Applicability of Neural Networks for Driving Style Classification and Maneuver Detection

Karl-Falco Storm, Paul Hochrein, P. Engel, A. Rausch
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引用次数: 0

Abstract

Maneuver and driving style detection are of ongoing interest for the extension of vehicle's functionalities. Existing machine learning approaches require extensive sensor data and demand for high computational power. For vehicle onboard implementation, poorly generalizing rule-based approaches are currently state of the art. Not being restricted to neither comprehensive environmental sensors like camera or radar, nor high computing power (both of what is today only present in upper class' vehicles), our approach allows for cross-vehicle use: In this work, the applicability of small artificial neural networks (ANN) as efficient detectors is tested using a prototypal vehicle implementation. During test drives, overtaking maneuvers have been detected 1.2 s prior to the competing rule-based approach in average, also greatly improving the detection performance. Regarding driving style recognition, ANN-based results are closer to targets and more patient at driving style transitions. A recognition rate of over 75 % is achieved.
神经网络在驾驶风格分类和机动检测中的适用性
机动和驾驶风格的检测是不断感兴趣的车辆的功能扩展。现有的机器学习方法需要大量的传感器数据和高计算能力的需求。对于车载实现,基于规则的泛化方法是目前的技术水平。我们的方法既不局限于像摄像头或雷达这样的综合环境传感器,也不局限于高计算能力(这两者目前只存在于上流社会的车辆中),也允许跨车辆使用:在这项工作中,使用原型车辆实现测试了小型人工神经网络(ANN)作为高效探测器的适用性。在试驾过程中,超车动作的检测平均比基于规则的竞争方法提前1.2 s,检测性能也得到了极大的提高。在驾驶风格识别方面,基于人工神经网络的结果更接近目标,并且在驾驶风格转换方面更有耐心。识别率达到75%以上。
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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