Digital Visual Design Reengineering and Application Based on K-means Clustering Algorithm

被引:0
作者
Ren L. [1 ]
Kim H. [1 ]
机构
[1] Hongik University, Seoul
关键词
color gene extraction; digital visual design reengineering; jellyfish optimization algorithm; k-means clustering algorithm;
D O I
10.4108/EETSIS.5233
中图分类号
学科分类号
摘要
INTRODUCTION: The article discusses the key steps in digital visual design reengineering, with a special emphasis on the importance of information decoding and feature extraction for flat cultural heritage. These processes not only minimize damage to the aesthetic heritage itself but also feature high quality, efficiency, and recyclability. OBJECTIVES: The aim of the article is to explore the issues of gene extraction methods in digital visual design reengineering, proposing a visual gene extraction method through an improved K-means clustering algorithm. METHODS: A visual gene extraction method based on an improved K-means clustering algorithm is proposed. Initially analyzing the digital visual design reengineering process, combined with a color extraction method using the improved JSO algorithm-based K-means clustering algorithm, a gene extraction and clustering method for digital visual design reengineering is proposed and validated through experiments. RESULT: The results show that the proposed method improves the accuracy, robustness, and real-time performance of clustering. Through comparative analysis with Dunhuang murals, the effectiveness of the color extraction method based on the K-means-JSO algorithm in the application of digital visual design reengineering is verified. The method based on the K-means-GWO algorithm performs best in terms of average clustering time and standard deviation. The optimization curve of color extraction based on the K-means-JSO algorithm converges faster and with better accuracy compared to the K-means-ABC, K-means-GWO, K-means-DE, K-means-CMAES, and K-means-WWCD algorithms. CONCLUSION: The color extraction method of the K-means clustering algorithm improved by the JSO algorithm proposed in this paper solves the problems of insufficient standardization in feature selection, lack of generalization ability, and inefficiency in visual gene extraction methods. © 2024 L. Ren et al., licensed to EAI. This is an open access article distributed under the terms of the CC BY-NC-SA 4.0, which permits copying, redistributing, remixing, transformation, and building upon the material in any medium so long as the original work is properly cited.
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页码:1 / 13
页数:12
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共 27 条
[21]  
Ding X, Wu Z, Li M., Clustering Merchants and Accurate Marketing of Products Using the Segmentation Tree Vector Space Model[J], Mathematical Problems in Engineering: Theory, Methods and Applications, 2022, 11
[22]  
Zhihui Gao, Meng Han, Shujuan Liu, Ang Li, Dongliang Mu, A review of efficient usable itemset mining methods based on intelligent optimization algorithms[J], Computer Applications, 43, 6, pp. 1676-1686, (2023)
[23]  
Zhang F, Ye W, Lei G, Liu Y, Wang X., SOH estimation of Li-ion battery based on FA-BPNN-K-means optimization algorithm[J], J. Comput. Methods Sci. Eng, 22, pp. 1209-1222, (2022)
[24]  
David O, Sarkar S, Kammerer N, Nantermoz C, De Chamisso F M, Meden B., Digital assistances in remote operations for ITER test blanket system replacement: an experimental validation[J], Fusion engineering and design, (2023)
[25]  
Meng K, Liu F, Zhou T., Application of 3D Digital Image Processing Technology in Modern Packaging Design[J], Advances in multimedia, 2022, 6
[26]  
Velmurugan T, Santhanam T., Computational Complexity between K-Means and K-Medoids Clustering Algorithms for Normal and Uniform Distributions of Data Points[J]
[27]  
Farhat M, Kamel S, Atallah A M, Khan B., Optimal Power Flow Solution Based on Jellyfish Search Optimization Considering Uncertainty of Renewable Energy Sources[J], IEEE Access, 9, pp. 100911-100933, (2021)