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AdaptNet: Policy Adaptation for Physics-Based Character Control

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Motivated by humans' ability to adapt skills in the learning of new ones, this paper presents AdaptNet, an approach for modifying the latent space of existing policies to allow new behaviors to be quickly learned from like tasks in comparison to learning from scratch. Building on top of a given reinforcement learning controller, AdaptNet uses a two-tier hierarchy that augments the original state embedding to support modest changes in a behavior and further modifies the policy network layers to make more substantive changes. The technique is shown to be effective for adapting existing physics-based controllers to a wide range of new styles for locomotion, new task targets, changes in character morphology and extensive changes in environment. Furthermore, it exhibits significant increase in learning efficiency, as indicated by greatly reduced training times when compared to training from scratch or using other approaches that modify existing policies. Code is available at https://motion-lab.github.io/AdaptNet.

Pei Xu, Kaixiang Xie, Sheldon Andrews, Paul G. Kry, Michael Neff, Morgan McGuire, Ioannis Karamouzas, Victor Zordan• 2023

Related benchmarks

TaskDatasetResultRank
CarryTerrain shape variation
Success Rate63.4
4
FollowTerrain shape variation
Success Rate92.4
4
HeadingGoal-Driven Tasks
Success Rate82.1
3
LocationGoal-Driven Tasks
Success Rate94.3
3
StrikeGoal-Driven Tasks
Success Rate1
3
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