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Efficient Collision Detection for Long and Slender Robotic Links in Euclidean Distance Fields: Application to a Forestry Crane

2 July 2025
Marc-Philip Ecker
Bernhard Bischof
Minh Nhat Vu
Christoph Fröhlich
Tobias Glück
Wolfgang Kemmetmüller
ArXiv (abs)PDFHTML
Main:6 Pages
10 Figures
Bibliography:1 Pages
Abstract

Collision-free motion planning in complex outdoor environments relies heavily on perceiving the surroundings through exteroceptive sensors. A widely used approach represents the environment as a voxelized Euclidean distance field, where robots are typically approximated by spheres. However, for large-scale manipulators such as forestry cranes, which feature long and slender links, this conventional spherical approximation becomes inefficient and inaccurate. This work presents a novel collision detection algorithm specifically designed to exploit the elongated structure of such manipulators, significantly enhancing the computational efficiency of motion planning algorithms. Unlike traditional sphere decomposition methods, our approach not only improves computational efficiency but also naturally eliminates the need to fine-tune the approximation accuracy as an additional parameter. We validate the algorithm's effectiveness using real-world LiDAR data from a forestry crane application, as well as simulated environment data.

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@article{ecker2025_2507.01705,
  title={ Efficient Collision Detection for Long and Slender Robotic Links in Euclidean Distance Fields: Application to a Forestry Crane },
  author={ Marc-Philip Ecker and Bernhard Bischof and Minh Nhat Vu and Christoph Fröhlich and Tobias Glück and Wolfgang Kemmetmüller },
  journal={arXiv preprint arXiv:2507.01705},
  year={ 2025 }
}
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