Abstract

Pavement markings constitute an effective way of conveying regulations and guidance to drivers. They constitute the most fundamental way to communicate with road users, thus, greatly contributing to ensuring safety and order on roads. However, due to the increasingly extensive traffic demand, pavement markings are subject to a series of deterioration issues (e.g., wear and tear). Markings in poor condition typically manifest as being blurred or even missing in certain places. The need for proper maintenance strategies on roadway markings, such as repainting, can only be determined based on a comprehensive understanding of their as-is worn condition. Given the fact that an efficient, automated and accurate approach to collect such condition information is lacking in practice, this study proposes a vision-based framework for pavement marking detection and condition assessment. A hybrid feature detector and a threshold-based method were used for line marking identification and classification. For each identified line marking, its worn/blurred severity level was then quantified in terms of worn percentage at a pixel level. The damage estimation results were compared to manual measurements for evaluation, indicating that the proposed method is capable of providing indicative knowledge about the as-is condition of pavement markings. This paper demonstrates the promising potential of computer vision in the infrastructure sector, in terms of implementing a wider range of managerial operations for roadway management.

Highlights

  • Introduction published maps and institutional affilPavement markings, together with signs, constitute the most fundamental way to communicate with road users and they are, in most cases, the most effective way to regulate, warn and guide traffic [1]

  • Together with signs, constitute the most fundamental way to communicate with road users and they are, in most cases, the most effective way to regulate, warn and guide traffic [1]

  • Inspired by the potential of emerging computer vision technology, this study aims to develop an automated inspection method for pavement markings by making full use of the pavement video data readily archived in most road agencies/authorities

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Summary

Introduction

Together with signs, constitute the most fundamental way to communicate with road users and they are, in most cases, the most effective way to regulate, warn and guide traffic [1]. With the aim to deliver unambiguous instructions to road users, and thereby, expect immediate responses from them, four major categories of pavement markings, namely, longitudinal lines, transverse lines, other markings and raised pavement markers, are used universally all over the world. These markings have been designed to be highly standardized, in terms of their color and appearance. Their appearance and detail dimensions, e.g., the width of linear markings, angles in arrow markings and size of other sign markings might differ across countries, yet they always strictly conform to the specifications in the national and/or local standards

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