Distress Detection in Subway Tunnel Images via Data Augmentation Based on Selective Image Cropping and Patching

Sensors (Basel). 2022 Nov 18;22(22):8932. doi: 10.3390/s22228932.

Abstract

Distresses, such as cracks, directly reflect the structural integrity of subway tunnels. Therefore, the detection of subway tunnel distress is an essential task in tunnel structure maintenance. This paper presents the performance improvement of deep learning-based distress detection to support the maintenance of subway tunnels through a new data augmentation method, selective image cropping and patching (SICAP). Specifically, we generate effective data for training the distress detection model by focusing on the distressed regions via SICAP. After the data augmentation, we train a distress detection model using the expanded training data. The new image generated based on SICAP does not change the pixel values of the original image. Thus, there is little loss of information, and the generated images are effective in constructing a robust model for various subway tunnel lines. We conducted experiments with some comparative methods. The experimental results show that the detection performance can be improved by our data augmentation.

Keywords: data augmentation; deep learning; distress detection; maintenance; subway tunnels.

MeSH terms

  • Railroads*