目的 蜀锦拥有悠久的历史和丰富的文化底蕴,然而却面临着创新不足和文化传承的危机,旨在结合可拓语义的方法,基于大语言模型驱动的AI Agent,探索蜀锦纹样的智能化生成与创新设计路径。方法 采用可拓语义法提取蜀锦纹样的关键特征,并结合大语言模型驱动的AI Agent生成纹样,最终通过模糊评价法进行效果评估。结果 将人工智能技术应用于蜀锦纹样的自动生成,突破了传统手工艺的技术和创意局限,提供了一条新的数字化设计路径。结合可拓语义法精确提取蜀锦纹样特征,为智能体的个性化输出提供了坚实的理论支撑。结论 表明通过AI Agent生成的蜀锦纹样不仅能高效设计出符合现代审美的图案,还能促进蜀锦艺术的现代化转型,为传统文化的创新发展提供新的思路和方法。
Abstract
Shu brocade has a long history and rich cultural heritage, but it is facing the crisis of insufficient innovation and cultural inheritance. The work aims to explore the intelligent generation and innovative design path of Shu brocade patterns based on the AI Agent driven by the large language model by combining the extension semantic method. The key features of Shu brocade patterns were extracted by the extension semantic method, and the patterns were generated by the AI Agent driven by the large language model. Finally, the effect was evaluated by the fuzzy evaluation method. The application of artificial intelligence technology to the automatic generation of Shu brocade patterns broke through the technical and creative limitations of traditional handicrafts and provided a new digital design path. The characteristics of Shu brocade patterns were accurately extracted by combining the extension semantic method, which provided a solid theoretical support for the personalized output of the intelligent agent. In conclusion, the Shu brocade patterns generated by the AI Agent can not only efficiently design patterns that conform to modern aesthetics, but also promote the modernization transformation of Shu brocade art and provide new ideas and methods for the innovative development of traditional culture.
关键词
蜀锦纹样 /
AI Agent /
创新 /
可拓语义 /
现代化转型
Key words
Shu brocade pattern /
AI agent /
innovation /
extension semantics /
modern transformation
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基金
广东省教育厅创新团队项目(人文社科)(2024WCXTD033); 广东省科技计划项目(2020A1414010314)