Resource construction of intelligent design based on artificial intelligence bio-perception in the protection of intangible cultural heritage

  • Bin Wang School of Art, Zhejiang Yuexiu University, Shaoxing 312000, China
Keywords: intangible cultural heritage; artificial intelligence; multimodal biosensing; resource construction; intelligent design
Article ID: 986

Abstract

The protection of intangible cultural heritage (ICH) is not only respect and protection for traditional culture, but also plays a vital role in cultural inheritance, social identity, historical memory, economic development, and innovative vitality. With the rapid advancement of globalization and modernization, ICH is also facing unprecedented challenges. However, the traditional protection of ICH has problems such as focusing on static physical protection, insufficient information storage, limited transmission, insufficient modern transformation and innovation, excessive restoration of traditional elements and conservative protection. In response to the above problems, this paper designs an ICH resource construction system based on artificial intelligence (AI) biological perception. It can perceive ICH data through multimodal biology, store and reproduce it, perform feature analysis based on biological emotions and emotional interactions, capture the inheritance logic and emotional connotation of culture, and drive the digital modeling of ICH resources with intelligent design. Dynamic ICH content can be superimposed on real scenes to facilitate education and dissemination, and personalized ICH story content can be recommended based on user preferences to enhance the display and dissemination capabilities of ICH. The results show that the system uses multimodal perception and stores more than 100,000 ICH data items in four major categories and multiple subcategories, and designs a unique interactive tag cloud for users to choose from. When making recommendations for users, it recommends 200 ICH contents to users from the sorted list simultaneously, and the proportion of users clicking on the recommendations reaches 85%, while also achieving the widespread dissemination of ICH in Asia. Compared with traditional ICH protection, this study has achieved efficient digital storage of ICH content, strong modern conversion, and ease of acceptance by users. The scope of dissemination is also wider. This shows that the use of AI and biosensing technology in ICH protection is effective and can contribute to better preservation, publicity and promotion of ICH.

References

1. Hou, Yumeng, Kenderdine, Sarah, Picca, Davide, Egloff, Mattia, Adamou, Alessandro.” Digitizing intangible cultural heritage embodied: State of the art.” Journal on Computing and Cultural Heritage (JOCCH) 15.3 (2022): 1-20.

2. Eichler, Jessika. “Intangible cultural heritage, inequalities and participation: who decides on heritage?.” The International Journal of Human Rights 25.5 (2021): 793-814.

3. Chen, Zhaoyu. “Visualizing experiencescape–from the art of intangible cultural heritage.” Current Issues in Tourism 25.4 (2022): 559-578.

4. Spiteri, Marthese, and Shu-Nu Chang Rundgren. “Literature review on the factors affecting primary teachers’ use of digital technology.” Technology, Knowledge and Learning 25.1 (2020): 115-128.

5. Skare, Marinko, and Domingo Riberio Soriano. “How globalization is changing digital technology adoption: An international perspective.” Journal of Innovation & Knowledge 6.4 (2021): 222-233.

6. Vargo, Deedra, Zhu, Lin, BenWell, Briana, Yan, Zheng. “Digital technology use during COVID‐19 pandemic: A rapid review.” Human Behavior and Emerging Technologies 3.1 (2021): 13-24.

7. Abich IV, Julian, Parker, Jason, Murphy, Jennifer S., Eudy, Morgan. “A review of the evidence for training effectiveness with virtual reality technology.” Virtual Reality 25.4 (2021): 919-933.

8. Bottani, Eleonora, and Giuseppe Vignali. “Augmented reality technology in the manufacturing industry: A review of the last decade.” Iise Transactions 51.3 (2019): 284-310.

9. Chen, Yulong, and Ke Xue. “Interactive Design of Intangible Cultural Heritage Based on Social Sharing—The Digital Revitalization of Su Embroidery.” Academic Journal of Humanities & Social Sciences 4.4 (2021): 53-60.

10. Lo, Patrick, Chan, Holly H.Y., Tang, Angel W.M., Chiu, Dickson K.W., Cho, Allan, See-to, Eric W.K.,. et al “Visualising and revitalising traditional Chinese martial arts: visitors’ engagement and learning experience at the 300 years of Hakka Kungfu.” Library Hi Tech 37.2 (2019): 269-288.

11. Damala, Areti, Ian Ruthven, and Eva Hornecker. “The MUSETECH model: A comprehensive evaluation framework for museum technology.” Journal on Computing and Cultural Heritage (JOCCH) 12.1 (2019): 1-22.

12. Nikolakopoulou,Vasiliki,Printezis,Petros,Maniatis,Vassilis,Kontizas,Dimitris,Vosinakis,Spyros,Chatzigrigoriou,Pavlos,et al. “Conveying intangible cultural heritage in museums with interactive storytelling and projection mapping: the case of the mastic villages.” Heritage 5.2 (2022): 1024-1049.

13. Buyuksalih, Gurcan, Kan, Tuna, Ozkan, Gozde Enc, Meric, Muge, Isın, Lale, Kersten Thomas P. “Preserving the knowledge of the past through virtual visits: From 3D laser scanning to virtual reality visualisation at the Istanbul Çatalca Incegiz caves.” PFG–Journal of Photogrammetry, Remote Sensing and Geoinformation Science 88.2 (2020): 133-146.

14. Trunfio, Mariapina, Lucia, Maria Della, Campana, Salvatore, Magnelli, Adele.” Innovating the cultural heritage museum service model through virtual reality and augmented reality: The effects on the overall visitor experience and satisfaction.” Journal of Heritage Tourism 17.1 (2022): 1-19.

15. Karuzaki, Effie, Partarakis,Nikolaos,Patsiouras,Nikolaos,Zidiannakis,Emmanouil,Katzourakis,Antonios,Pattakos,Antreas,et al. “Realistic virtual humans for cultural heritage applications.” Heritage 4.4 (2021): 4148-4171.

16. Jiang, Shan, Moyle, Brent, Yung, Ryan, Tao, Li, Scott, Noel. “Augmented reality and the enhancement of memorable tourism experiences at heritage sites.” Current Issues in Tourism 26.2 (2023): 242-257.

17. Banfi, Fabrizio, Raffaella Brumana, and Chiara Stanga. “Extended reality and informative models for the architectural heritage: from scan-to-BIM process to virtual and augmented reality.” Virtual Archaeology Review 10.21 (2019): 14-30.

18. Xu, Wulong. “Research on the Communication Opportunities of Intangible Cultural Heritage under the Background of Big Data and AI.” Journal of Artificial Intelligence Practice 6.8 (2023): 12-17.

19. Yue, Man, Guan Wang, and Zheng Li. “The Digital Protection and Inheritance of Intangible Cultural Heritage:--Taking the Qing Dynasty horse-face skirt as an Example.” Highlights in Art and Design 1.3 (2022): 83-87.

20. Di Giulio, Roberto, Boeri, Andrea, Longo, Danila, Gianfrate, Valentina, Boulanger, Saveria O.M., et al. “ICTs for accessing, understanding and safeguarding cultural heritage: the experience of INCEPTION and ROCK H2020 projects.” International Journal of Architectural Heritage 15.6 (2021): 825-843.

21. Stapleton, Larry,O’ Neill,Brenda,Cronin,Kieran,Mcinerney,Patrick,Hendrick,Matthew,Dalton,Eoin. “A semi-automated systems architecture for cultural heritage: sustainable solutions for Digitising cultural heritage.” IFAC-PapersOnLine 52.25 (2019): 562-567.

22. Tian, Jin, Cao, YiFan, Feng, LingYi, Fu, Dong Ting, Yuan, Lin Ping, Qu, Hu Min, et al. “Poeticar: Reviving traditional poetry of the heritage site of jichang garden via augmented reality.” International Journal of Human–Computer Interaction 40.6 (2024): 1438-1454.

23. Xu, Liang, Lu Lu, and Minglu Liu. “Construction and application of a knowledge graph-based question answering system for Nanjing Yunjin digital resources.” Heritage Science 11.1 (2023): 1-17.

24. Munster, Sander, Maiwald, Ferdinand, Lenardo, Isabella di, Henriksson, Juha, Isaac, Antoine, Fraf, Manuela Milica, et al. “Artificial Intelligence for Digital Heritage Innovation: Setting up a R&D Agenda for Europe.” Heritage 7.2 (2024): 794-816.

25. Yin, Jie. “Application of Intelligent Image Recognition and Digital Media Art in the Inheritance of Black Pottery Intangible Cultural Heritage.” ACM Transactions on Asian and Low-Resource Language Information Processing 23.6 (2024): 1-15.

26. Li, Meng, Yun Wang, and Ying-Qing Xu. “Computing for Chinese cultural heritage.” Visual Informatics 6.1 (2022): 1-13.

27. Deng, Meizhen, Yi meng Liu, and Ling Chen. “AI-driven innovation in ethnic clothing design: an intersection of machine learning and cultural heritage.” Electronic Research Archive 31.9 (2023): 5793-5814.

28. Mintz, Yoav, and Ronit Brodie. “Introduction to artificial intelligence in medicine.” Minimally Invasive Therapy & Allied Technologies 28.2 (2019): 73-81.

29. Kaul, Vivek, Sarah Enslin, and Seth A. Gross. “History of artificial intelligence in medicine.” Gastrointestinal endoscopy 92.4 (2020): 807-812.

30. Gunning, David, and David Aha. “DARPA’ s explainable artificial intelligence (XAI) program.” AI magazine 40.2 (2019): 44-58.

31. Li, Yi, Li, Shi Yuan, Wang, Jin, Liu, Guo Zhen. “CRISPR/Cas systems towards next-generation biosensing.” Trends in biotechnology 37.7 (2019): 730-743.

32. Moin, Ali,Zhou,Andy,Rahimi,Abbas,Menon,Alisha,Benatti,Simone,Alexandrow,George, et al. “A wearable biosensing system with in-sensor adaptive machine learning for hand gesture recognition.” Nature Electronics 4.1 (2021): 54-63.

33. Deriso, Dave, and Stephen Boyd. “A general optimization framework for dynamic time warping.” Optimization and Engineering 24.2 (2023): 1411-1432.

34. Van Houdt, Greg, Carlos Mosquera, and Gonzalo Napoles. “A review on the long short-term memory model.” Artificial Intelligence Review 53.8 (2020): 5929-5955.

35. Hua, YuXiu,Zhao,ZhiFeng,Li,RongPeng,Chen,XianFu,Liu,ZhiMing,Zhang,HongGang. “Deep learning with long short-term memory for time series prediction.” IEEE Communications Magazine 57.6 (2019): 114-119.

36. Li, Ze wen, LIu, Fan, Yang, Wen Jie, Peng, Shou Heng, Zhou, Jun. “A survey of convolutional neural networks: analysis, applications, and prospects.” IEEE transactions on neural networks and learning systems 33.12 (2021): 6999-7019.

37. Wu, Le, He, Xiang Nan, Wang, Xiang, Zhang, Kun, Wang, Meng. “A survey on accuracy-oriented neural recommendation: From collaborative filtering to information-rich recommendation.” IEEE Transactions on Knowledge and Data Engineering 35.5 (2022): 4425-4445.

Published
2025-01-24
How to Cite
Wang, B. (2025). Resource construction of intelligent design based on artificial intelligence bio-perception in the protection of intangible cultural heritage. Molecular & Cellular Biomechanics, 22(2), 986. https://doi.org/10.62617/mcb986
Section
Article