Data Augmentation for Semantic Segmentation in the Context of Carbon Fiber Defect Detection using Adversarial Learning

Silvan Mertes, A. Margraf, Christoph Kommer, Steffen Geinitz, E. André
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引用次数: 7

Abstract

: Computer vision systems are popular tools for monitoring tasks in highly specialized production environ-ments. The training and configuration, however, still represents a time-consuming task in process automation. Convolutional neural networks have helped to improve the ability to detect even complex anomalies withouth exactly modeling image filters and segmentation strategies for a wide range of application scenarios. In recent publications, image-to-image translation using generative adversarial networks was introduced as a promising strategy to apply patterns to other domains without prior explicit mapping. We propose a new approach for generating augmented data to enable the training of convolutional neural networks for semantic segmentation with a minimum of real labeled data. We present qualitative results and demonstrate the application of our system on textile images of carbon fibers with structural anomalies. This paper compares the potential of image-to-image translation networks with common data augmentation strategies such as image scaling, rotation or mirroring. We train and test on image data acquired from a high resolution camera within an industrial monitoring use case. The experiments show that our system is comparable to common data augmentation approaches. Our approach extends the toolbox of semantic segmentation since it allows for generating more problem-specific training data from sparse input.
基于对抗学习的碳纤维缺陷检测中语义分割的数据增强
计算机视觉系统是高度专业化生产环境中监控任务的流行工具。然而,在过程自动化中,培训和配置仍然是一项耗时的任务。卷积神经网络通过精确建模图像滤波器和分割策略,帮助提高了检测复杂异常的能力,适用于广泛的应用场景。在最近的出版物中,使用生成对抗网络的图像到图像翻译被介绍为一种有前途的策略,可以在没有事先显式映射的情况下将模式应用于其他领域。我们提出了一种新的方法来生成增强数据,使卷积神经网络的语义分割训练与最小的真实标记数据。我们给出了定性结果,并演示了我们的系统在具有结构异常的碳纤维织物图像上的应用。本文比较了图像到图像转换网络与常见数据增强策略(如图像缩放、旋转或镜像)的潜力。我们在工业监控用例中对从高分辨率相机获取的图像数据进行训练和测试。实验表明,该系统可与常用的数据增强方法相媲美。我们的方法扩展了语义分割工具箱,因为它允许从稀疏输入生成更多特定于问题的训练数据。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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