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Performance

danielduberg edited this page Apr 29, 2021 · 25 revisions

Integrator

UFOMap introduced a new fast integrator. This integrator is freeing space at a higher level in the octree, making it significantly faster while still preserving the occupied space.

Method Voxel size (cm) Time (ms)
UFOMap
OctoMap
16 4.98 ± 1.30
5.52 ± 1.66
UFOMap
UFOMap fast
OctoMap
8 12.3 ± 7.4
6.5 ± 2.2
16.3 ± 10.4
UFOMap
UFOMap fast
OctoMap
4 60.9 ± 44.7
10.9 ± 4.7
104.6 ± 82.2
UFOMap
UFOMap fast
OctoMap
2 371 ± 254
28 ± 15
745 ± 548

UFOMap fast is always freeing space at 16 cm voxel size in this case.

Performed on the cow dataset.

Memory Consumption

UFOMap differentiates between inner nodes and leaf nodes and is packing the nodes more densly. This means UFOMap uses less memory compared to OctoMap.

Dataset Voxel size (cm) UFOMap (MiB) OctoMap (MiB)
FR-078 tidyup 5 7.42 21.49
FR-079 corridor 5 19.70 51.86
Freiburg campus 20 58.71 155.46
freiburg1_360 2 15.98 42.05
New College 20 29.41 75.40

Performed on the OctoMap 3D scan dataset.

Number of Nodes

UFOMap's explicit representation of unknown space means it has more nodes in total compared to OctoMap. However, as seen in Memory Consumption above, it still uses less memory.

Dataset Voxel size (cm) UFOMap OctoMap
FR-078 tidyup 5 1 642 113 1 369 165
FR-079 corridor 5 2 823 713 1 829 134
Freiburg campus 20 8 402 193 5 515 178
freiburg1_360 2 2 161 849 1 547 112
New College 20 4 157 217 2 633 701

Performed on the OctoMap 3D scan dataset.

Exploration

Using UFOMap for RH-NBVP exploration significantly increases the exploration performance. Exploration Performance

More in the Paper

You can read more about UFOMap in the paper.

If you use UFOMap in a scientific publication, please cite the following paper:

@article{duberg2020ufomap,
  author={Daniel Duberg and Patric Jensfelt},
  journal={IEEE Robotics and Automation Letters}, 
  title={{UFOMap}: An Efficient Probabilistic {3D} Mapping Framework That Embraces the Unknown}, 
  year={2020},
  volume={5},
  number={4},
  pages={6411-6418},
  doi={10.1109/LRA.2020.3013861}
}