Optimization of automatic classification for women’s pants based on the swin transformer model

IF 2.3 4区 管理学 Q1 MATERIALS SCIENCE, TEXTILES
Shaoqin Pan, Ping Wang, Chen Yang
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引用次数: 0

Abstract

In the post-pandemic era, integrating e-commerce and deep learning technologies is critical for the fashion industry. Automatic classification of women’s pants presents challenges due to diverse styles and complex backgrounds. This study introduces an optimized Swin Transformer model enhanced by the Global Attention Mechanism (GAM) to improve classification accuracy and robustness. A novel dataset, FEMPANTS, was constructed, containing images of five main trouser styles. Data preprocessing and augmentation were applied to enhance the model's generalization. Experimental results demonstrate that the improved model achieves a classification accuracy of 99.12% and reduces classification loss by 34.6%. GAM enhances the model's ability to capture global and local features, ensuring superior performance in complex scenarios. The research results not only promote the automation process in the fashion industry but also provide references for other complex image classification problems. This study highlights advancements in fashion e-commerce, offering practical applications for inventory management, trend analysis, and personalized recommendations, while paving the way for future innovations in deep learning-based image recognition.

基于swin变压器模型的女式裤子自动分类优化
在后疫情时代,整合电子商务和深度学习技术对时尚产业至关重要。由于款式多样、背景复杂,女性裤子的自动分类面临挑战。为了提高分类精度和鲁棒性,本文引入了一种基于全局注意机制(GAM)的优化Swin Transformer模型。构建了一个新的数据集FEMPANTS,其中包含五种主要裤子样式的图像。采用数据预处理和增强技术增强模型的泛化能力。实验结果表明,改进后的模型分类准确率达到99.12%,分类损失减少34.6%。GAM增强了模型捕捉全局和局部特征的能力,确保了在复杂场景下的卓越性能。研究成果不仅促进了服装行业的自动化进程,也为其他复杂的图像分类问题提供了参考。这项研究强调了时尚电子商务的进步,为库存管理、趋势分析和个性化推荐提供了实际应用,同时为未来基于深度学习的图像识别创新铺平了道路。
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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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