Automated detection of textured-surface defects using UNet-based semantic segmentation network

Nastaran Enshaei, Safwan Ahmad, F. Naderkhani
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引用次数: 14

Abstract

Over the recent years, developing a reliable auto-mated visual inspection system/approach for manufacturing and industry sectors which are moving toward smart manufacturing operations faces lots of significant challenges. Traditional visual inspection techniques which are developed based on manually extracted features, can rarely be generalized and have shown weak performance in real applications in different industries. In this paper, we propose a novel and automated visual inspection system which can outperform the statistical methods in terms of detection and the quantification of anomalies in image data for performing critical industrial tasks such as detecting micro scratches on product. In particular, an end-to-end UNet-based fully convolutional neural network for automated defect detection in industrial surfaces is designed and developed. The proposed network has the capability to accept raw images as input and the output is pixel-wise masks. In order to avoid overfitting and improve the model generalization, we use real-time data augmentation approach during our training phase. To evaluate the performance of the proposed model, we use a publicly available data set containing ten different types of textured-surfaces with their associated weakly annotated masks. The findings indicate that despite working with roughly annotated labels, our results are in agreement with previous works and show improvements regarding the detection time.
基于unet语义分割网络的纹理表面缺陷自动检测
近年来,为制造业和工业部门开发可靠的自动化视觉检测系统/方法面临着许多重大挑战,这些部门正在向智能制造运营迈进。传统的视觉检测技术是基于人工提取的特征开发的,很难推广,在不同行业的实际应用中表现出较弱的性能。在本文中,我们提出了一种新颖的自动化视觉检测系统,该系统在检测和量化图像数据中的异常方面优于统计方法,用于执行关键的工业任务,如检测产品上的微划痕。特别地,设计和开发了一个端到端的基于unet的全卷积神经网络,用于工业表面的自动缺陷检测。所提出的网络具有接受原始图像作为输入和输出像素级掩码的能力。为了避免过拟合和提高模型的泛化,我们在训练阶段使用了实时数据增强方法。为了评估所提出模型的性能,我们使用了一个公开可用的数据集,其中包含十种不同类型的纹理表面及其相关的弱注释掩码。研究结果表明,尽管使用了粗略注释的标签,但我们的结果与以前的工作一致,并且在检测时间方面显示出改进。
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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