Transforms Volterra model near Hopf bifurcation into phase model for coupling word usage dynamics to address coherent oscillations.
Learning to Sequence Robot Behaviors for Visual Navigation
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Recent literature in the robotics community has focused on learning robot behaviors that abstract out lower-level details of robot control. To fully leverage the efficacy of such behaviors, it is necessary to select and sequence them to achieve a given task. In this paper, we present an approach to both learn and sequence robot behaviors, applied to the problem of visual navigation of mobile robots. We construct a layered representation of control policies composed of low- level behaviors and a meta-level policy. The low-level behaviors enable the robot to locomote in a particular environment while avoiding obstacles, and the meta-level policy actively selects the low-level behavior most appropriate for the current situation based purely on visual feedback. We demonstrate the effectiveness of our method on three simulated robot navigation tasks: a legged hexapod robot which must successfully traverse varying terrain, a wheeled robot which must navigate a maze-like course while avoiding obstacles, and finally a wheeled robot navigating in the presence of dynamic obstacles. We show that by learning control policies in a layered manner, we gain the ability to successfully traverse new compound environments composed of distinct sub-environments, and outperform both the low-level behaviors in their respective sub-environments, as well as a hand-crafted selection of low-level policies on these compound environments.
fields
physics.soc-ph 1years
2023 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
-
A model of phase-coupled delay equations for the dynamics of word usage
Transforms Volterra model near Hopf bifurcation into phase model for coupling word usage dynamics to address coherent oscillations.