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Optimization-Based Motion Planning for Autonomous Agricultural Vehicles Turning in Constrained Headlands

2 August 2023
Chen Peng
Peng Wei
Zhenghao Fei
Yuan-Chang Zhu
Stavros G. Vougioukas
ArXiv (abs)PDFHTML
Abstract

Headland maneuvering is a crucial aspect of unmanned field operations for autonomous agricultural vehicles (AAVs). While motion planning for headland turning in open fields has been extensively studied and integrated into commercial auto-guidance systems, the existing methods primarily address scenarios with ample headland space and thus may not work in more constrained headland geometries. Commercial orchards often contain narrow and irregularly shaped headlands, which may include static obstacles,rendering the task of planning a smooth and collision-free turning trajectory difficult. To address this challenge, we propose an optimization-based motion planning algorithm for headland turning under geometrical constraints imposed by field geometry and obstacles.

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