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A Data Reconstruction Method based on Adversarial Conditional Variational Autoencoder

机译:一种基于对抗条件变分性自动化器的数据重构方法

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Aiming at the problem of sample missing for magnetic flux leakage (MFL), a data reconstruction method based on conditional autoencoder (CVAE) and generative adversarial networks (GAN) is proposed. This method combines the advantages of CVAE and GAN, and generates high-quality samples steadily. The proposed CVAE-GAN method can not only reconstruct the missing MFL samples, but also generate a large amount of real and diverse defect sample, which solves the problem of low accuracy of the defect detection model due to insufficient samples and lack of diversity of samples. The defect sample are collected from the domestic in-service oil pipelines in experiments. The experimental results illustrate that the proposed method can effectively generate high-quality samples.
机译:针对磁通泄漏(MFL)缺失的样品问题,提出了一种基于条件自动化器(CVAE)和生成对抗网络(GAN)的数据重建方法。该方法结合了CVAE和GaN的优点,并稳定地产生了高质量的样本。所提出的CVAE-GaN方法不仅可以重建缺失的MFL样本,还可以产生大量的真实和多样的缺陷样本,这解决了由于样品不足和样品缺乏多样性而导致的缺陷检测模型的低精度问题。缺陷样品在实验中从国内供营商油管道中收集。实验结果说明了所提出的方法可以有效地产生高质量的样本。

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