Deep Learning Based Steel Pipe Weld Defect Detection
- URL: http://arxiv.org/abs/2104.14907v1
- Date: Fri, 30 Apr 2021 11:15:13 GMT
- Title: Deep Learning Based Steel Pipe Weld Defect Detection
- Authors: Dingming Yang, Yanrong Cui, Zeyu Yu and Hongqiang Yuan
- Abstract summary: State-of-the-art single-stage object detection algorithm YOLOv5 is proposed to be applied to the field of steel pipe weld defect detection.
The experimental results show that applying YOLOv5 to steel pipe weld defect detection can greatly improve the accuracy, complete the multi-classification task, and meet the criteria of real-time detection.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Steel pipes are widely used in high-risk and high-pressure scenarios such as
oil, chemical, natural gas, shale gas, etc. If there is some defect in steel
pipes, it will lead to serious adverse consequences. Applying object detection
in the field of deep learning to pipe weld defect detection and identification
can effectively improve inspection efficiency and promote the development of
industrial automation. Most predecessors used traditional computer vision
methods applied to detect defects of steel pipe weld seams. However,
traditional computer vision methods rely on prior knowledge and can only detect
defects with a single feature, so it is difficult to complete the task of
multi-defect classification, while deep learning is end-to-end. In this paper,
the state-of-the-art single-stage object detection algorithm YOLOv5 is proposed
to be applied to the field of steel pipe weld defect detection, and compared
with the two-stage representative object detection algorithm Faster R-CNN. The
experimental results show that applying YOLOv5 to steel pipe weld defect
detection can greatly improve the accuracy, complete the multi-classification
task, and meet the criteria of real-time detection.
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