English

Elastic and Efficient LiDAR Reconstruction for Large-Scale Exploration Tasks

Robotics 2022-07-06 v2

Abstract

We present an efficient, elastic 3D LiDAR reconstruction framework which can reconstruct up to maximum LiDAR ranges (60 m) at multiple frames per second, thus enabling robot exploration in large-scale environments. Our approach only requires a CPU. We focus on three main challenges of large-scale reconstruction: integration of long-range LiDAR scans at high frequency, the capacity to deform the reconstruction after loop closures are detected, and scalability for long-duration exploration. Our system extends upon a state-of-the-art efficient RGB-D volumetric reconstruction technique, called supereight, to support LiDAR scans and a newly developed submapping technique to allow for dynamic correction of the 3D reconstruction. We then introduce a novel pose graph clustering and submap fusion feature to make the proposed system more scalable for large environments. We evaluate the performance using two public datasets including outdoor exploration with a handheld device and a drone, and with a mobile robot exploring an underground room network. Experimental results demonstrate that our system can reconstruct at 3 Hz with 60 m sensor range and ~5 cm resolution, while state-of-the-art approaches can only reconstruct to 25 cm resolution or 20 m range at the same frequency.

Keywords

Cite

@article{arxiv.2010.09232,
  title  = {Elastic and Efficient LiDAR Reconstruction for Large-Scale Exploration Tasks},
  author = {Yiduo Wang and Nils Funk and Milad Ramezani and Sotiris Papatheodorou and Marija Popovic and Marco Camurri and Stefan Leutenegger and Maurice Fallon},
  journal= {arXiv preprint arXiv:2010.09232},
  year   = {2022}
}

Comments

7 pages, 7 figures

R2 v1 2026-06-23T19:26:27.334Z