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利用基于激光雷达的模拟来量化农村环境中自动驾驶车辆静态环境的复杂性。

Leveraging LiDAR-Based Simulations to Quantify the Complexity of the Static Environment for Autonomous Vehicles in Rural Settings.

作者信息

Abohassan Mohamed, El-Basyouny Karim

机构信息

Department of Civil and Environmental Engineering, Faculty of Engineering, University of Alberta, Edmonton, AB T6G 1H9, Canada.

出版信息

Sensors (Basel). 2024 Jan 11;24(2):452. doi: 10.3390/s24020452.

DOI:10.3390/s24020452
PMID:38257547
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10820782/
Abstract

This paper uses virtual simulations to examine the interaction between autonomous vehicles (AVs) and their surrounding environment. A framework was developed to estimate the environment's complexity by calculating the real-time data processing requirements for AVs to navigate effectively. The VISTA simulator was used to synthesize viewpoints to replicate the captured environment accurately. With an emphasis on static physical features, roadways were dissected into relevant road features (RRFs) and full environment (FE) to study the impact of roadside features on the scene complexity and demonstrate the gravity of wildlife-vehicle collisions (WVCs) on AVs. The results indicate that roadside features substantially increase environmental complexity by up to 400%. Increasing a single lane to the road was observed to increase the processing requirements by 12.3-16.5%. Crest vertical curves decrease data rates due to occlusion challenges, with a reported average of 4.2% data loss, while sag curves can increase the complexity by 7%. In horizontal curves, roadside occlusion contributed to severe loss in road information, leading to a decrease in data rate requirements by as much as 19%. As for weather conditions, heavy rain increased the AV's processing demands by a staggering 240% when compared to normal weather conditions. AV developers and government agencies can exploit the findings of this study to better tailor AV designs and meet the necessary infrastructure requirements.

摘要

本文使用虚拟模拟来研究自动驾驶汽车(AV)与其周围环境之间的相互作用。开发了一个框架,通过计算自动驾驶汽车有效导航所需的实时数据处理要求来估计环境的复杂性。使用VISTA模拟器合成视点,以准确复制捕获的环境。重点关注静态物理特征,将道路分解为相关道路特征(RRF)和全环境(FE),以研究路边特征对场景复杂性的影响,并证明野生动物与车辆碰撞(WVC)对自动驾驶汽车的严重性。结果表明,路边特征可使环境复杂性大幅增加,最高可达400%。观察到在道路上增加一条车道会使处理要求提高12.3 - 16.5%。由于遮挡挑战,凸形竖曲线会降低数据速率,报告的平均数据丢失率为4.2%,而凹形曲线可使复杂性增加7%。在水平曲线中,路边遮挡导致道路信息严重丢失,导致数据速率要求降低多达19%。至于天气条件,与正常天气条件相比,大雨使自动驾驶汽车的处理需求惊人地增加了240%。自动驾驶汽车开发者和政府机构可以利用本研究的结果,更好地调整自动驾驶汽车设计,并满足必要的基础设施要求。

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