DAGSM: Disentangled Avatar Generation with GS-enhanced Mesh
November 20, 2024 Β· Declared Dead Β· π Computer Vision and Pattern Recognition
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Authors
Jingyu Zhuang, Di Kang, Linchao Bao, Liang Lin, Guanbin Li
arXiv ID
2411.15205
Category
cs.CV: Computer Vision
Cross-listed
cs.GR
Citations
3
Venue
Computer Vision and Pattern Recognition
Last Checked
4 months ago
Abstract
Text-driven avatar generation has gained significant attention owing to its convenience. However, existing methods typically model the human body with all garments as a single 3D model, limiting its usability, such as clothing replacement, and reducing user control over the generation process. To overcome the limitations above, we propose DAGSM, a novel pipeline that generates disentangled human bodies and garments from the given text prompts. Specifically, we model each part (e.g., body, upper/lower clothes) of the clothed human as one GS-enhanced mesh (GSM), which is a traditional mesh attached with 2D Gaussians to better handle complicated textures (e.g., woolen, translucent clothes) and produce realistic cloth animations. During the generation, we first create the unclothed body, followed by a sequence of individual cloth generation based on the body, where we introduce a semantic-based algorithm to achieve better human-cloth and garment-garment separation. To improve texture quality, we propose a view-consistent texture refinement module, including a cross-view attention mechanism for texture style consistency and an incident-angle-weighted denoising (IAW-DE) strategy to update the appearance. Extensive experiments have demonstrated that DAGSM generates high-quality disentangled avatars, supports clothing replacement and realistic animation, and outperforms the baselines in visual quality.
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