An Enhanced YOLOv8 Model for Real-Time and Accurate Pothole Detection and Measurement
Mustafa Yurdakul, \c{S}akir Tasdemir

TL;DR
This paper introduces an improved YOLOv8 model utilizing RGB-D data for real-time, accurate pothole detection and measurement, enhancing safety and maintenance efficiency in transportation.
Contribution
The paper presents a novel YOLOv8-based model with structural improvements for better pothole segmentation and measurement using RGB-D data, suitable for real-time applications.
Findings
Achieved 93.7% precision in pothole detection
Improved recall to 90.4% over standard YOLOv8n-seg
Enhanced measurement accuracy for pothole perimeter and depth
Abstract
Potholes cause vehicle damage and traffic accidents, creating serious safety and economic problems. Therefore, early and accurate detection of potholes is crucial. Existing detection methods are usually only based on 2D RGB images and cannot accurately analyze the physical characteristics of potholes. In this paper, a publicly available dataset of RGB-D images (PothRGBD) is created and an improved YOLOv8-based model is proposed for both pothole detection and pothole physical features analysis. The Intel RealSense D415 depth camera was used to collect RGB and depth data from the road surfaces, resulting in a PothRGBD dataset of 1000 images. The data was labeled in YOLO format suitable for segmentation. A novel YOLO model is proposed based on the YOLOv8n-seg architecture, which is structurally improved with Dynamic Snake Convolution (DSConv), Simple Attention Module (SimAM) and Gaussian…
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Taxonomy
TopicsInfrastructure Maintenance and Monitoring · Non-Destructive Testing Techniques · Geophysical Methods and Applications
MethodsSoftmax · Attention Is All You Need · Convolution
