基于CNN的压力容器X射线图像焊缝缺陷自动检测

Wenkai Xiao, Xiang Feng, Shuiyu Nan, Linlin Zhang
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引用次数: 1

摘要

基于人工智能的视觉自动检测方法越来越受到人们的关注。为了提高焊缝无损检测的性能,我们提出了DRepDet(Dilated RepPoints Detector)。首先,我们对焊缝缺陷数据集进行了详细分析,总结了焊缝缺陷数据的分布特征,即缺陷规模差异很大,长宽比分布范围较大。其次,根据缺陷数据的分布特征,我们设计了DResBlock模块,并在特征提取过程中引入不同扩张率的扩张卷积,以扩大感受野,提高对大规模缺陷的检测性能。基于DResBlock和无锚检测框架RepPoints,我们设计了DRepDet。大量实验表明,我们提出的检测器可以检测7种类型的缺陷。当使用组合扩张率卷积网络进行检测时,大缺陷的AP50和Recall50分别提高了3.1%和3.3%,而小缺陷的性能没有受到影响,几乎相同或略有提高。整个网络的最终性能有了很大的提高,与Cascade R-CNN相比,AP50和Recall50分别为6%和4.2%,与RepPoints相比,AP50%和Recall50%分别为1.4%和2.9%。
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Automatic Detection of Weld Defects in Pressure Vessel X-Ray Image Based on CNN
The visual automatic detection method based on artificial intelligence has attracted more and more attention. In order to improve the performance of weld nondestructive defect detection, we propose DRepDet (Dilated RepPoints Detector). First, we analyze the weld defect dataset in detail and summarize the distribution characteristics of weld defect data, that is, the defect scale is very different and the aspect ratio distribution range is large. Second, according to the distribution characteristics of defect data, we design DResBlock module, and introduce dilated convolution with different dilated rates in the process of feature extraction to expand the receptive field and improve the detection performance of large-scale defects. Based on DResBlock and anchor-free detection framework RepPoints, we design DRepDet. Extensive experiments show that our proposed detector can detect 7 types of defects. When using combined dilated rate convolution network in detection, the AP50 and Recall50 of big defects are improved by 3.1% and 3.3% respectively, while the performance of small defects is not affected, almost the same or slightly improved. The final performance of the whole network is improved a large margin, with 6% AP50 and 4.2% Recall50 compared with Cascade R-CNN and 1.4% AP50 and 2.9% Recall50 compared with RepPoints.
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来源期刊
Wuhan University Journal of Natural Sciences
Wuhan University Journal of Natural Sciences Multidisciplinary-Multidisciplinary
CiteScore
0.40
自引率
0.00%
发文量
2485
期刊介绍: Wuhan University Journal of Natural Sciences aims to promote rapid communication and exchange between the World and Wuhan University, as well as other Chinese universities and academic institutions. It mainly reflects the latest advances being made in many disciplines of scientific research in Chinese universities and academic institutions. The journal also publishes papers presented at conferences in China and abroad. The multi-disciplinary nature of Wuhan University Journal of Natural Sciences is apparent in the wide range of articles from leading Chinese scholars. This journal also aims to introduce Chinese academic achievements to the world community, by demonstrating the significance of Chinese scientific investigations.
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