机器人引导车辆高动态试验自动传感器性能评价

David Hermann, Granit Tejeci, C. M. Martinez, Gereon Hinz, Alois Knoll
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引用次数: 0

摘要

随着自动驾驶汽车测试需求的增长,对全面可靠的环境监测系统的需求变得越来越重要。在高度动态的驾驶测试场景中,远程感知对于检测危险和危险,确保测试车辆和赛道上其他人的安全至关重要。然而,由于传感器感知限制的复杂性,确定适当的传感器设置可能具有挑战性。感知限制取决于传感器的特性和环境。在这项工作中,我们提出了一种自动评估高动态驾驶传感器性能的新方法,以提高试验场自动化测试的安全性和效率。我们的方法包括估计常见传感器技术的检测范围和分析传感器系统在各种环境条件下的性能。通过提前评估传感器性能,并在高速轨道上比较不同的传感器设置,我们能够识别出具有较高碰撞风险的关键轨道路段,并相应地进行保障测试。本研究强调先进的环境监测和传感器分析在确保自动车辆测试的安全性和效率方面的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated Sensor Performance Evaluation of Robot-Guided Vehicles for High Dynamic Tests
As the demand for automated vehicle testing on proving grounds grows, the need for comprehensive and reliable environment monitoring systems becomes increasingly important. In highly dynamic driving test scenarios, long-range perception is essential for detecting dangers and hazards, ensuring the safety of both the test vehicle and other people on the track. However, determining an appropriate sensor setup can be challenging due to the complexity of sensor perception limitations. Perception limitations depend on the sensor characteristics and the environment. In this work, we propose a new approach to automatically evaluate sensor performance for high dynamic driving to improve the safety and efficiency of automated testing on proving grounds. Our approach involves estimating the detection range of common sensor technologies and analyzing the performance of sensor systems under various environmental conditions. By evaluating sensor performance in advance and comparing different sensor setups on tracks with a high-speed profile, we are able to identify critical track sections with higher collision risks and safeguard tests accordingly. This study emphasizes the importance of advanced environmental monitoring and sensor analysis in ensuring the safety and efficiency of automated vehicle testing.
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