AI-POWERED ROAD SURFACE DAMAGE DETECTION USING YOLOV8
Mr. Mathan Kumar M1, Ms. Gokilapriya S2
1Student, 2Assistant ProfessorDepartment of Computer Science and Engineering
KIT – Kalaignar karunanidhi Institute of Technology, Coimbatore, India
Abstract: Maintaining street infrastructure is extremely important in ensuring security and economic efficiency in modern transportation systems. Road surface damage and commuter risks such as cracks, pot holes, and road quality wear and tear. In this article, we explore the extended AI methods for KIS Intelligence detection, including road damage automation and cutting-edge object detection models focused on Yolov8. Yolov8 combines high accuracy and arithmetic efficiency to provide excellent damage detection performance. This study provides an overview of Yolov8 features and shows an application in real street assessment tasks and how its deployment leads to more intelligent and effective infrastructure management.
Keywords: Economic efficiency, Road surface damage