- 408-924-7560
- mineta-institute@sjsu.edu
- Donate
We have developed pavement condition survey using drone technology and a pothole photo submission and reporting program. We were able to obtain many images and videos. However, it is not very efficient using AutoCAD and manually identifying pavement distresses such as cracking and potholes. The computer vision and artificial intelligence have been greatly advanced over the past decade. Researchers and industry have been able to utilize these new technologies in image analysis, such as MRI, CT Scan, etc. We would like to use computer vision and machine learning to automatically identify pavement distresses including both type and quantity of pavement distresses. This automated approach promises to deliver greater accuracy, efficiency, and cost-effectiveness compared to traditional methods, revolutionizing pavement distress identification and supporting more proactive maintenance strategies.
CSU Chico
We plan to develop a comprehensive prototype process that leverages computer vision and machine learning technologies to automatically identify, classify, and report potholes and pavement cracks.
This process will include the following key components:
The research will contribute to a transformative approach to pavement distress management, enabling municipalities and transportation agencies to adopt more proactive and data-driven maintenance strategies.
The developed prototype has the potential to serve as a transformative foundation for enhancing pavement management systems, providing significant benefits to local agencies and the public, including:
By implementing this prototype, local agencies can improve their pavement management systems that not only improves infrastructure quality but also ensures safer, more efficient travel for the public.
-
SJSU Research Foundation 210 N. 4th Street, 4th Floor, San Jose, CA 95112 Phone: 408-924-7560 Email: mineta-institute@sjsu.edu