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Defect Detection from X-Ray Images Using A Three-Stage Deep Learning Algorithm

机译:使用三阶段深度学习算法从X射线图像进行缺陷检测

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Defect detection is a crucial step in the process of manufacturing auto parts such as engines. Air bubbles are common defects in the engine which may result in engine failure leading to the breakdown of the car or even catastrophic accidents. Currently, X-ray images are used for air bubbles detection which adds complexity to the detection task due to the overlay of defects with complex engine 3D structures in 2D X-ray images. In this paper, we propose a three-stage deep learning algorithm to learn various patterns of the bubbles in engines. We then test the algorithm using normal and defected images. The results show that the proposed deep learning method can accurately identify bubbles in the X-ray engine images. This deep learning technique can also be extended to detect other surface level defects such scratches, missing components and physical damage. In this paper, we report that the accuracy of our defect detection method is above 90%.
机译:缺陷检测是制造汽车零部件(例如发动机)过程中的关键步骤。气泡是发动机中的常见缺陷,可能会导致发动机故障,从而导致汽车故障甚至灾难性事故。当前,X射线图像被用于气泡检测,由于缺陷被复杂的发动机3D结构覆盖在2D X射线图像中,这增加了检测任务的复杂性。在本文中,我们提出了一种三阶段深度学习算法来学习引擎中气泡的各种模式。然后,我们使用正常图像和缺陷图像测试该算法。结果表明,提出的深度学习方法可以准确识别X射线引擎图像中的气泡。这种深度学习技术也可以扩展到检测其他表面缺陷,例如划痕,部件丢失和物理损坏。在本文中,我们报告了我们的缺陷检测方法的准确性高于90%。

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