论文标题

使用三重态网络对工业表面的基于距离的异常检测

Distance-Based Anomaly Detection for Industrial Surfaces Using Triplet Networks

论文作者

Tayeh, Tareq, Aburakhia, Sulaiman, Myers, Ryan, Shami, Abdallah

论文摘要

表面异常检测在许多制造业中起重要的质量控制作用,以减少废品生产。近年来,已经利用基于机器的视觉检查来执行这项任务,而不是人类专家。特别是,由于其预测性准确性和效率,深度学习卷积神经网络(CNN)一直处于这些基于图像处理的解决方案的最前沿。在分类目标上培训CNN需要足够多的有缺陷的数据,这通常是不可用的。在本文中,我们通过以基于距离的异常检测目标训练CNN来解决该挑战。利用了深层基于残留的三重态网络模型,并通过随机擦除技术专门从非缺陷样品中合成有缺陷的训练样品,以直接学习相同级别样本和级别样本之间的相似性度量。评估结果证明了该方法在检测不同类型的异常(例如弯曲,断裂或破裂的表面)中的强度,这是训练数据的一部分和看不见的新表面的已知表面。

Surface anomaly detection plays an important quality control role in many manufacturing industries to reduce scrap production. Machine-based visual inspections have been utilized in recent years to conduct this task instead of human experts. In particular, deep learning Convolutional Neural Networks (CNNs) have been at the forefront of these image processing-based solutions due to their predictive accuracy and efficiency. Training a CNN on a classification objective requires a sufficiently large amount of defective data, which is often not available. In this paper, we address that challenge by training the CNN on surface texture patches with a distance-based anomaly detection objective instead. A deep residual-based triplet network model is utilized, and defective training samples are synthesized exclusively from non-defective samples via random erasing techniques to directly learn a similarity metric between the same-class samples and out-of-class samples. Evaluation results demonstrate the approach's strength in detecting different types of anomalies, such as bent, broken, or cracked surfaces, for known surfaces that are part of the training data and unseen novel surfaces.

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