Fabric defect detection using AI and machine learning for lean and automated manufacturing of acoustic panels

Wai Hin Cheung, Qingping Yang
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Abstract

Fabric defects in the conventional manufacturing of acoustic panels are detected via manual visual inspections, which are prone to problems due to human errors. Implementing an automated fabric inspection system can improve productivity and increase product quality. In this work, advanced machine learning (ML) techniques for fabric defect detection are reviewed, and two deep learning (DL) models are developed using transfer learning based on pre-trained convolutional neural network (CNN) architectures. The dataset used for this work consists of 1800 images with six different classes, made up of one class of fabric in good condition and five classes of fabric defects. The model design process involves pre-processing of the images, modification of the neural network layers, as well as selection and optimisation of the network’s hyperparameters. The average accuracies of the two CNN models developed in this work, which used the GoogLeNet and the ResNet50 architectures, are 89.84% and 95.45%, respectively, showing statistically significant results. The interpretability of the models is discussed using the Grad-CAM technique. Relevant image acquisition hardware requirements are also put forward for integration with the detection software, which can enable successful deployment of the model for the automated fabric inspection.
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使用人工智能和机器学习进行织物缺陷检测,用于声学面板的精益和自动化制造
在传统的吸声板制造中,织物缺陷是通过人工目测来检测的,这很容易因人为错误而出现问题。实施自动化织物检测系统可以提高生产效率,提高产品质量。在这项工作中,回顾了用于织物缺陷检测的先进机器学习(ML)技术,并使用基于预训练卷积神经网络(CNN)架构的迁移学习开发了两个深度学习(DL)模型。这项工作使用的数据集由1800张图像组成,分为6个不同的类别,由一类良好状态的织物和五类织物缺陷组成。模型设计过程包括图像的预处理,神经网络层的修改,以及网络超参数的选择和优化。本文使用GoogLeNet和ResNet50架构开发的两种CNN模型的平均准确率分别为89.84%和95.45%,具有统计学意义。利用Grad-CAM技术讨论了模型的可解释性。并提出了与检测软件集成的相关图像采集硬件要求,使模型能够顺利部署,实现织物自动检测。
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来源期刊
CiteScore
5.10
自引率
30.80%
发文量
167
审稿时长
5.1 months
期刊介绍: Manufacturing industries throughout the world are changing very rapidly. New concepts and methods are being developed and exploited to enable efficient and effective manufacturing. Existing manufacturing processes are being improved to meet the requirements of lean and agile manufacturing. The aim of the Journal of Engineering Manufacture is to provide a focus for these developments in engineering manufacture by publishing original papers and review papers covering technological and scientific research, developments and management implementation in manufacturing. This journal is also peer reviewed. Contributions are welcomed in the broad areas of manufacturing processes, manufacturing technology and factory automation, digital manufacturing, design and manufacturing systems including management relevant to engineering manufacture. Of particular interest at the present time would be papers concerned with digital manufacturing, metrology enabled manufacturing, smart factory, additive manufacturing and composites as well as specialist manufacturing fields like nanotechnology, sustainable & clean manufacturing and bio-manufacturing. Articles may be Research Papers, Reviews, Technical Notes, or Short Communications.
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