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arxiv 2206.06079 v1 pith:O46QR7JZ submitted 2022-04-26 cs.CV cs.RO

OHM: GPU Based Occupancy Map Generation

classification cs.CV cs.RO
keywords modernalgorithmsdataimplementationnavigationoccupancyperformanceplatforms
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Occupancy grid maps (OGMs) are fundamental to most systems for autonomous robotic navigation. However, CPU-based implementations struggle to keep up with data rates from modern 3D lidar sensors, and provide little capacity for modern extensions which maintain richer voxel representations. This paper presents OHM, our open source, GPU-based OGM framework. We show how the algorithms can be mapped to GPU resources, resolving difficulties with contention to obtain a successful implementation. The implementation supports many modern OGM algorithms including NDT-OM, NDT-TM, decay-rate and TSDF. A thorough performance evaluation is presented based on tracked and quadruped UGV platforms and UAVs, and data sets from both outdoor and subterranean environments. The results demonstrate excellent performance improvements both offline, and for online processing in embedded platforms. Finally, we describe how OHM was a key enabler for the UGV navigation solution for our entry in the DARPA Subterranean Challenge, which placed second at the Final Event.

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