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Unsupervised Discovery of Behavioral Primitives from Sensorimotor Dynamic Functional Connectivity

Unsupervised Discovery of Behavioral Primitives from Sensorimotor Dynamic Functional Connectivity

来源:Arxiv_logoArxiv
英文摘要

The movements of both animals and robots give rise to streams of high-dimensional motor and sensory information. Imagine the brain of a newborn or the controller of a baby humanoid robot trying to make sense of unprocessed sensorimotor time series. Here, we present a framework for studying the dynamic functional connectivity between the multimodal sensory signals of a robotic agent to uncover an underlying structure. Using instantaneous mutual information, we capture the time-varying functional connectivity (FC) between proprioceptive, tactile, and visual signals, revealing the sensorimotor relationships. Using an infinite relational model, we identified sensorimotor modules and their evolving connectivity. To further interpret these dynamic interactions, we employed non-negative matrix factorization, which decomposed the connectivity patterns into additive factors and their corresponding temporal coefficients. These factors can be considered the agent's motion primitives or movement synergies that the agent can use to make sense of its sensorimotor space and later for behavior selection. In the future, the method can be deployed in robot learning as well as in the analysis of human movement trajectories or brain signals.

Fernando Diaz Ledezma、Valentin Marcel、Matej Hoffmann

自动化基础理论计算技术、计算机技术

Fernando Diaz Ledezma,Valentin Marcel,Matej Hoffmann.Unsupervised Discovery of Behavioral Primitives from Sensorimotor Dynamic Functional Connectivity[EB/OL].(2025-06-20)[2025-07-16].https://arxiv.org/abs/2506.22473.点此复制

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