUTING AND INFORMATION SCIENCE IN ENGINEERING, 2021, 21 (04)
  • [2] Application of sensing techniques and artificial intelligence-based methods to laser welding real-time monitoring: A critical review of recent literature
    Cai, Wang
    Wang, JianZhuang
    Jiang, Ping
    Cao, LongChao
    Mi, GaoYang
    Zhou, Qi
    [J]. JOURNAL OF MANUFACTURING SYSTEMS, 2020, 57 : 1 - 18
  • [3] Deep learning approach for defective spot welds classification using small and class-imbalanced datasets
    Dai, Wei
    Li, Dayong
    Tang, Ding
    Wang, Huamiao
    Peng, Yinghong
    [J]. NEUROCOMPUTING, 2022, 477 : 46 - 60
  • [4] A Multi-Sensor Data Fusion System for Laser Welding Process Monitoring
    Deng, Fuqin
    Huang, Yongshen
    Lu, Song
    Chen, Yingying
    Chen, Jia
    Feng, Hua
    Zhang, Jianmin
    Yang, Yong
    Hu, Junjie
    Lam, Tin Lun
    Xia, Fengbin
    [J]. IEEE ACCESS, 2020, 8 : 147349 - 147357
  • [5] Research and prospect of welding monitoring technology based on machine vision
    Fan, Xi'an
    Gao, Xiangdong
    Liu, Guiqian
    Ma, Nvjie
    Zhang, Yanxi
    [J]. INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2021, 115 (11-12) : 3365 - 3391
  • [6] Meta-learning as a promising approach for few-shot cross-domain fault diagnosis: Algorithms, applications, and prospects
    Feng, Yong
    Chen, Jinglong
    Xie, Jingsong
    Zhang, Tianci
    Lv, Haixin
    Pan, Tongyang
    [J]. KNOWLEDGE-BASED SYSTEMS, 2022, 235
  • [7] Weld Defect Detection From Imbalanced Radiographic Images Based on Contrast Enhancement Conditional Generative Adversarial Network and Transfer Learning
    Guo, Runyuan
    Liu, Han
    Xie, Guo
    Zhang, Youmin
    [J]. IEEE SENSORS JOURNAL, 2021, 21 (09) : 10844 - 10853
  • [8] Deep features based on a DCNN model for classifying imbalanced weld flaw types
    Hou, Wenhui
    Wei, Ye
    Jin, Yi
    Zhu, Changan
    [J]. MEASUREMENT, 2019, 131 : 482 - 489
  • [9] A Transfer Learning-Based Multi-Fidelity Point-Cloud Neural Network Approach for Melt Pool Modeling in Additive Manufacturing
    Huang, Xufeng
    Xie, Tingli
    Wang, Zhuo
    Chen, Lei
    Zhou, Qi
    Hu, Zhen
    [J]. ASCE-ASME JOURNAL OF RISK AND UNCERTAINTY IN ENGINEERING SYSTEMS PART B-MECHANICAL ENGINEERING, 2022, 8 (01):
  • [10] Deep Transfer Convolutional Neural Network and Extreme Learning Machine for lung nodule diagnosis on CT images
    Huang, Xufeng
    Lei, Qiang
    Xie, Tingli
    Zhang, Yahui
    Hu, Zhen
    Zhou, Qi
    [J]. KNOWLEDGE-BASED SYSTEMS, 2020, 204