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Semantic Landmark Particle Filter for Robot Localisation in Vineyards

arXiv:2603.10847v17.3h-index: 7
Predicted impact top 40% in RO · last 90 daysOriginality Incremental advance
AI Analysis

This addresses localization challenges for agricultural robots in repetitive environments like vineyards, representing a domain-specific incremental improvement.

The paper tackled robot localization in vineyards by integrating semantic landmark detections with LiDAR in a particle filter, reducing Absolute Pose Error by up to 65% compared to baselines and improving row correctness from 0.67 to 0.73.

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.

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