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Identification of Road-Surface Type Using Deep Neural Networks for Friction Coefficient Estimation

机译:基于深度神经网络的摩擦系数估算识别路面类型

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摘要

Nowadays, vehicles have advanced driver-assistance systems which help to improve vehicle safety and save the lives of drivers, passengers and pedestrians. Identification of the road-surface type and condition in real time using a video image sensor, can increase the effectiveness of such systems significantly, especially when adapting it for braking and stability-related solutions. This paper contributes to the development of the new efficient engineering solution aimed at improving vehicle dynamics control via the anti-lock braking system (ABS) by estimating friction coefficient using video data. The experimental research on three different road surface types in dry and wet conditions has been carried out and braking performance was established with a car mathematical model (MM). Testing of a deep neural networks (DNN)-based road-surface and conditions classification algorithm revealed that this is the most promising approach for this task. The research has shown that the proposed solution increases the performance of ABS with a rule-based control strategy.
机译:如今,车辆具有先进的驾驶员辅助系统,有助于提高车辆安全性并挽救驾驶员,乘客和行人的生命。使用视频图像传感器实时识别路面类型和状况,可以显着提高此类系统的效率,尤其是在使其适应制动和与稳定性相关的解决方案时。本文致力于开发新的有效工程解决方案,该解决方案旨在通过使用视频数据估算摩擦系数,通过防抱死制动系统(ABS)改善车辆动力学控制。在干燥和潮湿条件下进行了三种不同路面类型的实验研究,并通过汽车数学模型(MM)建立了制动性能。对基于深度神经网络(DNN)的路面和条件分类算法的测试表明,这是完成此任务的最有前途的方法。研究表明,提出的解决方案通过基于规则的控制策略提高了ABS的性能。

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