Darts: deformable animation ready templates for clothing humans
Source
IEEE International Conference on Image Processing (ICIP 2025)
Date Issued
2025-09-14
Author(s)
Verma, Shashikant
Abstract
Accurate 3D modeling of humans and high-fidelity garments is crucial in computer vision and graphics, impacting gaming, virtual, and augmented reality applications. While recent data-driven approaches have progressed in estimating segregated geometries for clothed humans, they often struggle with the seamless integration required for physics-based simulations. We introduce Deformable Animation Ready Templates (DARTs) to address these challenges, which enhance template-based garment reconstruction. Our framework employs a robust feature-line regressor network to establish precise deformation constraints guided by input image characteristics. Additionally, we present a novel differentiable Constrained Rigid Deformation Layer (CRDL) that facilitates effective template deformation while preserving the essential geometry of the garment. Our experiments demonstrate that DARTs can generate templates for physics-based simulation, allowing for seamless garment animations influenced by dynamic environmental factors. With minor adjustments, our templates can accommodate various clothing categories, promoting diversity in animated garment modeling.
Subjects
3D Garment reconstruction
Template-based clothing
Deep learning
