基于人工智能的制造业视觉检测

Kuo-Hao Tseng, Shao-Wei Chu, Chieh-Ling Huang, Chuin-Mu Wang, Atishay Jain
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引用次数: 0

摘要

无损检测是科技行业中最经济的材料检测方法,用于评估材料部件或系统的性能而不会造成损害。除了直接的感官检测外,最流行的焊缝无损检测方法包括液体渗透、射线照相、磁粉、涡流和超声波检测。污染物和冶金缺陷可通过焊接工艺和技术引入焊缝。弱焊缝会导致焊接故障,从而使接头变弱。它被描述为在焊接过程中超出允许公差的位置。在我们的研究中,我们将数据增强技术应用于我们的数据集。此外,我们还使用了Detectron2,它提供了各种检测和分割算法来进行实例分割,以分割出焊缝图像中的各种缺陷。我们使用切片辅助超推断对图像进行切片和重叠,并使用Mask R-CNN X101-FPN对44,339幅图像进行大规模实例分割。MASK- RCNN的训练准确率为0.98,总训练损失为0.2。平均精度计算为0.826。
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Artificial Intelligence based Vision Inspection for Manufacturing Industries
Nondestructive testing is the most economical method for material inspection used in science and technology industries to evaluate the properties of a material component or system without causing damage. Aside from straightforward sensory inspections, the most popular nondestructive testing methods for welds include liquid penetrant, radiography, magnetic particle, eddy current, and ultrasonic testing. Contaminants and metallurgical flaws can be introduced into the weld via the welding process and technique. A weak weld causes a welding fault, which weakens the joint. It is described as the location in the welding process that is outside the allowable tolerance. In our research, we have applied data augmentation technique to our dataset. Further, we have used Detectron2 which offers various detection and segmentation algorithms to perform instance segmentation to segment out various defects in the images of welds. We used Slicing Aided Hyper Inference to slice and overlap the images and performed large-scale instance segmentation using Mask R-CNN X101–FPN on 44,339 images. The approach results in 0.98 training accuracy of MASK- RCNN and a total training loss of 0.2. The Average Precision is calculated as 0.826.
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