Machine Learning Combined with Thresholding - A Blended Approach to Potholes Detection

Noor Jehan Ashaari Muhamad, Muhammad Ehsan Rana, Vazeerudeen Abdul Hameed, H. K. Tripathy
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引用次数: 2

Abstract

Potholes are a regular occurrence that can cause discomfort and harm everyday road users. In recent times many studies have been done on automated pothole detection as there is a need to assess the road condition in a more affordable and timely manner. This research aims to explore the different motion-based approaches used in pothole detection. Motion sensors such as accelerometers and gyroscopes are commonly utilised to acquire movement information, and these data can be used not only to detect the presence of potholes but also have been used to classify general road conditions. It has been found that the approaches can be divided into two categories: threshold-based and machine learning. For both approaches, statistical features are extracted from the motion data and used in determining the threshold values or as inputs to train the classifier models. Further opportunities for improvement in data labelling and the need to classify pothole severity levels using a standard metric are also discussed in the paper.
结合阈值的机器学习-一种凹坑检测的混合方法
坑洼是经常发生的,会引起不适,并对日常道路使用者造成伤害。近年来,由于需要以更经济、更及时的方式评估道路状况,人们对自动凹坑检测进行了许多研究。本研究旨在探索不同的基于运动的坑穴检测方法。运动传感器如加速度计和陀螺仪通常用于获取运动信息,这些数据不仅可以用于检测凹坑的存在,还可以用于对一般路况进行分类。研究发现,这些方法可以分为两类:基于阈值的方法和机器学习方法。对于这两种方法,从运动数据中提取统计特征并用于确定阈值或作为训练分类器模型的输入。本文还讨论了进一步改进数据标记的机会,以及使用标准度量标准对坑洼严重程度进行分类的必要性。
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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