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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >CADN: A weakly supervised learning-based category-aware object detection network for surface defect detection
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CADN: A weakly supervised learning-based category-aware object detection network for surface defect detection

机译:CADN:用于表面缺陷检测的弱监督基于学习的学习类别感知对象检测网络

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摘要

Large-scale data with human annotations is of crucial importance for training deep convolutional neural network (DCNN) to ensure stable and reliable performance. However, accurate annotations, such as bounding box and pixel-level annotations, demand expensive labeling effort s, which has prevented wide application of DCNN in industries. Focusing on the problem of surface defect detection, this paper proposes a weakly supervised learning method named Category-Aware object Detection network (CADN) to tackle the dilemma. CADN is trained with image tag annotations only and performs image classification and defect localization simultaneously. The weakly supervised learning is achieved by extracting category aware spatial information in a classification pipeline. CADN could be equipped with either a lighter or a larger backbone network as the feature extractor resulting in better real-time performance or higher accuracy. To address the two conflicting objectives simultaneously, both of which are significant concerns in industrial applications, knowledge distillation strategy is adopted to force the learned features of a lighter CADN to mimic that of a larger CADN. Accordingly, the accuracy of the lighter CADN is improved while high real-time performance is maintained. The proposed approach is verified on our own defect dataset as well as on an open-source defect dataset. As demonstrated, satisfied performance is achieved by the proposed method, which could meet industrial requirements completely. Meanwhile, the method minimizes human effort s involved in image labelling, thus promoting the applications of DCNN in industries. (C) 2020 Elsevier Ltd. All rights reserved.
机译:具有人工标注的大规模数据对于训练深度卷积神经网络(DCNN)以确保稳定可靠的性能至关重要。然而,精确的标注,如边界框和像素级标注,需要昂贵的标注工作,这阻碍了DCNN在工业中的广泛应用。针对表面缺陷检测问题,提出了一种基于类别感知的目标检测网络(CADN)的弱监督学习方法。CADN只使用图像标签注释进行训练,同时执行图像分类和缺陷定位。弱监督学习是通过在分类管道中提取类别感知的空间信息来实现的。CADN可以配备更轻或更大的主干网络作为特征提取器,从而获得更好的实时性能或更高的精度。为了同时解决这两个相互冲突的目标,这两个目标在工业应用中都是非常重要的问题,我们采用了知识蒸馏策略,迫使较轻的CADN的学习特征模仿较大的CADN。因此,在保持高实时性能的同时,提高了轻型CADN的精度。该方法在我们自己的缺陷数据集以及开源缺陷数据集上得到了验证。实验结果表明,该方法取得了满意的性能,完全可以满足工业要求。同时,该方法最大限度地减少了人类在图像标记方面的努力,从而促进了DCNN在工业中的应用。(C) 2020爱思唯尔有限公司版权所有。

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