Pavement Distress Estimation via Signal on Graph Processing

Sensors (Basel). 2022 Nov 25;22(23):9183. doi: 10.3390/s22239183.

Abstract

A comprehensive representation of the road pavement state of health is of great interest. In recent years, automated data collection and processing technology has been used for pavement inspection. In this paper, a new signal on graph (SoG) model of road pavement distresses is presented with the aim of improving automatic pavement distress detection systems. A novel nonlinear Bayesian estimator in recovering distress metrics is also derived. The performance of the methodology was evaluated on a large dataset of pavement distress values collected in field tests conducted in Kazakhstan. The application of the proposed methodology is effective in recovering acquisition errors, improving road failure detection. Moreover, the output of the Bayesian estimator can be used to identify sections where the measurement acquired by the 3D laser technology is unreliable. Therefore, the presented model could be used to schedule road section maintenance in a better way.

Keywords: Bayesian estimator; automated distress evaluation systems; pavement condition index; pavement distress detection; pavement management program; signal on graph processing.

MeSH terms

  • Bayes Theorem
  • Benchmarking*
  • Data Collection
  • Technology*