Zhao Yan
Faculty of Innovation and Design, City University of Macau, Macau, 999078, China.
School of Art and Design, Guangzhou Vocational College of Technology & Business, Guangzhou, 511630, China.
Heliyon. 2024 Sep 17;10(18):e38008. doi: 10.1016/j.heliyon.2024.e38008. eCollection 2024 Sep 30.
This study aims to clarify the synergistic effect of artificial intelligence (AI) technology in the evolution of visual communication of new media art, thereby exploring an AI layout design method based on Convolutional Neural Network (CNN) in the practice of visual communication design. Firstly, this study designs an AI layout design model based on CNN, and trains and optimizes it with training data. Secondly, the automatic generation of layout design is realized by constantly adjusting the model parameters and network structure. Finally, various AI layout design algorithms are compared, and their effects and performances in layout design generation are analyzed. To verify the layout and composition matching model's performance, traditional layout design methods are selected for comparison (layout, comparison, harmonic composition, etc.). This study involved 20 design students as participants, evaluating them across three dimensions: overall comprehensive assessment, readability of text information, and rationality of visual path using a Likert 7-point scale. The results reveal that the proposed method's evaluation outcomes in these three aspects are 5.95, 5.68, and 5.74, respectively, higher than the traditional layout design methods. To sum up, the generative AI discussed here can automatically generate design elements and schemes through deep learning and big data analysis, thus providing a reference for the innovation of visual communication design.
本研究旨在阐明人工智能(AI)技术在新媒体艺术视觉传播演进中的协同作用,从而在视觉传达设计实践中探索一种基于卷积神经网络(CNN)的AI布局设计方法。首先,本研究设计了一种基于CNN的AI布局设计模型,并用训练数据对其进行训练和优化。其次,通过不断调整模型参数和网络结构实现布局设计的自动生成。最后,比较了各种AI布局设计算法,并分析了它们在布局设计生成中的效果和性能。为验证布局与构图匹配模型的性能,选择传统布局设计方法进行比较(布局、对比、调和构图等)。本研究招募了20名设计专业学生作为参与者,使用李克特7点量表从整体综合评估、文本信息可读性和视觉路径合理性三个维度对他们进行评估。结果显示,所提方法在这三个方面的评估结果分别为5.95、5.68和5.74,高于传统布局设计方法。综上所述,本文所讨论的生成式AI能够通过深度学习和大数据分析自动生成设计元素和方案,从而为视觉传达设计的创新提供参考。