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Application of Deep Learning for Defect Detection of Paint Film

机译:深度学习在涂料薄膜缺陷检测中的应用

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Paint film can protect and decorate the metallic workpieces. Automatic defect detection of paint film is important and challenging for intelligent manufacturing. In this paper, the surface quality of paint film is detected using defection system combining with deep learning. The image set of paint film is first collected for training and testing, which includes 2000 images. We use both SSD and Faster R-CNN methods to detect the defects of paint film. Finally, the framework of defect detection program is implemented through virtual instrument and python. Experiments indicate that the SSD and Faster R-CNN methods can get good experimental data in the paint film detection. As opposed to previous visual detection methods, the defect detection method using deep learning does not have to manually design defect characteristics previously, which is more robust. Moreover, the proposed framework can be easily applied to other industrial application fields, such as detection of wood defects, surface defect detection of parts and weld defect detection.
机译:油漆薄膜可以保护和装饰金属工件。涂料薄膜的自动缺陷检测是智能制造的重要且具有挑战性。本文使用与深层学习结合的缺陷系统检测到涂料膜的表面质量。首先收集图像集的涂料膜以进行培训和测试,包括2000个图像。我们使用SSD和更快的R-CNN方法来检测涂料膜的缺陷。最后,通过虚拟仪器和Python实现缺陷检测程序的框架。实验表明SSD和更快的R-CNN方法可以在涂料膜检测中获得良好的实验数据。与先前的视觉检测方法相反,使用深度学习的缺陷检测方法不必手动设计先前的缺陷特性,这更具稳健性。此外,所提出的框架可以很容易地应用于其他工业应用领域,例如木材缺陷的检测,表面缺陷检测部件和焊接缺陷检测。

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