遗传(遗传算法)
可持续发展
适应(眼睛)
透视图(图形)
计算机科学
风格(视觉艺术)
可持续设计
价值(数学)
设计方法
知识管理
工程管理
建筑工程
工程类
过程管理
非物质文化遗产
管理科学
遗传算法
中国家庭
人工智能
系统工程
价值网络
设计知识
机制(生物学)
生活方式
环境设计
风险分析(工程)
作者
Daoling Chen,Pengpeng Cheng
摘要
Abstract This research aims to explore the application of artificial intelligence-generated content (AIGC) technology in traditional Chinese paper-cut design and promote the protection and inheritance of traditional Chinese paper-cut culture. First, the paper-cut works of paper-cut artist are analyzed to extract the characteristic factors of her design styles. Second, based on the characteristics of the paper-cut style, a dedicated dataset for model training is constructed and passed into the fine-tuning network to train and generate a Low-Rank Adaptation (LoRA) fine-tuning model with the design style characteristics of the paper-cut artists. Finally, the paper-cut LoRA model is combined with the stable diffusion model to complete the intelligent design practice of traditional paper-cut. Through experimental verification, the paper-cut model trained in this research can effectively realize the migration design of traditional paper-cut artists’ design style and improve the efficiency of paper-cut design. This research proposes a paper-cut style generation method based on AIGC, which provides a new perspective for the protection and development of paper-cut culture. This method reduces the difficulty of paper-cut design, optimizes the design process, and improves design efficiency, providing technical support for the sustainable development of paper-cut art. At the same time, it also has important significance and value for the digital inheritance and innovation of other intangible cultural heritage.
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