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Fusion Mode and Style Based on Artificial Intelligence and Clothing Design

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  • Jiali Qiu
  • Lianghua Ma

Abstract

With the upgrading of intelligent manufacturing, industrial robots will play an important role in the garment industry. The purpose of this article was to study the pattern and style based on the integration of artificial intelligence and clothing design. In this article, the digital modeling of clothing design and the case analysis of intelligent clothing design are described using the method of comparative experiment. The experimental results are obtained from the analysis of fuzzy number of clothing design language evaluation, three-dimensional human body construction clothing size, clothing design elements and auxiliary functions, and the analysis of the advantages and disadvantages of clothing design system. The popular clothing sample is D4 (0.4862), which is 20% higher than other products. It can be concluded that the model proposed in this article can grasp the needs of consumers and select the right one according to the market positioning. The fabric mass production fashion brand can significantly improve the efficiency and satisfaction of the fabric selection decision-making process. It provides enough technical support and style model for intelligent clothing design.

Suggested Citation

  • Jiali Qiu & Lianghua Ma, 2021. "Fusion Mode and Style Based on Artificial Intelligence and Clothing Design," Mathematical Problems in Engineering, Hindawi, vol. 2021, pages 1-16, November.
  • Handle: RePEc:hin:jnlmpe:6293539
    DOI: 10.1155/2021/6293539
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