Litcius/Paper detail

Predicting Asphalt Pavement Friction by Using a Texture-Based Image Indicator

Bingjie Lu, Zhengyang Lu, Yijiashun Qi, Hanzhe Guo, Tianyao Sun, Zunduo Zhao

2025Lubricants9 citationsDOIOpen Access PDF

Abstract

Pavement skid resistance is of vital importance for road safety. The objective of this study is to propose and validate a texture-based image indicator to predict pavement friction. This index enables pavement friction to be predicted easily and inexpensively using digital images, with predictions correlated to Dynamic Friction Tester (DFT) measurements. Three different types of asphalt surfaces (Dense-Grade Asphalt Concrete, Open-Grade Friction Course, and Chip Seal) were evaluated subject to various tire polishing cycles. Images were taken with corresponding friction coefficients obtained using DFT in the laboratory. The aggregate protrusion area is proposed as the indicator. Statistical models are established for each asphalt surface type to correlate the proposed indicator with friction coefficients. The results show that the adjusted R-squared values of all relationships are above 0.90. Compared to other image-based indicators in the literature, the proposed image indicator more accurately reflects the changes in pavement friction with the number of polishing cycles, proving its cost-effective use for considering pavement friction in the mix design stage.

Topics & Concepts

AsphaltTexture (cosmology)Geotechnical engineeringImage (mathematics)Environmental scienceAsphalt pavementMaterials scienceArtificial intelligenceForensic engineeringComposite materialComputer scienceGeologyEngineeringInfrastructure Maintenance and MonitoringAsphalt Pavement Performance EvaluationImage and Object Detection Techniques