An Accurate System for Fashion Hand-Drawn Sketches Vectorization

Luca Donati, Simone Cesano, A. Prati
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引用次数: 19

Abstract

Automatic vectorization of fashion hand-drawn sketches is a crucial task performed by fashion industries to speed up their workflows. Performing vectorization on hand-drawn sketches is not an easy task, and it requires a first crucial step that consists in extracting precise and thin lines from sketches that are potentially very diverse (depending on the tool used and on the designer capabilities and preferences). This paper proposes a system for automatic vectorization of fashion hand-drawn sketches based on Pearson's Correlation Coefficient with multiple Gaussian kernels in order to enhance and extract curvilinear structures in a sketch. The use of correlation grants invariance to image contrast and lighting, making the extracted lines more reliable for vectorization. Moreover, the proposed algorithm has been designed to equally extract both thin and wide lines with changing stroke hardness, which are common in fashion hand-drawn sketches. It also works for crossing lines, adjacent parallel lines and needs very few parameters (if any) to run. The efficacy of the proposal has been demonstrated on both hand-drawn sketches and images with added artificial noise, showing in both cases excellent performance w.r.t. the state of the art.
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一种精确的时装手绘草图矢量化系统
时装手绘草图的自动矢量化是时装行业加快工作流程的关键任务。对手绘草图执行矢量化并不是一件容易的事情,它需要第一个关键步骤,即从可能非常多样化的草图中提取精确而细的线条(取决于所使用的工具以及设计师的能力和偏好)。本文提出了一种基于多高斯核的皮尔逊相关系数的时装手绘草图自动矢量化系统,以增强和提取草图中的曲线结构。使用相关性可以保证图像对比度和光照的不变性,使提取的线条更可靠地进行矢量化。此外,该算法还设计为均匀提取时尚手绘草图中常见的随笔画硬度变化的细线和宽线。它也适用于交叉线,相邻平行线,并且需要很少的参数(如果有的话)来运行。该建议的有效性已经在手绘草图和添加了人工噪声的图像上得到了证明,在这两种情况下都显示出优异的性能。
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