C$\cdot$ASE: Learning Conditional Adversarial Skill Embeddings for Physics-based Characters
September 20, 2023 Β· Declared Dead Β· π ACM SIGGRAPH Conference and Exhibition on Computer Graphics and Interactive Techniques in Asia
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Authors
Zhiyang Dou, Xuelin Chen, Qingnan Fan, Taku Komura, Wenping Wang
arXiv ID
2309.11351
Category
cs.GR: Graphics
Cross-listed
cs.AI,
cs.LG
Citations
65
Venue
ACM SIGGRAPH Conference and Exhibition on Computer Graphics and Interactive Techniques in Asia
Last Checked
3 months ago
Abstract
We present C$\cdot$ASE, an efficient and effective framework that learns conditional Adversarial Skill Embeddings for physics-based characters. Our physically simulated character can learn a diverse repertoire of skills while providing controllability in the form of direct manipulation of the skills to be performed. C$\cdot$ASE divides the heterogeneous skill motions into distinct subsets containing homogeneous samples for training a low-level conditional model to learn conditional behavior distribution. The skill-conditioned imitation learning naturally offers explicit control over the character's skills after training. The training course incorporates the focal skill sampling, skeletal residual forces, and element-wise feature masking to balance diverse skills of varying complexities, mitigate dynamics mismatch to master agile motions and capture more general behavior characteristics, respectively. Once trained, the conditional model can produce highly diverse and realistic skills, outperforming state-of-the-art models, and can be repurposed in various downstream tasks. In particular, the explicit skill control handle allows a high-level policy or user to direct the character with desired skill specifications, which we demonstrate is advantageous for interactive character animation.
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