Hierarchical generative modelling for autonomous robots
Kai Yuan, Noor Sajid, Karl Friston, Zhibin Li

TL;DR
This paper introduces a hierarchical generative model for autonomous robots, inspired by human motor control, enabling complex, goal-directed tasks through multi-level planning and control.
Contribution
It presents a novel hierarchical generative framework that mimics human deep temporal planning for autonomous robot task execution.
Findings
Robots can autonomously perform complex tasks like object transport and door navigation.
The hierarchical model demonstrates robustness to body damage and ground irregularities.
Simulation results validate the effectiveness of the proposed approach.
Abstract
Humans can produce complex whole-body motions when interacting with their surroundings, by planning, executing and combining individual limb movements. We investigated this fundamental aspect of motor control in the setting of autonomous robotic operations. We approach this problem by hierarchical generative modelling equipped with multi-level planning-for autonomous task completion-that mimics the deep temporal architecture of human motor control. Here, temporal depth refers to the nested time scales at which successive levels of a forward or generative model unfold, for example, delivering an object requires a global plan to contextualise the fast coordination of multiple local movements of limbs. This separation of temporal scales also motivates robotics and control. Specifically, to achieve versatile sensorimotor control, it is advantageous to hierarchically structure the planning…
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Taxonomy
TopicsAction Observation and Synchronization · Reinforcement Learning in Robotics · Human Motion and Animation
