LayGA: Layered Gaussian Avatars for Animatable Clothing Transfer
Siyou Lin, Zhe Li, Zhaoqi Su, Zerong Zheng, Hongwen Zhang, Yebin Liu

TL;DR
LayGA introduces a layered Gaussian avatar representation that separates body and clothing for more accurate, photorealistic animatable clothing transfer from multi-view videos, overcoming previous entanglement and tracking issues.
Contribution
The paper proposes a novel layered Gaussian avatar model with a two-stage training process for improved garment tracking and realistic animation in virtual try-on applications.
Findings
Outperforms baseline methods in realism and accuracy
Enables high-quality garment tracking and animation
Supports virtual try-on with photorealistic results
Abstract
Animatable clothing transfer, aiming at dressing and animating garments across characters, is a challenging problem. Most human avatar works entangle the representations of the human body and clothing together, which leads to difficulties for virtual try-on across identities. What's worse, the entangled representations usually fail to exactly track the sliding motion of garments. To overcome these limitations, we present Layered Gaussian Avatars (LayGA), a new representation that formulates body and clothing as two separate layers for photorealistic animatable clothing transfer from multi-view videos. Our representation is built upon the Gaussian map-based avatar for its excellent representation power of garment details. However, the Gaussian map produces unstructured 3D Gaussians distributed around the actual surface. The absence of a smooth explicit surface raises challenges in…
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Taxonomy
Topics3D Shape Modeling and Analysis · Human Motion and Animation · Augmented Reality Applications
