PROJECT
Organization/Company
La Société Wallonne des Eaux
Project Title
Deep Convolutional Neural Network on 3D Reality Mesh for Water Tank Crack Detection
Award Category
- Geospatial and reality modeling, Surveying and monitoring
Location
Utilized Software
ContextCapture, ContextCapture Insights, MicroStation, Pointools
Project Summary
Regional water corporation Société Wallonne des Eaux owns and operates a 50-meter-high water tower in Juprelle, Belgium, with a storage capacity of 500 cubic meters. Previous surveys revealed damage, so they took ground photos to define the renovation works but missed the most significant damage. To refine their methods and obtain a more insightful assessment of the water tower’s condition they needed to apply photogrammetry, machine learning, and 3D modeling technology.They selected ContextCapture Insights to process over 3,000 images and generate a digital twin of the tower to visualize the entire structure and assess the damage. Using machine learning on the digital twin, they automated the accurate identification and quantification of the size of the cracks and determined the optimal corrective actions. The digital process reduced survey and modeling time and reduced costs. The digital twin could be completed in one day, enabling a quick assessment and remediation plan to ensure a reliable water supply.
