论文标题
使用卷积神经网络对激光热成像数据中的斑点接头进行分类
Classification of Spot-welded Joints in Laser Thermography Data using Convolutional Neural Networks
论文作者
论文摘要
现场焊接是各个行业的关键过程步骤。但是,由于测试材料的复杂性和敏感性,斑点焊接质量的分类仍然是一个繁琐的过程,这些过程会消耗传统的方法。在本文中,我们提出了一种使用激光热力计数据中图像进行质量检查点焊接的方法。我们提出了基于点焊接接头的基础物理学的数据准备方法,并通过分析随着时间的推移和衍生的专用数据过滤器来生成训练数据集,并通过分析脉冲激光器热量表加热。随后,我们利用卷积神经网络对焊接质量进行分类,并将不同模型的性能相互作用。与传统方法相比,我们在对不同的焊接质量类别进行分类方面取得了竞争成果,准确性超过95%。最后,我们探讨了不同增强方法的效果。
Spot welding is a crucial process step in various industries. However, classification of spot welding quality is still a tedious process due to the complexity and sensitivity of the test material, which drain conventional approaches to its limits. In this paper, we propose an approach for quality inspection of spot weldings using images from laser thermography data.We propose data preparation approaches based on the underlying physics of spot welded joints, heated with pulsed laser thermography by analyzing the intensity over time and derive dedicated data filters to generate training datasets. Subsequently, we utilize convolutional neural networks to classify weld quality and compare the performance of different models against each other. We achieve competitive results in terms of classifying the different welding quality classes compared to traditional approaches, reaching an accuracy of more than 95 percent. Finally, we explore the effect of different augmentation methods.