CLRiuS: Contrastive Learning for intrinsically unordered Steel Scrap

Michael Schäfer , Ulrike Faltings , Björn Glaser
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引用次数: 0

Abstract

There has been remarkable progress in the field of Deep Learning and Computer Vision, but there is a lack of freely available labeled data, especially when it comes to data for specific industrial applications. However, large volumes of structured, semi-structured and unstructured data are generated in industrial environments, from which meaningful representations can be learned. The effort required for manual labeling is extremely high and can often only be carried out by domain experts. Self-supervised methods have proven their effectiveness in recent years in a wide variety of areas such as natural language processing or computer vision. In contrast to supervised methods, self-supervised techniques are rarely used in real industrial applications. In this paper, we present a self-supervised contrastive learning approach that outperforms existing supervised approaches on the used scrap dataset. We use different types of augmentations to extract the fine-grained structures that are typical for this type of images of intrinsically unordered items. This extracts a wider range of features and encodes more aspects of the input image. This approach makes it possible to learn characteristics from images that are common for applications in the industry, such as quality control. In addition, we show that this self-supervised learning approach can be successfully applied to scene-like images for classification.

CLRiuS:针对内在无序废钢的对比学习
深度学习和计算机视觉领域取得了令人瞩目的进展,但却缺乏可免费获取的标注数据,尤其是涉及特定工业应用的数据。然而,工业环境中会产生大量结构化、半结构化和非结构化数据,从中可以学习到有意义的表征。人工标注所需的工作量非常大,通常只能由领域专家来完成。近年来,自监督方法已在自然语言处理或计算机视觉等多个领域证明了其有效性。与监督方法相比,自监督技术在实际工业应用中很少使用。在本文中,我们提出了一种自监督对比学习方法,该方法在废料数据集上的表现优于现有的监督方法。我们使用不同类型的增强技术来提取细粒度结构,这种结构在这类无序物品图像中非常典型。这样可以提取更广泛的特征,并对输入图像的更多方面进行编码。这种方法使得从质量控制等行业应用中常见的图像中学习特征成为可能。此外,我们还展示了这种自我监督学习方法可成功应用于场景类图像的分类。
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来源期刊
Machine learning with applications
Machine learning with applications Management Science and Operations Research, Artificial Intelligence, Computer Science Applications
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审稿时长
98 days
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