A knowledge-supported approach for garment ...
Type de document :
Article dans une revue scientifique: Article original
URL permanente :
Titre :
A knowledge-supported approach for garment pattern design using fuzzy logic and artificial neural networks
Auteur(s) :
Wang, Zhujun [Auteur]
Xing, Yingmei [Auteur]
Wang, Jianping [Auteur]
Zeng, Xianyi [Auteur]
Génie et Matériaux Textiles [GEMTEX]
Yang, Yalan [Auteur]
Xu, Shuo [Auteur]
Xing, Yingmei [Auteur]
Wang, Jianping [Auteur]
Zeng, Xianyi [Auteur]
Génie et Matériaux Textiles [GEMTEX]
Yang, Yalan [Auteur]
Xu, Shuo [Auteur]
Titre de la revue :
Multimedia Tools and Applications
Nom court de la revue :
Multimed. Tools Appl.
Numéro :
81
Pagination :
19013–19033
Éditeur :
Springer Verlag
Date de publication :
2020-10-29
ISSN :
1380-7501
Mot(s)-clé(s) en anglais :
Garment pattern design
Knowledge modeling
Fuzzy logic
Artificial neural networks
Anthropometric measurements
Knowledge modeling
Fuzzy logic
Artificial neural networks
Anthropometric measurements
Discipline(s) HAL :
Sciences de l'ingénieur [physics]
Résumé en anglais : [en]
In the clothing industry, garment pattern design serves as a significant middle link between fashion design and manufacturing. With the advent of advanced multimedia techniques, like virtual reality, 3D modeling, and ...
Lire la suite >In the clothing industry, garment pattern design serves as a significant middle link between fashion design and manufacturing. With the advent of advanced multimedia techniques, like virtual reality, 3D modeling, and interactive design, this work has become more intuitive. However, it is still a tremendous knowledge-based work that relied on the experienced patternmakers’ know-how. For enterprises, it will take a long time to cultivate a patternmaker from an abecedarian to an expert. Moreover, while facing fierce competition in the market, enterprises still have to endure the pressures and risks led by the turnover of experienced patternmakers. In this context, we put forward a knowledge-supported garment pattern design approach by learning the experienced patternmakers’ knowledge based on fuzzy logic and artificial neural networks. Based on this approach, we created a knowledge-supported pattern design model, consisting of several sub-models following the garment styles, considering the properties of fabrics and fitting degree. The inputs of the model are the feature body dimensions, while the outputs, namely the pattern parameters, can be generated following the fabric and fitting degree selected. Through performance comparison with other models and the actual fitting test, the results revealed that the present approach was applicable. Our proposed approach can not only support the non-expert patternmakers or abecedarians to make decisions when developing the patterns by reducing the difficulties of patternmaking but help the enterprises to reduce the dependencies on the experts, hence promoting the efficiency and reducing risks.Lire moins >
Lire la suite >In the clothing industry, garment pattern design serves as a significant middle link between fashion design and manufacturing. With the advent of advanced multimedia techniques, like virtual reality, 3D modeling, and interactive design, this work has become more intuitive. However, it is still a tremendous knowledge-based work that relied on the experienced patternmakers’ know-how. For enterprises, it will take a long time to cultivate a patternmaker from an abecedarian to an expert. Moreover, while facing fierce competition in the market, enterprises still have to endure the pressures and risks led by the turnover of experienced patternmakers. In this context, we put forward a knowledge-supported garment pattern design approach by learning the experienced patternmakers’ knowledge based on fuzzy logic and artificial neural networks. Based on this approach, we created a knowledge-supported pattern design model, consisting of several sub-models following the garment styles, considering the properties of fabrics and fitting degree. The inputs of the model are the feature body dimensions, while the outputs, namely the pattern parameters, can be generated following the fabric and fitting degree selected. Through performance comparison with other models and the actual fitting test, the results revealed that the present approach was applicable. Our proposed approach can not only support the non-expert patternmakers or abecedarians to make decisions when developing the patterns by reducing the difficulties of patternmaking but help the enterprises to reduce the dependencies on the experts, hence promoting the efficiency and reducing risks.Lire moins >
Langue :
Anglais
Audience :
Internationale
Vulgarisation :
Non
Établissement(s) :
Université de Lille
ENSAIT
Junia HEI
ENSAIT
Junia HEI
Collections :
Date de dépôt :
2023-06-20T11:38:34Z
2024-03-15T14:55:36Z
2024-03-15T14:55:36Z