基于gan的卷积神经网络金属表面缺陷检测数据增强

Ling-Shen Tseng, Chih-Hung Wu, Yi Han Chen, Chuing-Hui Tsai
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引用次数: 0

摘要

基于卷积神经网络(cnn)的人工智能自动光学检测(AI-AOI)是现代制造业中常用的缺陷检测方法,包括金属缺陷检测。然而,在大多数AOI应用中,缺陷的发生要比正常的少得多。由于训练数据的不平衡和发散性较小,基于cnn的缺陷模型表现不佳。本文研究了基于cnn的AOI在金属缺陷检测中的性能,并利用生成式人工智能技术进行数据增强。Wasserstein生成对抗网络(WGAN)用于生成负训练数据,并在训练AOI模型时增加散度。WGAN生成的数据与原始数据的相似度采用结构相似度指标(SSIM)进行评价。比较了WGAN增强前后用数据训练的10个CNN模型的性能。利用三个金属缺陷数据集对基于cnn的WGAN AOI性能进行了评价。实验结果表明,WGAN增强后的缺陷分类性能可提高1% ~ 12%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GAN-based Data Augmentation for Metal Surface Defect Detection Using Convolutional Neural Networks
Artificial Intelligence-based Automated Optical Inspection (AI-AOI) using Convolutional Neural Networks (CNNs) is commonly used for defect detection, including metal defect detection, in modern manufacturing. However, in most AOI applications, the occurrence of defects is much less than the normal ones. CNN-based defection models perform poorly due to the imbalanced and less divergent training data. This study presents the performance of CNN-based AOI for metal defect detection with the techniques of generative AI for data augmentation. The Wasserstein Generative Adversarial Network (WGAN) is employed for generating negative training data and increasing the divergence when training AOI models. The similarity of data generated by WGAN to the original ones is evaluated by the Structural Similarity Index Measure (SSIM). The performance of ten CNN models trained with data before and after being augmented by WGAN are compared. Three metal defect datasets are used for evaluating the performance of CNN-based AOI with WGAN. The experimental results show that the performance of defect classification can be improved by 1%-12% with data augmented by WGAN.
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