Optimization of Directional Landmark Deployment for Visual Observer on
SE(3)
- URL: http://arxiv.org/abs/2203.14485v1
- Date: Mon, 28 Mar 2022 04:06:14 GMT
- Title: Optimization of Directional Landmark Deployment for Visual Observer on
SE(3)
- Authors: Zike Lei, Xi Chen, Ying Tan, Xiang Chen, Li Chai
- Abstract summary: An optimization method is proposed for deployment of given number of directional landmarks within a given region in the 3-D task space.
The technique is built on the geometric models of both landmarks and the monocular camera.
Both simulation and experimental results are presented to validate the effectiveness of the proposed landmark deployment optimization method.
- Score: 11.064269835254791
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: An optimization method is proposed in this paper for novel deployment of
given number of directional landmarks (location and pose) within a given region
in the 3-D task space. This new deployment technique is built on the geometric
models of both landmarks and the monocular camera. In particular, a new concept
of Multiple Coverage Probability (MCP) is defined to characterize the
probability of at least n landmarks being covered simultaneously by a camera at
a fixed position. The optimization is conducted with respect to the position
and pose of the given number of landmarks to maximize MCP through globally
exploration of the given 3-D space. By adopting the elimination genetic
algorithm, the global optimal solutions can be obtained, which are then applied
to improve the convergent performance of the visual observer on SE(3) as a
demonstration example. Both simulation and experimental results are presented
to validate the effectiveness of the proposed landmark deployment optimization
method.
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