UPDF AI

PDP: Physics-Based Character Animation via Diffusion Policy

Takara E. Truong,Michael Piseno,Zhaoming Xie,Karen Liu

2024 · DOI: 10.1145/3680528.3687683
ACM SIGGRAPH Conference and Exhibition on Computer Graphics and Interactive Techniques in Asia · 引用数 10

TLDR

The method, Physics-Based Character Animation via Diffusion Policy via Diffusion Policy (PDP), combines reinforcement learning (RL) and behavior cloning (BC) to create a robust diffusion policy for physics-based character animation and is demonstrated on perturbation recovery, universal motion tracking, and physics-based text-to-motion synthesis.

摘要

Generating diverse and realistic human motion that can physically interact with an environment remains a challenging research area in character animation. Meanwhile, diffusion-based methods, as proposed by the robotics community, have demonstrated the ability to capture highly diverse and multi-modal skills. However, naively training a diffusion policy often results in unstable motions for high-frequency, under-actuated control tasks like bipedal locomotion due to rapidly accumulating compounding errors, pushing the agent away from optimal training trajectories. The key idea lies in using RL policies not just for providing optimal trajectories but for providing corrective actions in sub-optimal states which gives the policy a chance to correct for errors caused by environmental stimulus, model errors, or numerical errors in simulation. Our method, Physics-Based Character Animation via Diffusion Policy (PDP), combines reinforcement learning (RL) and behavior cloning (BC) to create a robust diffusion policy for physics-based character animation. We demonstrate PDP on perturbation recovery, universal motion tracking, and physics-based text-to-motion synthesis.

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