基于stylegan3的陶瓷缺陷检测数据增强方法

Huimin Ou, Jianqi An, Xingjun Wang, Jianru Xiong, Xin Chen, Qingyi Wang
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引用次数: 0

摘要

深度学习是目前陶瓷缺陷检测的主流方法,它需要大量的缺陷样本来训练网络。然而,收集这些缺陷样本非常耗时,并且深度学习存在少量的学习问题。本研究提出了一种基于stylegan3的陶瓷缺陷检测数据增强方法,该方法可以生成陶瓷缺陷样本,从而减少数据采集工作量。实验表明,该方法使用的训练时间更少,训练过程更稳定,可以提高检测网络的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A StyleGAN3-Based Data Augmentation Method for Ceramic Defect Detection
Deep learning is currently the mainstream method for ceramic defect detection, and it requires a large number of defect samples to train the network. However, collecting these defect samples is very time-consuming and deep learning suffers from few-shot learning problems. In this study, a StyleGAN3-based data augmentation method for ceramic defect detection was proposed which can generate ceramic defect samples and thus reduce the data collection work. Experiments show that our method uses less training time, has a more stable training process, and can improve the accuracy of the detection network.
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