Memory-Efficient Boundary Map for Large-Scale Occupancy Grid Mapping
arXiv cs.RO / 3/24/2026
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Key Points
- The paper introduces a memory-efficient “boundary map” representation for large-scale 3D occupancy grid mapping that stores only the boundary (e.g., occupied and frontier voxels) rather than all voxel states.
- By representing a closed surface in a 2D form instead of maintaining the full 3D volume, the approach substantially reduces memory consumption for high-resolution, large-scale environments.
- It includes a method to determine the occupancy state of arbitrary 3D locations based on the 2D boundary representation, along with a new data structure for efficient occupancy queries and theoretical performance analysis.
- To support real-time mapping, the work proposes a global-local mapping framework and update algorithms for constructing and updating the boundary map from sensor measurements.
- The authors plan to open-source the implementation on GitHub, aiming to make the method accessible for the robotics mapping community.
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