| Literature DB >> 33500949 |
Nicolas Le Hir1,2, Olivier Sigaud2,3, Alban Laflaquière1.
Abstract
Perceiving the surrounding environment in terms of objects is useful for any general purpose intelligent agent. In this paper, we investigate a fundamental mechanism making object perception possible, namely the identification of spatio-temporally invariant structures in the sensorimotor experience of an agent. We take inspiration from the Sensorimotor Contingencies Theory to define a computational model of this mechanism through a sensorimotor, unsupervised and predictive approach. Our model is based on processing the unsupervised interaction of an artificial agent with its environment. We show how spatio-temporally invariant structures in the environment induce regularities in the sensorimotor experience of an agent, and how this agent, while building a predictive model of its sensorimotor experience, can capture them as densely connected subgraphs in a graph of sensory states connected by motor commands. Our approach is focused on elementary mechanisms, and is illustrated with a set of simple experiments in which an agent interacts with an environment. We show how the agent can build an internal model of moving but spatio-temporally invariant structures by performing a Spectral Clustering of the graph modeling its overall sensorimotor experiences. We systematically examine properties of the model, shedding light more globally on the specificities of the paradigm with respect to methods based on the supervised processing of collections of static images.Entities:
Keywords: grounding problem; object perception; predictive coding; sensorimotor contingencies theory; unsupervised learning
Year: 2018 PMID: 33500949 PMCID: PMC7806078 DOI: 10.3389/frobt.2018.00070
Source DB: PubMed Journal: Front Robot AI ISSN: 2296-9144