2022
DOI: 10.3390/s22229019
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An Exploration of Recent Intelligent Image Analysis Techniques for Visual Pavement Surface Condition Assessment

Abstract: Road pavement condition assessment is essential for maintenance, asset management, and budgeting for pavement infrastructure. Countries allocate a substantial annual budget to maintain and improve local, regional, and national highways. Pavement condition is assessed by measuring several pavement characteristics such as roughness, surface skid resistance, pavement strength, deflection, and visual surface distresses. Visual inspection identifies and quantifies surface distresses, and the condition is assessed u… Show more

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Cited by 10 publications
(5 citation statements)
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“…Ali et al [19], Ali et al [20], Hamishebahar et al [21], and Intisar et al [22] studied DL-based approaches to crack detection. Chu et al [23], Qureshi et al [24], and Ranyal et al [25] reviewed the general SOTA in the AVI of pavements and roads, while Kim et al [26] focused more specifically on the detection of potholes. A wider scope is covered by Zhou et al [27] and Hassani et al [28], as they consider structural health monitoring as a whole, not just cracks or pavements and roads.…”
Section: Methodology Of Literature Researchmentioning
confidence: 99%
“…Ali et al [19], Ali et al [20], Hamishebahar et al [21], and Intisar et al [22] studied DL-based approaches to crack detection. Chu et al [23], Qureshi et al [24], and Ranyal et al [25] reviewed the general SOTA in the AVI of pavements and roads, while Kim et al [26] focused more specifically on the detection of potholes. A wider scope is covered by Zhou et al [27] and Hassani et al [28], as they consider structural health monitoring as a whole, not just cracks or pavements and roads.…”
Section: Methodology Of Literature Researchmentioning
confidence: 99%
“…Pavement video or image data are collected by cameras or drones. With the advancement of image processing techniques, scholars can identify pavement cracks, ruts, and roughness from images captured by cameras [1,15,16] or aerial images recorded by Unmanned Aerial Vehicles (UAVs) [17][18][19] or Google Maps [20,21]. Comparing cameras mounted on vehicles, UAVs offer a broader perspective and can cover larger areas quickly, yet they cannot capture detailed characteristics of pavement surfaces.…”
Section: Pavement Data Sourcementioning
confidence: 99%
“…Over the years, three-dimensional (3D) methods utilizing laser scanning, ground penetrating radar (GPR), and unmanned aerial vehicles (UAVs) have been a hot spot for detecting 3D pavement characteristics like volume and depth. PaveVision3D, Pavemetrics, and RICOH are typical automated detection systems that apply 3D techniques [12,13]. For example, PaveVision3D can conduct a complete lane width distress detection survey at 1 mm resolution at a speed up to 100 KM/h [14].…”
Section: Introductionmentioning
confidence: 99%