A review on computer vision and machine learning techniques for automated road surface defect and distress detection

Xuejing Chen, Sira Yongchareon, Martin Knoche
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引用次数: 2

Abstract

As the pace grows in the development of image processing techniques and the current applications rise in machine learning and deep learning techniques for visual inspections and physical assessment, this article reviews the existing literature. It provides a detailed synthesis of the overview of surface pavement conditions, computer-vision-based technologies for road damage detection, various datasets and data collection methods. We analyse and compare different machine-learning methods and models proposed in the literature and identify challenges that need to be addressed in the future in road surface defect detection.
计算机视觉与机器学习技术在路面缺陷与损伤自动检测中的研究进展
随着图像处理技术的发展步伐加快,机器学习和深度学习技术在视觉检查和身体评估中的应用日益增多,本文对现有文献进行了综述。它详细地综合了路面状况的概述、基于计算机视觉的道路损伤检测技术、各种数据集和数据收集方法。我们分析和比较了文献中提出的不同机器学习方法和模型,并确定了未来在路面缺陷检测中需要解决的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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