Adaptive LiDAR Odometry and Mapping for Autonomous Agricultural Mobile Robots in Unmanned Farms
Hanzhe Teng, Yipeng Wang, Dimitrios Chatziparaschis, Konstantinos, Karydis

TL;DR
This paper presents an adaptive LiDAR odometry and mapping framework specifically designed for autonomous agricultural robots, addressing the unique challenges of unstructured, dynamic, and uneven terrains in farms to improve accuracy and robustness.
Contribution
The work introduces a novel adaptive LiDAR odometry and mapping method tailored for agricultural environments, combining dense Generalized-ICP scan matching with adaptive map updates for enhanced robustness.
Findings
Achieves high-accuracy odometry in complex agricultural terrains
Robustly handles abrupt robot motions and environmental dynamics
Maintains computational efficiency comparable to existing methods
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…
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Taxonomy
TopicsSmart Agriculture and AI
