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Anomaly Detection Neural Network with Dual Auto-Encoders GAN and Its Industrial Inspection Applications

机译:双自动编码器GAN的异常检测神经网络及其工业检测应用

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摘要

Recently, researchers have been studying methods to introduce deep learning into automated optical inspection (AOI) systems to reduce labor costs. However, the integration of deep learning in the industry may encounter major challenges such as sample imbalance (defective products that only account for a small proportion). Therefore, in this study, an anomaly detection neural network, dual auto-encoder generative adversarial network (DAGAN), was developed to solve the problem of sample imbalance. With skip-connection and dual auto-encoder architecture, the proposed method exhibited excellent image reconstruction ability and training stability. Three datasets, namely public industrial detection training set, MVTec AD, with mobile phone screen glass and wood defect detection datasets, were used to verify the inspection ability of DAGAN. In addition, training with a limited amount of data was proposed to verify its detection ability. The results demonstrated that the areas under the curve (AUCs) of DAGAN were better than previous generative adversarial network-based anomaly detection models in 13 out of 17 categories in these datasets, especially in categories with high variability or noise. The maximum AUC improvement was 0.250 (toothbrush). Moreover, the proposed method exhibited better detection ability than the U-Net auto-encoder, which indicates the function of discriminator in this application. Furthermore, the proposed method had a high level of AUCs when using only a small amount of training data. DAGAN can significantly reduce the time and cost of collecting and labeling data when it is applied to industrial detection.
机译:最近,研究人员一直在研究将深度学习引入自动光学检查(AOI)系统中以降低人工成本的方法。但是,深度学习在行业中的集成可能会遇到重大挑战,例如样本失衡(缺陷产品仅占很小的比例)。因此,在本研究中,开发了一种异常检测神经网络,即双重自动编码器生成对抗网络(DAGAN),以解决样本不平衡的问题。该方法具有跳过连接和双重自动编码器架构,具有出色的图像重建能力和训练稳定性。使用三个数据集,即公共工业检测培训集,MVTec AD,手机屏幕玻璃和木材缺陷检测数据集,来验证DAGAN的检验能力。另外,提出了使用有限数量的数据进行训练以验证其检测能力的建议。结果表明,在这些数据集中的17个类别中,有13个类别中的DAGAN曲线下面积(AUC)优于以前的基于对抗网络的基于异常生成模型的异常检测模型,尤其是在变异性或噪声较高的类别中。最大的AUC改善为0.250(牙刷)。此外,所提出的方法比U-Net自动编码器具有更好的检测能力,这表明该应用中的鉴别器功能。此外,当仅使用少量训练数据时,所提出的方法具有高水平的AUC。当DAGAN应用于工业检测时,可以大大减少收集和标记数据的时间和成本。

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