Shared Modular Recurrence in Contextual MDPs for Universal Morphology Control
Abstract
A universal controller for any robot morphology would greatly improve computational and data efficiency.
Steps have been made towards such multi-robot control by utilizing contextual information about the properties of individual robots and exploiting their modular structure in the architecture of deep reinforcement learning agents.
When the robots have highly dissimilar morphologies, however, this becomes a challenging problem, especially when the agent must generalize to new, unseen robots.
In this paper, we posit that contextual features are often only partially available, but that they can be recovered through modular interactions.
This can allow for better multi-robot control and generalization to contexts that are not seen during training.
To this extent, we implement a transformer-based architecture with shared modular recurrence and evaluate its (generalization) performance on a large set of MuJoCo robots.
The results show a substantial improvement in zero-shot generalization performance on robots with unseen dynamics, kinematics, and topologies, in four different environments.
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