基于深度学习的织物缺陷检测研究

Eun Su Nam, Choong Kwon Lee, Yun-Sung Choi
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引用次数: 0

摘要

纺织品的缺陷识别是质量控制的关键环节。本研究试图通过分析织物的图像来创建一个检测缺陷的模型。研究中使用的模型是基于深度学习的VGGNet和ResNet,并对两种模型的缺陷检测性能进行了比较和评价。VGGNet和ResNet模型的精度分别为0.859和0.893,表明ResNet模型的精度更高。此外,利用可解释人工智能(eXplainable Artificial Intelligence, XAI)技术Grad-CAM算法推导出模型的注意区域,找出深度学习模型在织物图像中识别为缺陷的区域的位置。结果证实,深度学习模型识别为织物缺陷的区域,即使用肉眼也确实存在缺陷。该研究结果有望将基于深度学习的人工智能应用于纺织行业的缺陷检测,从而减少织物生产过程中的时间和成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Study on the Defect Detection of Fabrics using Deep Learning
Identifying defects in textiles is a key procedure for quality control. This study attempted to create a model that detects defects by analyzing the images of the fabrics. The models used in the study were deep learning-based VGGNet and ResNet, and the defect detection performance of the two models was compared and evaluated. The accuracy of the VGGNet and the ResNet model was 0.859 and 0.893, respectively, which showed the higher accuracy of the ResNet. In addition, the region of attention of the model was derived by using the Grad-CAM algorithm, an eXplainable Artificial Intelligence (XAI) technique, to find out the location of the region that the deep learning model recognized as a defect in the fabric image. As a result, it was confirmed that the region recognized by the deep learning model as a defect in the fabric was actually defective even with the naked eyes. The results of this study are expected to reduce the time and cost incurred in the fabric production process by utilizing deep learning-based artificial intelligence in the defect detection of the textile industry.
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