Alternative Data Augmentation for Industrial Monitoring using Adversarial Learning

Silvan Mertes, A. Margraf, Steffen Geinitz, Elisabeth Andr'e
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引用次数: 1

Abstract

Visual inspection software has become a key factor in the manufacturing industry for quality control and process monitoring. Semantic segmentation models have gained importance since they allow for more precise examination. These models, however, require large image datasets in order to achieve a fair accuracy level. In some cases, training data is sparse or lacks of sufficient annotation, a fact that especially applies to highly specialized production environments. Data augmentation represents a common strategy to extend the dataset. Still, it only varies the image within a narrow range. In this article, a novel strategy is proposed to augment small image datasets. The approach is applied to surface monitoring of carbon fibers, a specific industry use case. We apply two different methods to create binary labels: a problem-tailored trigonometric function and a WGAN model. Afterwards, the labels are translated into color images using pix2pix and used to train a U-Net. The results suggest that the trigonometric function is superior to the WGAN model. However, a precise examination of the resulting images indicate that WGAN and image-to-image translation achieve good segmentation results and only deviate to a small degree from traditional data augmentation. In summary, this study examines an industry application of data synthesization using generative adversarial networks and explores its potential for monitoring systems of production environments. \keywords{Image-to-Image Translation, Carbon Fiber, Data Augmentation, Computer Vision, Industrial Monitoring, Adversarial Learning.
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使用对抗学习的工业监测替代数据增强
视觉检测软件已成为制造业质量控制和过程监控的关键因素。语义分割模型变得越来越重要,因为它们允许更精确的检查。然而,这些模型需要大量的图像数据集才能达到相当的精度水平。在某些情况下,训练数据稀疏或缺乏足够的注释,这一事实尤其适用于高度专业化的生产环境。数据增强是扩展数据集的一种常用策略。尽管如此,它只能在一个狭窄的范围内改变图像。本文提出了一种增强小图像数据集的新策略。该方法应用于碳纤维的表面监测,这是一个特定的行业用例。我们应用两种不同的方法来创建二元标签:一个针对问题的三角函数和一个WGAN模型。然后,使用pix2pix将标签转换为彩色图像,并用于训练U-Net。结果表明,三角函数模型优于WGAN模型。然而,对结果图像的精确检查表明,WGAN和图像到图像的转换获得了良好的分割结果,仅与传统的数据增强有很小的偏差。总之,本研究考察了使用生成对抗网络的数据合成的行业应用,并探索了其在生产环境监控系统中的潜力。关键词:图像到图像转换,碳纤维,数据增强,计算机视觉,工业监控,对抗性学习。
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