上海视觉

上海视觉 ›› 2023, Vol. 0 ›› Issue (2): 70-74.

• 艺术实践 • 上一篇    下一篇

CNN算法在玻璃陶瓷造型设计中的应用研究

王艺贤   

  1. 上海视觉艺术学院,上海 201620
  • 出版日期:2023-02-20 发布日期:2023-12-26
  • 作者简介:王艺贤(1994 — ),女。毕业于东华大学,硕士。现为上海视觉艺术学院讲师。研究方向为工艺美术(玻璃与陶瓷设计)。

Research on the Application of CNN Algorithm in Glass and Ceramic Modeling Design

WANG Yixian   

  • Online:2023-02-20 Published:2023-12-26

摘要:

工艺美术设计中的玻璃、陶瓷等器物,其造型的归纳和设计是所有设计流程中最重要的一个环节,而提高设计的效率便是所有设计师需要解决的问题。因此,采用人工智能技术中的CNN算法智能模型对造型进行智能分类,设定好CNN模型,选择激活函数relu,最大池化方法,对输出结果做Softmax处理,并采用交叉商损失函数,Adam优化方法对模型进行训练,最后得出高精度低损失的模型。借助该模型,能够很快地辨别所设计的结果是否符合现代陶瓷玻璃的造型设计规律以及市场的运用,以便更好更快地投入到下一步的制作中。

关键词: 玻璃与陶瓷, 造型设计, 卷积神经网络, 人工智能

Abstract:

In the field of arts and crafts design, the summarization and design of glass, ceramics, and other objects are the most crucial stages in the entire design process, and improving the efficiency of design is a challenge that all designers need to address. Therefore, by employing the Convolutional Neural Networks (CNN) algorithm in artificial intelligence technology, an intelligent model is used to classify the shapes in an intelligent way. The CNN model is configured with the activation function ReLU, maximum pooling method, Softmax processing for the output results, and the cross-entropy loss function. The Adam optimization method is applied to train the model, resulting in a highly accurate model with minimal loss. With the assistance of this model, the designed outcome can be quickly identified whether it follows the modern design principles and promotes the market application of ceramics and glass, thus facilitating better and faster engagement in the subsequent production phase.

Key words: glass and ceramics, modeling design, convolutional neural networks (CNN), artificial intelligence (AI)