Shell-based workspace decomposition for rapid multi-goal path planning in up-close fruit tree inspection

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Abstract

Efficient algorithms enabling collision-free path-planning for quadrotor UAVs with robotic arms could transform precision agriculture, enabling tasks like fruit inspection and manipulation in complex environments. This study introduces a workspace decomposition strategy for cluttered obstacle regions, like tree crowns, to simplify planning. By partitioning the workspace using the convex hull of each tree crown, the proposed method simultaneously addresses two challenges: (1) determining the optimal sequence for visiting target points (e.g., fruits) and (2) planning collision-free, length-efficient paths around branches. In simulations, a planning method based on this decomposition plans significantly shorter paths (up to 30% in some cases) and reaches more targets than a baseline monolithic planner based on PRM* under similar computational effort. While the scope is limited to combinatorial problems and working in simulations, these insights should prove valuable to future work exploring aerial manipulation in fruit orchards.

Original languageEnglish
Article number111549
JournalComputers and Electronics in Agriculture
Volume245
DOIs
Publication statusPublished - Apr 2026

Bibliographical note

Publisher Copyright:
© 2026 The Authors

Keywords

  • Fruit trees
  • Multi-goal motion planning
  • UAV
  • Up-close inspection

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