4.7 Article

DeepSketchHair: Deep Sketch-Based 3D Hair Modeling

Journal

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TVCG.2020.2968433

Keywords

Hair; Three-dimensional displays; Solid modeling; Two dimensional displays; Computational modeling; Deep learning; Neural networks; Sketch-based hair modeling; 3D volumetric structure; deep learning; generative adversarial networks

Funding

  1. National Key Research & Development Program of China [2018YFE0100900]
  2. NSF China [U1609215]
  3. Fundamental Research Funds for the Central Universities
  4. RGC of HKSAR [CityU 11212119]
  5. City University of Hong Kong [7005176]
  6. Centre for Applied Computing and Interactive Media (ACIM) of School of Creative Media, CityU

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DeepSketchHair is a deep learning-based tool for modeling 3D hair from 2D sketches. The system utilizes three carefully designed neural networks to convert, map, and update input sketches, generating 3D hair models that match the input sketches.
We present DeepSketchHair, a deep learning based tool for modeling of 3D hair from 2D sketches. Given a 3D bust model as reference, our sketching system takes as input a user-drawn sketch (consisting of hair contour and a few strokes indicating the hair growing direction within a hair region), and automatically generates a 3D hair model, matching the input sketch. The key enablers of our system are three carefully designed neural networks, namely, S2ONet, which converts an input sketch to a dense 2D hair orientation field; O2VNet, which maps the 2D orientation field to a 3D vector field; and V2VNet, which updates the 3D vector field with respect to the new sketches, enabling hair editing with additional sketches in new views. All the three networks are trained with synthetic data generated from a 3D hairstyle database. We demonstrate the effectiveness and expressiveness of our tool using a variety of hairstyles and also compare our method with prior art.

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