The modeling the modern wears in the society

in #fashion6 years ago

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The key component of the method is a model of clothing called DRAPE (DRessing Any PErson) that is learned from a physics-based simulation of clothing on bodies of different shapes and poses. The DRAPE model has the desirable property of “factoring” clothing deformations due to body shape from those due to pose variation. This factorization provides an approximation to the physical clothing deformation and greatly simplifies clothing synthesis.

We start with a parameterized model of the 3D human body represented using SCAPE. Given the shape and pose parameters describing the body, the DRAPE algorithm dresses the body with a garment that is customized to fit and possesses realistic wrinkles. There a three main steps:

  1. Training: The shape training set consists of SCAPE bodies with different shapes in the same pose. The pose training set contains a single body shape moving through sequences of poses. For each training body shape, we manually choose a size for each garment and dress the body using physics-based simulation (Figure a, row 2).

  2. Learned clothing deformation model: For each garment, we learn a factored clothing model that represents: i) rigid rotation of the cloth pieces, e.g. the rotation of a sleeve w. r. t. the torso; ii) pose-independent clothing shape variations, that are linearly predicted from the underlying body shape (learned from the shape training set); and iii) pose-dependent non-rigid deformations, that are linearly predicted from a short history of body poses and clothing shapes (learned from the pose training set).

  3. Virtual fitting: Using the pose-independent model, we map body shape parameters to clothing shape parameters to obtain a custom shaped garment for a given body. Clothing parts are associated with body parts and the pose of the body is applied to the garment parts by rigid rotation. The learned model of pose-dependent wrinkles is then applied. The custom garment is automatically aligned with the body and interpenetration between the garment and the body is removed by efficiently solving a system of linear equations.

DRAPE can be used to dress static bodies or animated sequences with a learned model of the cloth dynamics. Since the method is fully automated, it is appropriate for dressing large numbers of virtual characters of varying shape. The method is significantly more efficient than physical simulation. This makes it appropriate for web applications such as virtual clothing try-on.

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