人工神经网络
背景(考古学)
工程类
过程(计算)
工业工程
人工智能
计算机科学
工程制图
古生物学
生物
操作系统
作者
Kaixuan Liu,Ruolin Wang,Xinyue Hao,Chun Zhu,Shunmuzi Zhou,Xianyi Zeng,Xuyuan Tao,Pascal Bruniaux,Jian Ping Wang
标识
DOI:10.1080/00405000.2023.2201526
摘要
At present, garment e-commerce is developing rapidly, and the number of online shopping has increased significantly. In this context, the intelligent evaluation technology of garment fit is particularly important. Fit is the most basic requirement in the process of human dressing. It is of great significance to study the relationship between garment fit and human movement, garment structure, and fabric properties. In this article, we propose a garment fit evaluation model based on back propagation artificial neural network. This method realizes the evaluation of garment fit without any tryout. The inputs of the model are the anthropometric data, garment pattern and fabric properties, while the output is the prediction result of garment fit (fit or unfit). In order to build and train the model, the input and output data were obtained by experiment. And a total of 284 experimental samples were obtained. Through the real try-on test, the results revealed that this approach can effectively evaluate the fit of garment. It introduces new ideas and methods for the intelligent evaluation of garment fit, and has a certain reference value for the research of intelligent evaluation technology of garment fit.
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