ROAILGSYAug 15, 2023

Hierarchical generative modelling for autonomous robots

arXiv:2308.07775v126 citationsh-index: 35
Originality Incremental advance
AI Analysis

This work addresses the challenge of versatile sensorimotor control for autonomous robots, offering a human-inspired hierarchical architecture for completing goal-directed tasks, though it appears incremental in applying known hierarchical principles to robotics.

The paper tackled the problem of enabling autonomous robots to perform complex whole-body motions by developing a hierarchical generative model that mimics human motor control, demonstrating that a humanoid robot could autonomously complete tasks like retrieving a box, opening a door, and kicking a football with robust performance under body damage and ground irregularities.

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 and low-level motor control of individual limbs. We use numerical and physical simulation to conduct experiments and to establish the efficacy of this formulation. Using a hierarchical generative model, we show how a humanoid robot can autonomously complete a complex task that necessitates a holistic use of locomotion, manipulation, and grasping. Specifically, we demonstrate the ability of a humanoid robot that can retrieve and transport a box, open and walk through a door to reach the destination, approach and kick a football, while showing robust performance in presence of body damage and ground irregularities. Our findings demonstrated the effectiveness of using human-inspired motor control algorithms, and our method provides a viable hierarchical architecture for the autonomous completion of challenging goal-directed tasks.

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