CrowdMapping:一种辅助自动驾驶交通网络数据库生成的新系统

M. Szántó, L. Vajta
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引用次数: 6

摘要

事实证明,道路网络和道路环境的高清地图对自动驾驶非常有用。这样的地图可以被证明对自动驾驶汽车有很多用途——例如,初步路线规划、危险准备和避免等。然而,为这种地图制作足够的数据可能是昂贵的,因为道路条件在时域上的高度可变性,并且取决于给定运输基础设施的要素的负载-即道路负载。本文介绍了CrowdMapping架构,该架构利用众包、图像处理和云计算提供的机会,为生成广泛且高清的道路数据库提供了一个新的框架。在与CrowdMapping框架的功能开发相关的领域中展示了最新的研究成果。第三章还列出了布达佩斯科技经济大学目前正在进行的与CrowdMapping相关的研究和开发活动。以及未来工作的可能性,这些在第四章中列出。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Introducing CrowdMapping: A Novel System for Generating Autonomous Driving Aiding Traffic Network Databases
High definition maps of the road networks and the roads' environment have proven to be utterly useful for autonomous driving. Such maps can prove to be useful for the autonomous vehicle for numerous purposes - e.g. preliminary route planning, danger preparation and avoidance, etc. However, producing sufficient data for such maps can be costly because of the high variability of road conditions in the time domain and depending on the load of the elements of the given piece of transport infrastructure - i.e. road loads. In this paper, the CrowdMapping architecture is introduced, which presents a novel framework developed for the generation of an extensive and high definition road database, exploiting the opportunities offered by crowdsourcing, image processing, and cloud computing. State-of-the-art research is presented in the fields related to the development of the functions of the CrowdMapping framework. The currently ongoing research and development activities linked to CrowdMapping carried out at the Budapest University of Technology and Economics are also listed in chapter III. of this paper, as well as the future work possibilities, which are listed in chapter IV.
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