Image segmentation using Vision Transformer for tunnel defect assessment

Author:

Qin Shaojie1,Qi Taiyue1,Deng Tang2,Huang Xiaodong3

Affiliation:

1. School of Civil Engineering Southwest Jiaotong University Chengdu China

2. YiBing Project Division Beijing‐Kunming High‐Speed Railway Xikun Co. Ltd. Chongqing China

3. Quality and Safety Department Guangzhou Metro Construction Management Co. Ltd. Guangzhou China

Abstract

AbstractExisting tunnel detection methods include crack and water‐leakage segmentation networks. However, if the automated detection algorithm cannot process all defect cases, manual detection is required to eliminate potential risks. The existing intelligent detection methods lack a universal method that can accurately segment all types of defects, particularly when multiple defects are superimposed. To address this issue, a defect segmentation model is proposed based on Vision Transformer (ViT), which is completely different from the network structure of a convolutional neural network. The model proposes an adapter and a decoding head to improve the training effect of the transformer encoder, allowing it to be fitted to small‐scale datasets. In post‐processing, a method is proposed to quantify the threat level for the defects, with the aim of outputting qualitative results that simulate human observation. The model showed impressive results on a real‐world dataset containing 11,781 defect images collected from a real subway tunnel. The visualizing results proved that this method is effective and has uniform criteria for single, multiple, and comprehensive defects. Moreover, the tests proved that the proposed model has a significant advantage in the case of multiple‐defect superposition, and it achieved 93.77%, 88.36%, and 92.93% for mean accuracy (Acc), mean intersection over union, and mean F1‐score, respectively. With similar training parameters, the Acc of the proposed method is improved by more than 10% over the DeepLabv3+, Mask R‐convolutional neural network, and UPerNet‐R50 models and by more than 5% over the Swin Transformer and ViT‐Adapter. This study implemented a general method that can process all defect cases and output the threat evaluation results, thereby making more intelligent tunnel detection.

Funder

National Natural Science Foundation of China

Publisher

Wiley

Reference81 articles.

1. A dynamic ensemble learning algorithm for neural networks

2. Acquiring sectional profile of metro tunnels using charge-coupled device cameras

3. Bao H. Dong L. Piao S. &Wei F.(2021).BEiT: BERT pre‐training of image transformers (MIM). arXiv.http://arxiv.org/abs/2106.08254

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