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http://dx.doi.org/10.9717/kmms.2020.23.12.1552

A Study on Influence of Stroke Element Properties to find Hangul Typeface Similarity  

Park, Dong-Yeon (Dept. of IT Engineering, SookMyung Women's University)
Jeon, Ja-Yeon (Dept. of IT Engineering, Graduate School, SookMyung Women's University)
Lim, Seo-Young (Dept. of IT Engineering, SookMyung Women's University)
Lim, Soon-Bum (Dept. of IT Engineering and Research Institute ICT Convergence, Sookmyung Women's University)
Publication Information
Abstract
As various styles of fonts were used, there were problems such as output errors due to uninstalled fonts and difficulty in font recognition. To solve these problems, research on font recognition and recommendation were actively conducted. However, Hangul font research remains at the basic level. Therefore, in order to automate the comparison on Hangul font similarity in the future, we analyze the influence of each stroke element property. First, we select seven representative properties based on Hangul stroke shape elements. Second, we design a calculation model to compare similarity between fonts. Third, we analyze the effect of each stroke element through the cosine similarity between the user's evaluation and the results of the model. As a result, there was no significant difference in the individual effect of each representative property. Also, the more accurate similarity comparison was possible when many representative properties were used.
Keywords
Characteristics Properties of Hangul Shape; Hangul Font Similarity; Font Similarity Calculation Model; Stroke Element Property;
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Times Cited By KSCI : 6  (Citation Analysis)
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