Lidar-based Obstacle Detection and Recognition for Autonomous Agricultural Vehicles

M. Kragh
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引用次数: 3

Abstract

Today, agricultural vehicles are available that can drive autonomously and follow exact route plans more precisely than human operators. Combined with advancements in precision agriculture, autonomous agricultural robots can reduce manual labor, improve workflow, and optimize yield. However, as of today, human operators are still required for monitoring the environment and acting upon potential obstacles in front of the vehicle. To eliminate this need, safety must be ensured by accurate and reliable obstacle detection and avoidance systems. In this thesis, lidar-based obstacle detection and recognition in agricultural environments has been investigated. A rotating multi-beam lidar generating 3D point clouds was used for point-wise classification of agricultural scenes, while multi-modal fusion with cameras and radar was used to increase performance and robustness. Two research perception platforms were presented and used for data acquisition. The proposed methods were all evaluated on recorded datasets that represented a wide range of realistic agricultural environments and included both static and dynamic obstacles. For 3D point cloud classification, two methods were proposed for handling density variations during feature extraction. One method outperformed a frequently used generic 3D feature descriptor, whereas the other method showed promising preliminary results using deep learning on 2D range images. For multi-modal fusion, four methods were proposed for combining lidar with color camera, thermal camera, and radar. Gradual improvements in classification accuracy were seen, as spatial, temporal, and multi-modal relationships were introduced in the models. Finally, occupancy grid mapping was used to fuse and map detections globally, and runtime obstacle detection was applied on mapped detections along the vehicle path, thus simulating an actual traversal. The proposed methods serve as a first step towards full autonomy for agricultural vehicles. The study has thus shown that recent advancements in autonomous driving can be transferred to the agricultural domain, when accurate distinctions are made between obstacles and processable vegetation. Future research in the domain has further been facilitated with the release of the multi-modal obstacle dataset, FieldSAFE.
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基于激光雷达的自动农用车辆障碍物检测与识别
如今,农用车辆可以自动驾驶,并且比人类操作员更精确地遵循精确的路线计划。结合精准农业的进步,自主农业机器人可以减少体力劳动,改善工作流程,优化产量。然而,到目前为止,仍然需要人工操作员来监测环境并对车辆前方的潜在障碍物采取行动。为了消除这种需求,必须通过准确可靠的障碍物检测和避障系统来确保安全。本文研究了农业环境下基于激光雷达的障碍物检测与识别。利用旋转多波束激光雷达生成三维点云对农业场景进行点向分类,同时利用相机和雷达的多模态融合来提高性能和鲁棒性。提出了两个研究感知平台,并将其用于数据采集。所提出的方法都在记录的数据集上进行了评估,这些数据集代表了广泛的现实农业环境,包括静态和动态障碍。针对三维点云分类,提出了两种特征提取过程中密度变化的处理方法。一种方法优于常用的通用3D特征描述符,而另一种方法在2D范围图像上使用深度学习显示出有希望的初步结果。针对多模态融合,提出了激光雷达与彩色相机、热像仪和雷达相结合的四种方法。随着模型中空间、时间和多模态关系的引入,分类精度逐渐提高。最后,利用占用网格映射对检测进行全局融合和映射,并将运行时障碍物检测应用于沿着车辆路径的映射检测,从而模拟实际的穿越。拟议的方法是迈向农业车辆完全自主的第一步。因此,该研究表明,当准确区分障碍物和可处理植被时,自动驾驶的最新进展可以转移到农业领域。随着多模态障碍物数据集FieldSAFE的发布,该领域的未来研究得到了进一步的促进。
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