Motion planning in observations space with learned diffeomorphism models
- Creators
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Censi, Andrea
- Nilsson, Adam
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Murray, Richard M.
Abstract
We consider the problem of planning motions in observations space, based on learned models of the dynamics that associate to each action a diffeomorphism of the observations domain. For an arbitrary set of diffeomorphisms, this problem must be formulated as a generic search problem. We adapt established algorithms of the graph search family. In this scenario, node expansion is very costly, as each node in the graph is associated to an uncertain diffeomorphism and corresponding predicted observations. We describe several improvements that ameliorate performance: the introduction of better image similarities to use as heuristics; a method to reduce the number of expanded nodes by preliminarily identifying redundant plans; and a method to pre-compute composite actions that make the search efficient in all directions.
Attached Files
Submitted - dptr1b_final.pdf
Files
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Additional details
- Eprint ID
- 34529
- Resolver ID
- CaltechCDSTR:2012.004
- Created
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2012-09-27Created from EPrint's datestamp field
- Updated
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2020-03-09Created from EPrint's last_modified field
- Caltech groups
- Control and Dynamical Systems Technical Reports