Influence of Graphical Representation Type on Tessellated Geometry Classification
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Language: English
Page range: 111 - 138
Submitted on: Sep 5, 2025
Accepted on: Feb 24, 2026
Published on: Mar 17, 2026
Published by: Poznan University of Technology
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© 2026 Maciej Majchrzak, Katarzyna Marciniak-Lukasiak, Mateusz Jakubowski, Piotr Lukasiak, published by Poznan University of Technology
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