Intelligent driver assist system for urban driving

P. Ioannou, Yihang Zhang
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引用次数: 7

Abstract

Driving in an urban environment is hectic and often adventurous. Getting accurate routing instructions, finding parking spots, receiving customized information that helps individual drivers reach their destination will significantly reduce the stress of driving, save fuel and reduce unnecessary delays and pollution levels. In this paper we present a system that combines smart navigation with intelligent parking assist and driver diagnostics to considerably improve driving comfort, safety and mobility in an urban environment. The smart navigation employs an on line traffic simulator which provides traffic predictions and improves the accuracy of existing navigation systems which rely on limited traffic data. The intelligent parking assist system predicts the availability of parking at the start of the journey and these predictions get updated as the destination is approached. The system uses machine learning to understand the habits and preferences of the individual driver so that the preferred parking availability information is presented to the driver. The driver diagnostics part learns the driving characteristics of the driver i.e. whether aggressive, semi aggressive or passive, reaction times, following distances etc. and provides this information to the smart navigation and parking assist system for better estimation of travel times. In addition, it can be used to support collision warnings and other driver assist devices. The proposed system has been successfully demonstrated using an AUDI vehicle in the area of Los Angeles and San Francisco.
智能驾驶辅助系统,用于城市驾驶
在城市环境中开车是忙碌的,而且经常是冒险的。获得准确的路线指示,找到停车位,接收定制信息,帮助个别司机到达目的地,将大大减少驾驶压力,节省燃料,减少不必要的延误和污染水平。在本文中,我们提出了一个将智能导航与智能停车辅助和驾驶员诊断相结合的系统,以显着提高城市环境中的驾驶舒适性,安全性和机动性。智能导航采用在线交通模拟器,提供交通预测,提高现有导航系统依赖有限交通数据的准确性。智能停车辅助系统在旅程开始时预测停车位的可用性,并在接近目的地时更新这些预测。该系统使用机器学习来了解单个驾驶员的习惯和偏好,以便向驾驶员提供首选的停车位可用性信息。驾驶员诊断部分学习驾驶员的驾驶特征,即是主动、半主动还是被动、反应时间、跟随距离等,并将这些信息提供给智能导航和停车辅助系统,以便更好地估计行驶时间。此外,它还可用于支持碰撞警告和其他驾驶员辅助设备。该系统已经在洛杉矶和旧金山地区的奥迪汽车上成功地进行了演示。
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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