Intelligent Artistic Typography: A Comprehensive Review of Artistic Text Design and Generation
- URL: http://arxiv.org/abs/2407.14774v1
- Date: Sat, 20 Jul 2024 06:45:09 GMT
- Title: Intelligent Artistic Typography: A Comprehensive Review of Artistic Text Design and Generation
- Authors: Yuhang Bai, Zichuan Huang, Wenshuo Gao, Shuai Yang, Jiaying Liu,
- Abstract summary: Artistic text generation aims to amplify the aesthetic qualities of text while maintaining readability.
Artistic text stylization concentrates on the text effect overlaid upon the text, such as shadows, outlines, colors, glows, and textures.
Stylistization focuses on the deformation of the characters to strengthen their visual representation by mimicking the semantic understanding within the text.
- Score: 15.367944842667146
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Artistic text generation aims to amplify the aesthetic qualities of text while maintaining readability. It can make the text more attractive and better convey its expression, thus enjoying a wide range of application scenarios such as social media display, consumer electronics, fashion, and graphic design. Artistic text generation includes artistic text stylization and semantic typography. Artistic text stylization concentrates on the text effect overlaid upon the text, such as shadows, outlines, colors, glows, and textures. By comparison, semantic typography focuses on the deformation of the characters to strengthen their visual representation by mimicking the semantic understanding within the text. This overview paper provides an introduction to both artistic text stylization and semantic typography, including the taxonomy, the key ideas of representative methods, and the applications in static and dynamic artistic text generation. Furthermore, the dataset and evaluation metrics are introduced, and the future directions of artistic text generation are discussed. A comprehensive list of artistic text generation models studied in this review is available at https://github.com/williamyang1991/Awesome-Artistic-Typography/.
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