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制造业缺陷检测中的少样本学习

Few-shot learning for defect detection in manufacturing

International Journal of Production Research · 2024
被引 32 · 同刊同年前 7%
ABS 3

中文导读

研究了将少样本学习与无监督异常图方法结合,减少标注需求,并在真实制造数据集上验证了其与经典监督学习相当的检测性能,同时提出主动学习采样策略提升初始支持集效果。

Abstract

Quality control is being increasingly automatised in the context of Industry 4.0. Its automatisation reduces inspection times and ensures the same criteria are used to evaluate all products. One of the challenges when developing supervised machine learning models is the availability of labelled data. Few-shot learning promises to be able to learn from few samples and, therefore, reduce the labelling effort. In this work, we combine this approach with unsupervised methods that learn anomaly maps on unlabelled data, providing additional information to the model and enhancing the classification models' discriminative capability. Our results show that the few-shot learning models achieve competitive results compared to those trained in a classical supervised classification setting. Furthermore, we develop novel active learning data sampling strategies to label an initial support set. The results show that using sampling strategies to create and label the initial support set yields better results than selecting samples at random. We performed the experiments on four datasets considering real-world data provided by Philips Consumer Lifestyle BV and Iber-Oleff - Componentes Tecnicos Em Plástico, S.A.

质量控制少样本学习缺陷检测主动学习无监督学习