Automatic Detection of Road Surface Conditions using Tire Noise from Vehicles

Wuttiwat Kongrattanaprasert, H. Nomura, T. Kamakura, K. Ueda
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引用次数: 11

Abstract

The detection of road surface conditions is an important process in efficient road management. In particular, in snowy seasons, prior information about the road conditions such as an icy state, helps road users or automobile drivers to obviate serious traffic accidents. This paper proposes a novel approach for automatically detecting the states of the road surface from tire noises of vehicles. The method is based on a wavelet transform analysis, artificial neural networks, and the mathematical theory of evidence. The proposed method employs the wavelet transform using multiresolution signal decomposition techniques. The proposed classification is carried out in sets of multiple neural networks using learning vector quantization networks. The outcomes of the networks are then integrated using the voting decision‐making scheme. It seems then feasible to detect passively and readily the states of the surface, i.e., as a rule of thumb, the dry, wet, snowy, and slushy state, automatically.
基于车辆轮胎噪声的路面状况自动检测
路面状况的检测是高效道路管理的一个重要环节。特别是在下雪的季节,关于道路状况的预先信息,如结冰状态,可以帮助道路使用者或汽车司机避免严重的交通事故。本文提出了一种基于车辆轮胎噪声的路面状态自动检测方法。该方法基于小波变换分析、人工神经网络和证据数学理论。该方法采用小波变换和多分辨率信号分解技术。所提出的分类是使用学习向量量化网络在多个神经网络集合中进行的。然后使用投票决策方案整合网络的结果。因此,被动且容易地检测地表状态似乎是可行的,即,根据经验,自动检测干、湿、雪和泥泞状态。
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