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Development of the digital retrieval system integrating intelligent information and improved genetic algorithm: A study based on art museums

Author

Listed:
  • Cun Lin
  • XiaoChen Hu
  • TianYi Cheng
  • Rao Yin

Abstract

This study aims to develop a digital retrieval system for art museums to solve the problems of inaccurate information and low retrieval efficiency in the digital management of cultural heritage. By introducing an improved Genetic Algorithm (GA), digital management and access efficiency are enhanced, to bring substantial optimization and innovation to the digital management of cultural heritage. Based on the collection of art museums, this study first integrates the collection’s images, texts, and metadata with multi-source intelligent information to achieve a more accurate and comprehensive description of digital content. Second, a GA is introduced, and a GA 2 Convolutional Neural Network (GA2CNN) optimization model combining domain knowledge is proposed. Moreover, the convergence speed of traditional GA is improved to adapt to the characteristics of cultural heritage data. Lastly, the Convolutional Neural Network (CNN), GA, and GA2CNN are compared to verify the proposed system’s superiority. The results show that in all models, the sample output results’ actual value is 2.62, which represents the real data observation results. For sample number 5, compared with the actual value of 2.62, the predicted values of the GA2CNN and GA models are 2.6177 and 2.6313, and their errors are 0.0023 and 0.0113. The CNN model’s predicted value is 2.6237, with an error of 0.0037. It can be found that the network fitting accuracy after optimization of the GA2CNN model is high, and the predicted value is very close to the actual value. The digital retrieval system integrated with the GA2CNN model has a good performance in enhancing retrieval efficiency and accuracy. This study provides technical support for the digital organization and display of cultural heritage and offers valuable references for innovative exploration of museum information management in the digital era.

Suggested Citation

  • Cun Lin & XiaoChen Hu & TianYi Cheng & Rao Yin, 2024. "Development of the digital retrieval system integrating intelligent information and improved genetic algorithm: A study based on art museums," PLOS ONE, Public Library of Science, vol. 19(6), pages 1-20, June.
  • Handle: RePEc:plo:pone00:0305690
    DOI: 10.1371/journal.pone.0305690
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    References listed on IDEAS

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    1. Yue Wu & Qianling Jiang & Hui’e Liang & ShiYu Ni, 2022. "What Drives Users to Adopt a Digital Museum? A Case of Virtual Exhibition Hall of National Costume Museum," SAGE Open, , vol. 12(1), pages 21582440221, March.
    2. Xuewen Zhou & Xiaoxia Zhang & Zhimei Dai & Roosmayri Lovina Hermaputi & Chen Hua & Yonghua Li, 2021. "Spatial Layout and Coupling of Urban Cultural Relics: Analyzing Historical Sites and Commercial Facilities in District III of Shaoxing," Sustainability, MDPI, vol. 13(12), pages 1-20, June.
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