基于 CNN 的制造业缺陷检测

Ming Hou, Pengcheng Li, Shiqi Cheng, Jingyao Yv
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引用次数: 0

摘要

本研究介绍了一种基于卷积神经网络的先进算法,用于检测和分类制造过程中的表面缺陷。该算法的核心是采用深度学习模型,将残差网络和注意力机制整合在一起,从而有效地提取特征。此外,我们还开发了一种名为 "NR "的新型特征选择方法,该方法协同结合了邻域成分分析和 ReliefF 技术。这种方法可以为后续分析选择更具代表性的深度特征。对于分类任务,我们采用了支持向量机技术,该技术在处理二元分类和多类分类场景方面都表现出了多功能性。通过使用专门为此定制的数据集进行比较分析,进一步验证了我们算法的可靠性和优越性。结果表明,在准确识别制造缺陷方面,我们的方法优于现有算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

CNN-based defect detection in manufacturing

CNN-based defect detection in manufacturing

This research introduces an advanced algorithm based on convolutional neural networks for the detection and categorization of surface defects in manufacturing processes. At its core, the algorithm employs a deep learning model that integrates residual networks and attention mechanisms to effectively extract features. Additionally, we have developed a novel feature selection method, named NR, which synergistically combines neighborhood component analysis and ReliefF techniques. This approach enables the selection of more representative deep features for subsequent analysis. For the classification task, we utilize the support vector machine technique, which demonstrates versatility in handling both binary and multi-class classification scenarios. The reliability and superiority of our algorithm are further validated through a comparative analysis using a dataset specifically tailored for this context. The results indicate that our approach outperforms existing algorithms in accurately identifying manufacturing defects.

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