Assessing Impact of Understory Vegetation Density on Solid Obstacle Detection for Off-Road Autonomous Ground Vehicles

Morteza Foroutan, Wenmeng Tian, C. Goodin
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引用次数: 6

Abstract

In autonomous driving systems, advanced sensing technologies (such as Light Detection and Ranging (LIDAR) devices and cameras) can capture high volume of data for real-time traversability analysis. Off-road autonomy is more challenging than other autonomous applications due to the highly unstructured environment with various types of vegetation. The understory with unknown density can create extremely challenging scenarios (such as negative obstacles masked by dense vegetation) by concealing potential obstacles in the terrain, leading to severe vehicle damage, significant financial loss, and even operator injury or death. This paper investigates the impact of understory vegetation density on obstacle detection in off-road traversability analysis. By leveraging a physics-based autonomous driving simulator, a machine learning–based framework is proposed for obstacle detection based on point cloud data captured by LIDAR. It is observed that the increase in the density of understory vegetation adversely affects the classification performance in correctly detecting solid obstacles. With the cumulative approach used in this paper, however, sensitivity results for different density levels converge as the vehicles incorporates more time frame data into the classification algorithm.
林下植被密度对越野自主地面车辆固体障碍物检测的影响
在自动驾驶系统中,先进的传感技术(如光探测和测距(LIDAR)设备和摄像头)可以捕获大量数据,用于实时可穿越性分析。由于高度非结构化的环境和各种类型的植被,越野自动驾驶比其他自动驾驶应用更具挑战性。未知密度的林下植被可以通过隐藏地形中的潜在障碍物来创造极具挑战性的场景(例如被茂密植被掩盖的负面障碍),导致严重的车辆损坏,重大的经济损失,甚至操作员受伤或死亡。本文研究了在越野可穿越性分析中,林下植被密度对障碍物检测的影响。利用基于物理的自动驾驶模拟器,提出了一种基于机器学习的框架,用于基于激光雷达捕获的点云数据进行障碍物检测。研究发现,林下植被密度的增加会对固体障碍物的分类性能产生不利影响。然而,在本文使用的累积方法中,随着车辆将更多的时间框架数据纳入分类算法,不同密度级别的灵敏度结果收敛。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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