EAAI Journal 2026 Journal Article
A computer vision-based approach for detecting tenon pull-out damage in ancient timber structures
- Juan Wang
- Yuan Yao
- Yujing Yuan
- Lei Tan
- Xiaohui Yang
- Na Yang
Ancient timber structures featuring mortise-tenon joints are vital cultural heritage forms in China and East Asia. Accurate and swift detection of joint pull-out is essential for ensuring structural safety and stability, thereby protecting this priceless heritage. Traditional tenon pull-out damage detection methods grapple with issues like dataset scarcity, complex backgrounds, wood grain interference, and a lack of suitable quantification methods. Considering the critical role of mortise-tenon connections in ancient timber structures’ structural integrity, adopting modern, non-destructive damage identification techniques is crucial. Computer vision, as a non-destructive approach, is especially apt for this purpose. To tackle these challenges, a computer vision-based method is proposed for precisely locating and quantifying tenon pull-out damage in ancient timber structures. A comprehensive detection process is established, including dataset construction for accuracy validation, damage location identification, and quantification of pull-out extent. Comparative analysis with instrument measurements reveals high recognition accuracy of the method. This approach offers a reference for assessing the condition of mortise-tenon joints in ancient timber structures, significantly aiding in the scientific preservation of cultural heritage.