Ye Guanting, Dai Wei, Tao Jintai, Qu Jinsheng, Zhu Lin, Jin Qiang
College of Hydraulic and Civil Engineering, Xinjiang Agricultural University, Urumqi, 830052, China.
College of International Education, Xinjiang Agricultural University, Urumqi, 830052, China.
Sci Rep. 2024 Mar 14;14(1):6226. doi: 10.1038/s41598-024-54835-x.
In concrete structures, surface cracks are an important indicator for assessing the durability and serviceability of the structure. Existing convolutional neural networks for concrete crack identification are inefficient and computationally costly. Therefore, a new Cross Swin transformer-skip (CSW-S) is proposed to classify concrete cracks. The method is optimized by adding residual links to the existing Cross Swin transformer network and then trained and tested using a dataset with 17,000 images. The experimental results show that the improved CSW-S network has an extended range of extracted image features, which improves the accuracy of crack recognition. A detection accuracy of 96.92% is obtained using the trained CSW-S without pretraining. The improved transformer model has higher recognition efficiency and accuracy than the traditional transformer model and the classical CNN model.
在混凝土结构中,表面裂缝是评估结构耐久性和适用性的重要指标。现有的用于混凝土裂缝识别的卷积神经网络效率低下且计算成本高昂。因此,提出了一种新的交叉Swin变压器-跳跃(CSW-S)方法来对混凝土裂缝进行分类。该方法通过在现有的交叉Swin变压器网络中添加残差链接进行优化,然后使用包含17000张图像的数据集进行训练和测试。实验结果表明,改进后的CSW-S网络具有更广泛的提取图像特征范围,提高了裂缝识别的准确性。使用未经预训练的训练好的CSW-S可获得96.92%的检测准确率。改进后的变压器模型比传统变压器模型和经典卷积神经网络模型具有更高的识别效率和准确性。