Deep Sketch Vectorization via Implicit Surface Extraction

Author:

Yan Chuan1ORCID,Li Yong23ORCID,Aneja Deepali4ORCID,Fisher Matthew5ORCID,Simo-Serra Edgar6ORCID,Gingold Yotam1ORCID

Affiliation:

1. George Mason University, Fairfax, VA, United States of America

2. South China University of Technology, Guangzhou, China

3. George Mason University, Fairfax, VA, USA

4. Adobe Inc., Seattle, WA, United States of America

5. Adobe Inc., San Francisco, CA, United States of America

6. Waseda University, Tokyo, Japan

Abstract

We introduce an algorithm for sketch vectorization with state-of-the-art accuracy and capable of handling complex sketches. We approach sketch vectorization as a surface extraction task from an unsigned distance field, which is implemented using a two-stage neural network and a dual contouring domain post processing algorithm. The first stage consists of extracting unsigned distance fields from an input raster image. The second stage consists of an improved neural dual contouring network more robust to noisy input and more sensitive to line geometry. To address the issue of under-sampling inherent in grid-based surface extraction approaches, we explicitly predict undersampling and keypoint maps. These are used in our post-processing algorithm to resolve sharp features and multi-way junctions. The keypoint and undersampling maps are naturally controllable, which we demonstrate in an interactive topology refinement interface. Our proposed approach produces far more accurate vectorizations on complex input than previous approaches with efficient running time.

Publisher

Association for Computing Machinery (ACM)

Reference45 articles.

1. Line Drawing Vectorization via Coarse‐to‐Fine Curve Network Optimization

2. Mikhail Bessmeltsev and Justin Solomon. 2018. Vectorization of Line Drawings via PolyVector Fields. arXiv:1801.01922 [cs] (Sept. 2018). arXiv:1801.01922 [cs]

3. Vectorization of Line Drawings via Polyvector Fields

4. Alexandre Carlier, Martin Danelljan, Alexandre Alahi, and Radu Timofte. 2020. DeepSVG: A Hierarchical Generative Network for Vector Graphics Animation. In Advances in Neural Information Processing Systems, Vol. 33. Curran Associates, Inc., 16351--16361.

5. Neural dual contouring

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