He Jialiang, Tao Hong
College of Information and Communication Engineering, Dalian Nationalities University, Dalian, 116600, China.
Sci Rep. 2025 Apr 14;15(1):12829. doi: 10.1038/s41598-025-96587-2.
In light of the challenges currently facing the inheritance of blue calico, including the reduction in the number of inheritors and the contraction of the market, this paper puts forth a stylistic transfer method based on an enhanced cycle consistency generative adversarial network. This approach is designed to facilitate the creation of novel designs for traditional blue calico patterns. To address the shortcomings of existing style transfer models, including the generation of blurry details, poor texture and color effects, and excessive model parameters, we propose the incorporation of the Ghost convolution module and the SRM attention module into the generator network structure. This approach aims to reduce the model parameter quantity and computational cost while enhancing the feature extraction ability of the network. The experimental results demonstrate that the method proposed in this paper not only effectively enhances the content details, texture, and color effects of the generated images, but also successfully combines traditional blue calico with modern daily necessities, thereby enhancing its appeal to young people. This research provides novel insights into the digital protection and innovative development of traditional culture, and illustrates the extensive potential applications of deep learning technology in the field of cultural heritage.
鉴于目前蓝印花布传承面临的挑战,包括传承人数量减少和市场萎缩,本文提出了一种基于增强循环一致性生成对抗网络的风格迁移方法。该方法旨在促进传统蓝印花布图案的新颖设计创作。为解决现有风格迁移模型的缺点,包括生成的细节模糊、纹理和色彩效果不佳以及模型参数过多等问题,我们提出将Ghost卷积模块和SRM注意力模块纳入生成器网络结构。此方法旨在减少模型参数数量和计算成本,同时增强网络的特征提取能力。实验结果表明,本文提出的方法不仅有效增强了生成图像的内容细节、纹理和色彩效果,还成功地将传统蓝印花布与现代日用品相结合,从而增强了其对年轻人的吸引力。本研究为传统文化的数字保护和创新发展提供了新颖的见解,并说明了深度学习技术在文化遗产领域的广泛潜在应用。