Conceptual framework of hybrid style in fashion image datasets for machine learning

IF 2.3 4区 管理学 Q1 MATERIALS SCIENCE, TEXTILES
Hyosun An, Kyo Young Lee, Yerim Choi, Minjung Park
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引用次数: 3

Abstract

Fashion image datasets, in which each fashion image has a label indicating its design attributes and styles, have contributed to the achievement of various machine learning techniques in the fashion industry. Computer vision studies have investigated labeling categories (such as fashion items, colors, materials, details, and styles) to create fashion image datasets for supervised learning. Although a considerable number of fashion image datasets has been developed, different style classification criteria exist because of a lack of understanding concerning fashion style. Since fashion styles reflect various design attributes, multiple styles can often be included in a single outfit. Thus, this study aims to build a Hybrid Style Framework to develop a fashion image dataset that can be efficiently applied to supervised learning. We conducted focus group interviews with six fashion experts to determine fashion style categories with which to classify hybrid styles in fashion images. We developed 1,206,931K-fashion image datasets and analyzed the hybrid style convergence. Finally, we applied the datasets to the machine learning model and verified the accuracy of the computer’s ability to recognize style. Overall, this study concludes that the Hybrid Style Framework and developed K-fashion image datasets are helpful, as they can be applied to data-driven fashion services to offer personalized fashion design solutions.

用于机器学习的时尚图像数据集中混合风格的概念框架
时尚图像数据集,其中每个时尚图像都有一个标签,表明其设计属性和风格,有助于实现时尚行业的各种机器学习技术。计算机视觉研究已经研究了标签类别(如时尚物品、颜色、材料、细节和风格),以创建用于监督学习的时尚图像数据集。虽然已经开发了相当数量的时尚图像数据集,但由于缺乏对时尚风格的理解,存在不同的风格分类标准。由于时尚风格反映了各种设计属性,因此一套服装通常可以包含多种风格。因此,本研究旨在建立一个混合风格框架,以开发一个可以有效应用于监督学习的时尚图像数据集。我们对6位时尚专家进行了焦点小组访谈,以确定时尚风格类别,从而对时尚图像中的混合风格进行分类。我们开发了1,206,931 k时尚图像数据集,并分析了混合风格收敛。最后,我们将数据集应用于机器学习模型,并验证了计算机识别风格能力的准确性。总体而言,本研究得出结论,混合风格框架和开发的K-fashion图像数据集是有帮助的,因为它们可以应用于数据驱动的时尚服务,以提供个性化的时尚设计解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Fashion and Textiles
Fashion and Textiles Business, Management and Accounting-Marketing
CiteScore
4.40
自引率
4.20%
发文量
37
审稿时长
13 weeks
期刊介绍: Fashion and Textiles aims to advance knowledge and to seek new perspectives in the fashion and textiles industry worldwide. We welcome original research articles, reviews, case studies, book reviews and letters to the editor. The scope of the journal includes the following four technical research divisions: Textile Science and Technology: Textile Material Science and Technology; Dyeing and Finishing; Smart and Intelligent Textiles Clothing Science and Technology: Physiology of Clothing/Textile Products; Protective clothing ; Smart and Intelligent clothing; Sportswear; Mass customization ; Apparel manufacturing Economics of Clothing and Textiles/Fashion Business: Management of the Clothing and Textiles Industry; Merchandising; Retailing; Fashion Marketing; Consumer Behavior; Socio-psychology of Fashion Fashion Design and Cultural Study on Fashion: Aesthetic Aspects of Fashion Product or Design Process; Textiles/Clothing/Fashion Design; Fashion Trend; History of Fashion; Costume or Dress; Fashion Theory; Fashion journalism; Fashion exhibition.
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