Das Amrita, Dorafshan Sattar, Kaabouch Naima
Department of Civil Engineering, College of Engineering & Mines, University of North Dakota, Grand Forks, ND 58202, USA.
Department of Electrical Engineering, School of Electric Engineering & Computer Science, University North Dakota, Grand Forks, ND 58202, USA.
Sensors (Basel). 2024 Jun 4;24(11):3630. doi: 10.3390/s24113630.
Steel structures are susceptible to corrosion due to their exposure to the environment. Currently used non-destructive techniques require inspector involvement. Inaccessibility of the defective part may lead to unnoticed corrosion, allowing the corrosion to propagate and cause catastrophic structural failure over time. Autonomous corrosion detection is essential for mitigating these problems. This study investigated the effect of the type of encoder-decoder neural network and the training strategy that works the best to automate the segmentation of corroded pixels in visual images. Models using pre-trained DesnseNet121 and EfficientNetB7 backbones yielded 96.78% and 98.5% average pixel-level accuracy, respectively. Deeper EffiecientNetB7 performed the worst, with only 33% true-positive values, which was 58% less than ResNet34 and the original UNet. ResNet 34 successfully classified the corroded pixels, with 2.98% false positives, whereas the original UNet predicted 8.24% of the non-corroded pixels as corroded when tested on a specific set of images exclusive to the investigated training dataset. Deep networks were found to be better for transfer learning than full training, and a smaller dataset could be one of the reasons for performance degradation. Both fully trained conventional UNet and ResNet34 models were tested on some external images of different steel structures with different colors and types of corrosion, with the ResNet 34 backbone outperforming conventional UNet.
由于暴露在环境中,钢结构容易受到腐蚀。目前使用的无损检测技术需要检查员参与。缺陷部位难以接近可能导致未被注意到的腐蚀,随着时间的推移,腐蚀会蔓延并导致灾难性的结构故障。自动腐蚀检测对于缓解这些问题至关重要。本研究调查了编码器-解码器神经网络类型和最适合自动分割视觉图像中腐蚀像素的训练策略的效果。使用预训练的DesnseNet121和EfficientNetB7主干的模型分别产生了96.78%和98.5%的平均像素级准确率。更深的EffiecientNetB7表现最差,真阳性值仅为33%,比ResNet34和原始U-Net少58%。ResNet 34成功地对腐蚀像素进行了分类,误报率为2.98%,而原始U-Net在一组专门用于所研究训练数据集的特定图像上进行测试时,将8.24%的未腐蚀像素预测为已腐蚀。发现深度网络在迁移学习方面比完全训练更好,较小的数据集可能是性能下降的原因之一。完全训练的传统U-Net和ResNet34模型都在一些具有不同颜色和腐蚀类型的不同钢结构的外部图像上进行了测试,ResNet 34主干的表现优于传统U-Net。