利用卷积神经网络和迁移学习检测和分割制造缺陷。

IF 0.8 Q4 ENGINEERING, MANUFACTURING
Max K Ferguson, Ak Ronay, Yung-Tsun Tina Lee, Kincho H Law
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引用次数: 0

摘要

质量控制是许多制造过程的基本组成部分,尤其是涉及铸造或焊接的制造过程。然而,手动质量控制程序往往耗时且容易出错。为了满足对高质量产品日益增长的需求,在生产线上使用智能视觉检测系统变得至关重要。近年来,卷积神经网络在图像分类和定位任务中都表现出了出色的性能。在本文中,提出了一种基于掩模区域的CNN结构的X射线图像中铸件缺陷识别系统。所提出的缺陷检测系统同时对输入图像执行缺陷检测和分割,使其适用于一系列缺陷检测任务。结果表明,训练网络同时执行缺陷检测和缺陷实例分割,比单独训练缺陷检测具有更高的缺陷检测精度。利用迁移学习来减少训练数据需求并提高训练模型的预测精度。更具体地说,在对相对较小的金属铸造X射线数据集进行微调之前,首先用两个大型公开可用的图像数据集对模型进行训练。训练模型的精度超过了X射线图像GRIMA数据库(GDXray)铸件数据集的最先进性能,并且足够快,可以在生产环境中使用。该系统在GDX射线焊缝数据集上也表现良好。进行了大量深入的研究,以探索迁移学习、多任务学习和多课堂学习如何影响训练系统的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Detection and Segmentation of Manufacturing Defects with Convolutional Neural Networks and Transfer Learning.

Detection and Segmentation of Manufacturing Defects with Convolutional Neural Networks and Transfer Learning.

Detection and Segmentation of Manufacturing Defects with Convolutional Neural Networks and Transfer Learning.

Detection and Segmentation of Manufacturing Defects with Convolutional Neural Networks and Transfer Learning.

Quality control is a fundamental component of many manufacturing processes, especially those involving casting or welding. However, manual quality control procedures are often time-consuming and error-prone. In order to meet the growing demand for high-quality products, the use of intelligent visual inspection systems is becoming essential in production lines. Recently, Convolutional Neural Networks (CNNs) have shown outstanding performance in both image classification and localization tasks. In this article, a system is proposed for the identification of casting defects in X-ray images, based on the Mask Region-based CNN architecture. The proposed defect detection system simultaneously performs defect detection and segmentation on input images, making it suitable for a range of defect detection tasks. It is shown that training the network to simultaneously perform defect detection and defect instance segmentation, results in a higher defect detection accuracy than training on defect detection alone. Transfer learning is leveraged to reduce the training data demands and increase the prediction accuracy of the trained model. More specifically, the model is first trained with two large openly-available image datasets before finetuning on a relatively small metal casting X-ray dataset. The accuracy of the trained model exceeds state-of-the art performance on the GRIMA database of X-ray images (GDXray) Castings dataset and is fast enough to be used in a production setting. The system also performs well on the GDXray Welds dataset. A number of in-depth studies are conducted to explore how transfer learning, multi-task learning, and multi-class learning influence the performance of the trained system.

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来源期刊
Smart and Sustainable Manufacturing Systems
Smart and Sustainable Manufacturing Systems ENGINEERING, MANUFACTURING-
CiteScore
2.50
自引率
0.00%
发文量
17
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