Abstract
AbstractBridges are among the most important structures of any road network. During their service life, they are subject to deterioration which may reduce their safety and functionality. The detection of bridge damage is necessary for proper maintenance activities. To date, assessing the health status of the bridge and all its elements is carried out by identifying a series of data obtained from visual inspections, which allows the mapping of the deterioration situation of the work and its conservation status. There are, however, situations where visual inspection may be difficult or impossible, especially in critical areas of bridges, such as the ceiling and corners. In this contribution, the authors acquire images using a prototype drone with a low-cost camera mounted upward over the body of the drone. The proposed solution was tested on a bridge in the city of Turin (Italy). The captured data was processed via photogrammetric process using the open-source Micmac solution. Subsequently, a procedure was developed with FOSS tools for the segmentation of the orthophoto of the intrados of the bridge and the automatic classification of some defects found on the analyzed structure. The paper describes the adopted approach showing the effectiveness of the proposed methodology.
Publisher
Springer International Publishing
Reference39 articles.
1. Viadotti: 1.425 sono senza un proprietario e nessuno fa la manutenzione | Milena Gabanelli. https://www.corriere.it/dataroom-milena-gabanelli/viadotti-1425-sono-senza-proprietario-nessuno-fa-la-manutenzione-ponti-crolli-ecco-mappa/ae3102d2-263f-11e9-9b5e-1a58eb1d569a-va.shtml. Accessed 5 Mar 2021
2. Mit. Approvate Le Linee Guida per La Sicurezza Dei Ponti|Mit. https://www.mit.gov.it/comunicazione/news/mit-approvate-le-linee-guida-per-la-sicurezza-dei-ponti. Accessed 5 Mar 2021
3. Marchewka, A., Ziółkowski, P., Aguilar-Vidal, V.: Framework for structural health monitoring of steel bridges by computer vision. Sensors 20, 700 (2020). https://doi.org/10.3390/s20030700
4. Prasanna, P., Dana, K., Gucunski, N., Basily, B.: Computer-vision based crack detection and analysis. In: Proceedings of the Sensors and Smart Structures Technologies for Civil, Mechanical, and Aerospace Systems 2012
5. International Society for Optics and Photonics, April 6 2012, vol. 8345, p. 834542 (2012)
Cited by
2 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献