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引用次数: 0

摘要

摘要自动驾驶具有缓解拥堵、通过重新分配驾驶时间提高生产率和减少能源浪费等优点。然而,对于学术界和工业界来说,实现 4 级和 5 级自动驾驶仍是一项重大挑战。在自动驾驶的各种模块中,高清(HD)地图因其地图元素的高精度而成为一个重要组成部分,可实现精确定位、场景解读、导航、车辆控制和周围物体运动轨迹预测。包括 TomTom、HERE、Waymo 和英伟达在内的多家地图提供商都为各自的特定用途创建了高清地图。然而,大多数高清地图数据集都不公开,因此研究人员和公司无法研究高清地图生成的当前趋势。此外,最近关于高清地图生成的调查论文往往只关注特定方面,如道路拓扑或边界提取,而不是考虑端到端的整体高清地图生成过程。因此,我们首先简要介绍高清地图的定义、标准和功能,然后探讨不同类型的高清地图,包括离线和在线变体,强调它们各自的优缺点。最后,我们将讨论最新的端到端高清地图生成架构以及各种类型的开源高清地图数据集,并比较它们的性能。
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A Review on End-to-End High-Definition Map Generation
Abstract. Autonomous driving offers benefits such as congestion mitigation, increased productivity through the reallocation of driving time, and decreased energy waste. However, achieving Level 4 and 5 autonomous driving remains a significant challenge for both academia and industry. Among the various modules of autonomous driving, High-Definition (HD) maps have become a crucial component due to their high precision in map elements, enabling accurate localization, scene interpretation, navigation, vehicle control and motion forecasting of trajectory of surrounding objects. Several map providers, including TomTom, HERE, Waymo, and NVIDIA, create HD maps for their specific purposes. However, most HD map datasets are not publicly available for individual researchers and companies to investigate the current trends in HD map generation. Furthermore, recent survey papers on HD map generation have tended to focus only on specific aspects, such as road topology or boundary extraction, rather than considering the overall end-to-end HD map generation process. Therefore, we begin with a brief definition, standards, and functionality of HD maps, followed by an exploration of different types of HD maps, including offline and online variants, highlighting their respective advantages and disadvantages. Finally, we will discuss the most recent end-to-end HD map generation architectures, along with various types of open-source HD map datasets and compare their performances.
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