A computer vision approach for identifying missing welds on prefabricated steel elements

Traditional time-consuming and error-prone methods of quality control of prefabricated elements can be replaced with state-of-the-art approaches. For example, emerging computer vision and deep learning technologies can be employed in the processes to achieve better performance and quality. To detect defaults and missing welds on prefabricated steel products in real-time, this study enhances the performance, robustness, and extensibility of the computer vision-based method previously proposed by our research team. The design and implementation of a high-performance, accurate, and innovative solution, which corresponds to various manufacturing settings will be investigated in this study.

Faculty Supervisor:

Ali Motamedi

Student:

Partner:

Groupe Canam

Discipline:

Engineering

Sector:

Construction and infrastructure; Manufacturing

University:

École de technologie supérieure

Program:

Accelerate

Current openings

Find the perfect opportunity to put your academic skills and knowledge into practice!

Find Projects