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End-to-End Framework for Robot Lawnmower Coverage Path Planning using Cellular Decomposition

Published: June 6, 2025 | arXiv ID: 2506.06028v1

By: Nikunj Shah, Utsav Dey, Kenji Nishimiya

Potential Business Impact:

Robot lawnmowers cut grass perfectly, saving time.

Business Areas:
Drone Management Hardware, Software

Efficient Coverage Path Planning (CPP) is necessary for autonomous robotic lawnmowers to effectively navigate and maintain lawns with diverse and irregular shapes. This paper introduces a comprehensive end-to-end pipeline for CPP, designed to convert user-defined boundaries on an aerial map into optimized coverage paths seamlessly. The pipeline includes user input extraction, coordinate transformation, area decomposition and path generation using our novel AdaptiveDecompositionCPP algorithm, preview and customization through an interactive coverage path visualizer, and conversion to actionable GPS waypoints. The AdaptiveDecompositionCPP algorithm combines cellular decomposition with an adaptive merging strategy to reduce non-mowing travel thereby enhancing operational efficiency. Experimental evaluations, encompassing both simulations and real-world lawnmower tests, demonstrate the effectiveness of the framework in coverage completeness and mowing efficiency.

Page Count
8 pages

Category
Computer Science:
Robotics