SwiftTailor: Efficient 3D Garment Generation with Geometry Image Representation
arXiv cs.CV / 3/20/2026
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Key Points
- SwiftTailor presents a two-stage framework that unifies sewing-pattern reasoning with geometry-based mesh synthesis through a compact Garment Geometry Image representation.
- It introduces PatternMaker to predict sewing patterns from diverse inputs and GarmentSewer to convert these patterns into a Garment Geometry Image encoding the 3D garment surface in a unified UV space.
- The final 3D mesh is reconstructed via an efficient inverse mapping that leverages remeshing and dynamic stitching to amortize the cost of physical simulation.
- Evaluations on the Multimodal GarmentCodeData show state-of-the-art accuracy and visual fidelity while significantly reducing inference time compared with prior methods (which ranged from 30 seconds to a minute).
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