Pothole Detection Model for Road Safety using Computer Vision and Machine Learning

Potholes pose significant threats to vehicular movement, causing damage to vehicles and risking the safety of drivers and pedestrians. The escalating issue of potholes has led to substantial financial losses for vehicle owners and drivers. Traditional methods of pothole detection are impractical, ne...

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Bibliographic Details
Published inIAES international journal of artificial intelligence Vol. 13; no. 4; p. 4480
Main Authors Bidve, Vijaykumar S, Kakakde, Kiran S, Bhole, Rahul H, Sarasu, Pakiriswamy, Shaikh, Ashfaq, Mehta, Pradnya, Borde, Santosh, Kediya, Shailesh
Format Journal Article
LanguageEnglish
Published 01.12.2024
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Summary:Potholes pose significant threats to vehicular movement, causing damage to vehicles and risking the safety of drivers and pedestrians. The escalating issue of potholes has led to substantial financial losses for vehicle owners and drivers. Traditional methods of pothole detection are impractical, necessitating an innovative approach. The study focuses on implementing a detection system capable of accurately identifying potholes, empowering vehicles to adapt their speed or halt to prevent damage. The transformative solution presented in this research leverages cutting-edge technologies, specifically computer vision and machine learning, aiming to enhance road safety and streamline maintenance efforts. By addressing the interdependence of modern civilization on road networks, the Pothole Detection Model promises improved road safety, efficient maintenance practices, and the emergence of an era in intelligent transportation systems. The integration of technology into transportation infrastructure highlights the proactive measures needed to combat road imperfections, ensuring a safer and more efficient road network for the benefit of society.
ISSN:2089-4872
2252-8938
DOI:10.11591/ijai.v13.i4.pp4480-4487