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Towards automatic visual inspection: A weakly supervised learning method for industrial applicable object detection

机译:朝向自动目视检查:工业适用对象检测的弱化学习方法

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摘要

Industrial visual detection is an essential part in modern industry for equipment maintenance and inspection. With the recent progress of deep learning, advanced industrial object detectors are built for smart industrial applications. However, deep learning methods are known data-hungry: the processes of data collection and annotation are labor-intensive and time-consuming. It is especially impractical in industrial scenarios to collect publicly available datasets due to the inherent diversity and privacy. In this paper, we explore automation of industrial visual inspection and propose a segmentation-aggregation framework to learn object detectors from weakly annotated visual data. The used minimum annotation is only image-level category labels without bounding boxes. The method is implemented and evaluated on collected insulator images and public PASCAL VOC benchmarks to verify its effectiveness. The experiments show that our models achieve high detection accuracy and can be applied in industry to achieve automatic visual inspection with minimum annotation cost. (C) 2020 Elsevier B.V. All rights reserved.
机译:工业视觉检测是现代工业供维护和检查的重要组成部分。随着最近深入学习的进展,高级工业对象探测器是为智能工业应用而建立的。然而,深度学习方法是已知的数据饥饿:数据收集和注释的过程是劳动密集型和耗时的。由于固有的多样性和隐私,在工业情景中尤其是不切实际的。在本文中,我们探讨了工业视觉检查的自动化,并提出了分割 - 聚合框架,用于从弱辅助的视觉数据中学习对象探测器。使用的最小注释只是没有边界框的图像级别类别标签。该方法是在收集的绝缘体图像和公共帕斯卡VOC基准上实现和评估,以验证其有效性。实验表明,我们的模型实现了高检测精度,可应用于工业,以实现以最小的注释成本实现自动目视检查。 (c)2020 Elsevier B.V.保留所有权利。

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