Remote Sensing (Oct 2023)

Image-Range Stitching and Semantic-Based Crack Detection Methods for Tunnel Inspection Vehicles

  • Lin Tian,
  • Qingquan Li,
  • Li He,
  • Dejin Zhang

DOI
https://doi.org/10.3390/rs15215158
Journal volume & issue
Vol. 15, no. 21
p. 5158

Abstract

Read online

This study introduces two innovative methods in the research for use in vision-based tunnel inspection vehicles. First, the image-range stitching method is used to map the sequence images acquired by a camera onto a tunnel layout map. This method reduces the tunnel image-stitching problem to the appropriate parameters, thus solving the problem of mapping equations, ranging from camera pixels to the tunnel layout map. The parameters are obtained using a laser scanner. Secondly, traditional label-based deep learning solely perceives the consistency between pixels and semantically labeled samples, making it challenging to effectively address issues with uncertainty and multiplicity. Consequently, we introduce a method that employs a bidirectional heuristic search approach, utilizing randomly generated seed pixels as hints to locate targets that concurrently appear in both the image and the image semantic generation model. The results reveal the potential for cooperation between laser-scanning and camera-imaging technologies and point out a novel approach of crack detection that appears to be more focused on semantic understanding.

Keywords