用于葡萄园机器人定位的语义地标粒子滤波器 / Semantic Landmark Particle Filter for Robot Localisation in Vineyards
1️⃣ 一句话总结
这篇论文提出了一种结合激光雷达与树干、柱子等语义地标的新型定位方法,有效解决了葡萄园中因作物行高度相似而导致机器人容易迷路的问题,显著提升了定位的准确性和鲁棒性。
Reliable localisation in vineyards is hindered by row-level perceptual aliasing: parallel crop rows produce nearly identical LiDAR observations, causing geometry-only and vision-based SLAM systems to converge towards incorrect corridors, particularly during headland transitions. We present a Semantic Landmark Particle Filter (SLPF) that integrates trunk and pole landmark detections with 2D LiDAR within a probabilistic localisation framework. Detected trunks are converted into semantic walls, forming structural row boundaries embedded in the measurement model to improve discrimination between adjacent rows. GNSS is incorporated as a lightweight prior that stabilises localisation when semantic observations are sparse. Field experiments in a 10-row vineyard demonstrate consistent improvements over geometry-only (AMCL), vision-based (RTAB-Map), and GNSS baselines. Compared to AMCL, SLPF reduces Absolute Pose Error by 22% and 65% across two traversal directions; relative to a NoisyGNSS baseline, APE decreases by 65% and 61%. Row correctness improves from 0.67 to 0.73, while mean cross-track error decreases from 1.40 m to 1.26 m. These results show that embedding row-level structural semantics within the measurement model enables robust localisation in highly repetitive outdoor agricultural environments.
用于葡萄园机器人定位的语义地标粒子滤波器 / Semantic Landmark Particle Filter for Robot Localisation in Vineyards
这篇论文提出了一种结合激光雷达与树干、柱子等语义地标的新型定位方法,有效解决了葡萄园中因作物行高度相似而导致机器人容易迷路的问题,显著提升了定位的准确性和鲁棒性。
源自 arXiv: 2603.10847