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Parallel OctoMapping: A Scalable Framework for Enhanced Path Planning in Autonomous Navigation

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Mapping is essential in robotics and autonomous systems because it provides the spatial foundation for path planning. Efficient mapping enables planning algorithms to generate reliable paths while ensuring safety and adapting in real time to complex environments. Fixed-resolution mapping methods often produce overly conservative obstacle representations that lead to suboptimal paths or planning failures in cluttered scenes. To address this issue, we introduce Parallel OctoMapping (POMP), an efficient OctoMap-based mapping technique that maximizes available free space and supports multi-threaded computation. To the best of our knowledge, POMP is the first method that, at a fixed occupancy-grid resolution, refines the representation of free space while preserving map fidelity and compatibility with existing search-based planners. It can therefore be integrated into existing planning pipelines, yielding higher pathfinding success rates and shorter path lengths, especially in cluttered environments, while substantially improving computational efficiency.

Yihui Mao, Tian Tan, Xuehui Shen, Warren E. Dixon, Rushikesh Kamalapurkar• 2026

Related benchmarks

TaskDatasetResultRank
Map ConstructionSensatUrban Cambridge 15
Construction Runtime (ms)135.1
18
Map ConstructionSensatUrban Cambridge_16
Construction Runtime (ms)128.5
18
Map ConstructionReplica Apartment_0
Construction Runtime (ms)6.58
18
Map ConstructionReplica Apartment_1
Construction Runtime (ms)3.16
18
Map ConstructionReplica Apartment_2
Construction Runtime (ms)3.64
18
PathfindingCloud 7 Treescope
Success Rate92.1
18
Path planningVAT-0723U-03
Success Rate90.6
12
Path planningVAT 0723U-04
Success Rate88.2
12
PathfindingCambridge 15
Pathfinding Success Rate (%)91.5
8
PathfindingCambridge 16
Pathfinding Success Rate82.7
8
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