Voxblox: Incremental 3D Euclidean Signed Distance Fields for on-board MAV planning
Abstract
Micro Aerial Vehicles (MAVs) that operate in unstructured, unexplored environments require fast and flexible local planning, which can replan when new parts of the map are explored. Trajectory optimization methods fulfill these needs, but require obstacle distance information, which can be given by Euclidean Signed Distance Fields (ESDFs). We propose a method to incrementally build ESDFs from Truncated Signed Distance Fields (TSDFs), a common implicit surface representation used in computer graphics and vision. TSDFs are fast to build and smooth out sensor noise over many observations, and are designed to produce surface meshes. We show that we can build TSDFs faster than Octomaps, and that it is more accurate…
Citation impact
- FWCI
- 277.14
- Percentile
- 100%
- References
- 20
Authors
5- HOHelen OleynikovaCorresponding
ETH Zurich
- ZTZachary Taylor
ETH Zurich
- MFMarius Fehr
ETH Zurich
- RSRoland Siegwart
ETH Zurich
- JNJuan Nieto
ETH Zurich
Topics & keywords
- Signed distance function
- Trajectory
- Euclidean distance
- Noise (video)
- Obstacle
- Computer graphics
- Distance transform
- Euclidean geometry