提高弱势道路使用者安全的协同传感器数据融合策略的系统级仿真

A. P. D. Silva, Imane Horiya Brahmi, S. Leirens, B. Denis
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引用次数: 7

摘要

车辆和/或与道路基础设施的静态元素之间的合作可以实现广泛的应用和服务,例如交通监测和预测,定位和绘图,或为弱势道路使用者提供新的安全方法。例如,依靠车载传感器、传统导航系统和V2X无线连接,车辆可以以考虑障碍物存在的局部占用网格地图的形式表示地理标记测量(例如激光雷达)。后者的地图随后可以直接共享(例如,与周围的其他车辆共享)或通过一个集中实体(例如,边缘云…)。通过协作融合,装备车辆因此有助于阐述物理环境的全局视图。在本文中,我们首先描述了一个灵活的端到端系统模拟器,可以在复杂的道路驾驶环境中评估这种合作映射策略。整个仿真流程涵盖了从传感器和V2X连接抽象到在应用级别运行的融合算法。然后,我们展示了一些智能路口场景的模拟结果,证实了v2x辅助合作在增强独立车辆在覆盖和检测性能方面的物理感知方面的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
System-level Simulation of Cooperative Sensor Data Fusion Strategies for Improved Vulnerable Road Users Safety
Cooperation between vehicles and/or with static elements of the road infrastructure enables a wide number of applications and services, such as traffic monitoring and prediction, localization and mapping, or novel safety approaches for vulnerable road users. For instance, relying on on-board sensors, on conventional navigation systems, and on V2X wireless connectivity, vehicles can represent geo-tagged measurements (e.g., LiDAR) in the form of local occupancy grid maps accounting for the presence of obstacles. The latter maps can be subsequently shared, either directly (e.g., with other fellow vehicles around) or via a centralized entity (e.g., edge cloud…). Through cooperative fusion, equipped vehicles thus contribute to elaborate a global view of the physical environment.In this paper, we first describe a flexible end-to-end system simulator that can evaluate such cooperative mapping strategies in complex road driving environments. The overall simulation flow spans from sensor and V2X connectivity abstractions up to fusion algorithms running at the application level. We then present a few illustrating simulation results in a smart intersection scenario, confirming the importance of V2X-aided cooperation to enhance the physical perception of standalone vehicles in terms of both coverage and detection performances.
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