Robot Cognition using Bayesian Symmetry Networks
نویسندگان
چکیده
[10] proposed a generative theory of shape, and general cognition, based on group actions on sets as defined by the wreath product. Our position expressed here is that this approach can provide a strong basis for robot cognition when: 1. tightly coupled to sensorimotor data and analysis, 2. used to structure both general concepts and specific instances, and 3. combined with a probabilistic framework (Bayesian networks) to characterize uncertainty. We describe a roadmap to achieve these and provide some evidence of feasibility.
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