Title
TCB-spline-based Image Vectorization
Abstract
Vector image representation methods that can faithfully reconstruct objects and color variations in a raster image are desired in many practical applications. This article presents triangular configuration B-spline (referred to as TCB-spline)-based vector graphics for raster image vectorization. Based on this new representation, an automatic raster image vectorization paradigm is proposed. The proposed framework first detects sharp curvilinear features in the image and constructs knot meshes based on the detected feature lines. It iteratively optimizes color and position of control points and updates the knot meshes. By using collinear knots at feature lines, both smooth and discontinuous color variations can be efficiently modeled by the same set of quadratic TCB-splines. A variational knot mesh generation method is designed to adaptively introduce knots and update their connectivity to satisfy the local reconstruction quality. Experiments and comparisons show that our framework outperforms the existing state-of-the-art methods in providing more faithful reconstruction results. In particular, our method is able to model undetected features and subtle or complicated color variations in-between features, which the previous methods cannot handle efficiently. Our vectorization representation also facilitates a variety of editing operations performed directly over vector images.
Year
DOI
Venue
2022
10.1145/3513132
ACM TRANSACTIONS ON GRAPHICS
Keywords
DocType
Volume
Vector images, simplex splines, knot placement, mesh optimization
Journal
41
Issue
ISSN
Citations 
3
0730-0301
0
PageRank 
References 
Authors
0.34
0
6
Name
Order
Citations
PageRank
Haikuan Zhu100.34
Juan Cao2387.92
Yanyang Xiao331.40
Zhonggui Chen4788.93
Zichun Zhong5709.80
Yongjie Zhang629334.45