JOURNAL ARTICLE
Generation of Escher‐like spiral drawings in a modified hyperbolic space.
Published In: Mathematical Methods in the Applied Sciences, 2023, v. 46, n. 13. P. 14489 1 of 3
Database: Academic Search Ultimate 2 of 3
Authored By: Chung, Kwok Wai; Ouyang, Peichang; Nicolas, Alain; Cao, Shiyun; Bailey, David; Gdawiec, Krzysztof 3 of 3
Abstract
Dutch graphic artist M.C. Escher created many famous drawings with a deep mathematical background based on wallpaper symmetry, hyperbolic geometry, spirals, and regular polyhedra. However, he did not attempt any spiral drawings in hyperbolic space. In this paper, we consider a modified hyperbolic geometry by removing the condition that a geodesic is orthogonal to the unit circle in the Poincaré model. We show that spiral symmetry and the similarity property exist in this modified geometry so that the creation of uncommon hyperbolic spiral drawings is possible. To this end, we first establish the theoretical foundation for the proposed method by deriving a contraction mapping and a rotation for constructing modified hyperbolic spiral tilings (MHSTs) and introduce symmetry groups to analyze the structure of MHSTs. Then, to embed a pre‐designed wallpaper template into the tiles, we derive a one‐to‐one mapping between a tile of MHST and a rectangle. Finally, we specify some technical implementation details and give a gallery of the resulting MHST drawings. Using existing wallpaper templates, the proposed method is able to generate a great variety of exotic Escher‐like drawings. [ABSTRACT FROM AUTHOR]
Additional Information
- Source:Mathematical Methods in the Applied Sciences. 2023/09, Vol. 46, Issue 13, p14489
- Document Type:Article
- Subject Area:History
- Publication Date:2023
- ISSN:0170-4214
- DOI:10.1002/mma.9332
- Accession Number:169971115
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