智能车辆服务中自适应分辨率地理参考框架

Amr S. El-Wakeel, A. Noureldin, N. Zorba, H. Hassanein
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引用次数: 2

摘要

未来的智慧城市深刻期待提供确保日常胜任功能的服务。高效的交通管理和相关的车辆服务是考虑城市良好运行的关键方面。车辆和智能手机在车辆内部和车辆之间的传感和计算能力的显著存在为强大的车辆和道路服务打开了大门。目前和未来的改装车辆将能够提供有关道路状况和危险、驾驶员行为和交通状况的准确实时信息。为了在提供车辆服务的同时保持鲁棒性,需要充分的地理参考。目前广泛使用的全球定位系统(GPS)接收器只能提供1hz的低分辨率位置更新,这在高速下是不够的。此外,替代的高数据速率地理参考技术可能面临自包含或基于环境的性能限制。在本文中,我们提出了一种自适应分辨率集成地理参考框架,增强GPS和惯性传感器,为道路信息服务提供准确的定位和定位。此外,我们还研究了所提出的系统在选定的实际道路服务的地理参考中的有效性。
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A Framework for Adaptive Resolution Geo-Referencing in Intelligent Vehicular Services
Future smart cities are profoundly looking forward to providing services that assure daily competent functionality. Efficient traffic management and related vehicular services are crucial aspects when considering the city’s decent operation. The significant presence of the vehicular and smartphone sensing and computing capabilities within and amongst the vehicles open the door towards robust vehicular and road services. The retrofitted present and future vehicles will be able to provide accurate real-time information about the road conditions and hazards, driver behaviour, and traffic. Adequate geo-referencing is remarkably demanded in order to preserve robustness while providing vehicular services. Present and widely spread global positioning systems (GPS) receivers are providing low- resolution position update at 1 Hz, which is not sufficient at high speeds. Also, alternative high data rate geo-referencing technologies may face self-contained or environmental-based performance limitations. In this paper, we propose an adaptive resolution integrated geo-referencing framework that augments GPS and inertial sensors to provide accurate localization and positioning for road information services. Also, we examine the effectiveness of the proposed system in geo- referencing for selected real-life road services.
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