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Automated defect classification of SS304 TIG welding process using visible spectrum camera and machine learning

机译:使用可见光谱相机和机器学习对SS304 TIG焊接工艺进行自动缺陷分类

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Tungsten Inert Gas welding is dependent on human supervision, it has an emphasis on visual assessment, and it is performed in a controlled environment, making it suitable for automation. This study designs a system for assessing the tungsten inert gas welding quality with the potential of application in real-time. The system uses images in the visible spectrum paired with the state-of-the-art approach for image classification. The welding images represent the weld pool in visible spectra balanced using high dynamic range technology to offset the powerful arc light. The study trains models on a new tungsten inert gas welding dataset, leveraging the state-of-the-art machine learning research, establishing a correlation between the aspect of the weld pool and surrounding area and the weld quality, similar to an operator's assessment.
机译:钨极惰性气体保护焊依赖于人的监督,侧重于视觉评估,并且在受控环境中进行,使其适合于自动化。本研究设计了一种可实时评估钨极惰性气体焊接质量的系统。该系统将可见光谱中的图像与最新的图像分类方法结合使用。焊接图像表示焊缝池中的可见光谱,该焊缝使用高动态范围技术来平衡,以抵消强大的弧光。这项研究利用最新的机器学习研究在新的钨极惰性气体保护焊接数据集上训练模型,类似于操作员的评估,在焊接池和周围区域的方面与焊接质量之间建立了关联。

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