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Adaptive LiDAR odometry and mapping for autonomous agricultural mobile robots in unmanned farms

Hanzhe Teng, Dimitrios Chatziparaschis, Konstantinos Karydis

Year
2025
Citations
33

Abstract

Unmanned and intelligent agricultural systems are crucial for enhancing agricultural efficiency and for helping mitigate the effect of labor shortage. However, unlike urban environments, agricultural fields impose distinct and unique challenges on autonomous robotic systems, such as the unstructured and dynamic nature of the environment, the rough and uneven terrain, and the resulting non-smooth robot motion. To address these challenges, this work introduces an adaptive LiDAR odometry and mapping framework tailored for autonomous agricultural mobile robots operating in complex agricultural environments. The proposed framework consists of a robust LiDAR odometry algorithm based on dense Generalized-ICP scan matching, and an adaptive mapping module that considers motion stability and point cloud consistency for selective map updates. The key design principle of this framework is to prioritize the incremental consistency of the map by rejecting motion-distorted points and sparse dynamic objects, which in turn leads to high accuracy in odometry estimated from scan matching against the map. The effectiveness of the proposed method is validated via extensive evaluation against state-of-the-art methods on field datasets collected in real-world agricultural environments featuring various planting types, terrain types, and robot motion profiles. Results demonstrate that our method can achieve accurate odometry estimation and mapping results consistently and robustly across diverse agricultural settings, whereas other methods are sensitive to abrupt robot motion and accumulated drift in unstructured environments. Further, the computational efficiency of our method is competitive compared with other methods. The source code of the developed method and the associated field dataset are publicly available at https://github.com/UCR-Robotics/AG-LOAM . • LiDAR-only odometry and mapping for mobile robot navigation in unstructured environments. • Adaptive map updates based on ego-motion stability and incremental mapping consistency. • Dataset collected via a wheeled robot with a 3D LiDAR over three phases and in various tree-crop fields. • Experiments and validation against five related state-of-the-art methods. • Dataset and source code publicly available at https://github.com/UCR-Robotics/AG-LOAM .

Keywords

OdometryMobile robotLidarRobotPrecision agricultureRemote sensingArtificial intelligenceComputer visionComputer scienceAgriculture

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