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DeepIcon: A Hierarchical Network for Layer-wise Icon Vectorization

Authors :
Bing, Qi
Zhang, Chaoyi
Cai, Weidong
Publication Year :
2024

Abstract

In contrast to the well-established technique of rasterization, vectorization of images poses a significant challenge in the field of computer graphics. Recent learning-based methods for converting raster images to vector formats frequently suffer from incomplete shapes, redundant path prediction, and a lack of accuracy in preserving the semantics of the original content. These shortcomings severely hinder the utility of these methods for further editing and manipulation of images. To address these challenges, we present DeepIcon, a novel hierarchical image vectorization network specifically tailored for generating variable-length icon vector graphics based on the raster image input. Our experimental results indicate that DeepIcon can efficiently produce Scalable Vector Graphics (SVGs) directly from raster images, bypassing the need for a differentiable rasterizer while also demonstrating a profound understanding of the image contents.<br />Comment: Accepted as Oral Presentation at DICTA 2024

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.15760
Document Type :
Working Paper