Deep learning techniques in modern women’s smart clothing design

With the rapid upgrade of AI in today’s era, the technology of designing garments by merely taking measurements of women’s clothing through traditional pattern makers followed by hand-drawn clothing style patterns by clothing designers has become increasingly inadequate to meet people’s needs. In th...

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Main Authors: Ke Huiming, Wang Yang
Format: Article
Language:English
Published: Sciendo 2024-01-01
Series:Applied Mathematics and Nonlinear Sciences
Subjects:
Online Access:https://doi.org/10.2478/amns.2023.1.00065
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author Ke Huiming
Wang Yang
author_facet Ke Huiming
Wang Yang
author_sort Ke Huiming
collection DOAJ
description With the rapid upgrade of AI in today’s era, the technology of designing garments by merely taking measurements of women’s clothing through traditional pattern makers followed by hand-drawn clothing style patterns by clothing designers has become increasingly inadequate to meet people’s needs. In this paper, the study of super-resolution reconstruction technology according to deep learning improves the resolution of women’s clothing style images and helps to save production costs. The overall clothing style migration method, according to the optimization DCGAN algorithm, improves the efficiency of intelligent design of women’s clothing. It is shown that the reconstruction time of a clothing style image can be completed in only 0.26s, which is much smaller than the reconstruction time of the SRCNN convolutional neural network algorithm, which is 4.30s. The loss value of the live network is 0.79, the loss value of the classical network is 1.23, and the loss value of the optimization algorithm is 0.48. The algorithm in this paper has the smallest training loss value. Therefore, the use of deep learning technology can solve the problem of traditional women’s apparel design, relying on the designer’s experience and inspiration and generating design solutions intelligently.
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spelling doaj.art-212d0a81e064465f9702678d452ed4522024-01-29T08:52:25ZengSciendoApplied Mathematics and Nonlinear Sciences2444-86562024-01-019110.2478/amns.2023.1.00065Deep learning techniques in modern women’s smart clothing designKe Huiming0Wang Yang11College of Fine Arts, Guangdong Polytechnic Normal University, Guangzhou Guangdong, 510665, China2School of Materials Design and Engineering, Beijing institute of fashion technology, Beijing, 100029, ChinaWith the rapid upgrade of AI in today’s era, the technology of designing garments by merely taking measurements of women’s clothing through traditional pattern makers followed by hand-drawn clothing style patterns by clothing designers has become increasingly inadequate to meet people’s needs. In this paper, the study of super-resolution reconstruction technology according to deep learning improves the resolution of women’s clothing style images and helps to save production costs. The overall clothing style migration method, according to the optimization DCGAN algorithm, improves the efficiency of intelligent design of women’s clothing. It is shown that the reconstruction time of a clothing style image can be completed in only 0.26s, which is much smaller than the reconstruction time of the SRCNN convolutional neural network algorithm, which is 4.30s. The loss value of the live network is 0.79, the loss value of the classical network is 1.23, and the loss value of the optimization algorithm is 0.48. The algorithm in this paper has the smallest training loss value. Therefore, the use of deep learning technology can solve the problem of traditional women’s apparel design, relying on the designer’s experience and inspiration and generating design solutions intelligently.https://doi.org/10.2478/amns.2023.1.00065women’s clothingintelligent clothing designstyle migrationconvolutional neural networksuper-resolution reconstruction05b30
spellingShingle Ke Huiming
Wang Yang
Deep learning techniques in modern women’s smart clothing design
Applied Mathematics and Nonlinear Sciences
women’s clothing
intelligent clothing design
style migration
convolutional neural network
super-resolution reconstruction
05b30
title Deep learning techniques in modern women’s smart clothing design
title_full Deep learning techniques in modern women’s smart clothing design
title_fullStr Deep learning techniques in modern women’s smart clothing design
title_full_unstemmed Deep learning techniques in modern women’s smart clothing design
title_short Deep learning techniques in modern women’s smart clothing design
title_sort deep learning techniques in modern women s smart clothing design
topic women’s clothing
intelligent clothing design
style migration
convolutional neural network
super-resolution reconstruction
05b30
url https://doi.org/10.2478/amns.2023.1.00065
work_keys_str_mv AT kehuiming deeplearningtechniquesinmodernwomenssmartclothingdesign
AT wangyang deeplearningtechniquesinmodernwomenssmartclothingdesign