首页> 外文期刊>International Journal of Clothing Science and Technology >Apparel-based deep learning system design for apparel style recommendation
【24h】

Apparel-based deep learning system design for apparel style recommendation

机译:服装风格推荐服装的深度学习系统设计

获取原文
获取原文并翻译 | 示例
           

摘要

Purpose The big challenge in apparel recommendation system research is not the exploration of machine learning technologies in fashion, but to really understand clothes, fashion and people, and know what to learn. The purpose of this paper is to explore an advanced apparel style learning and recommendation system that can recognise deep design-associated features of clothes and learn the connotative meanings conveyed by these features relating to style and the body so that it can make recommendations as a skilled human expert.Design/methodology/approach This study first proposes a type of new clothes style training data. Second, it designs three intelligent apparel-learning models based on newly proposed training data including ATTRIBUTE, MEANING and the raw image data, and compares the models' performances in order to identify the best learning model. For deep learning, two models are introduced to train the prediction model, one is a convolutional neural network joint with the baseline classifier support vector machine and the other is with a newly proposed classifier later kernel fusion.Findings The results show that the most accurate model (with average prediction rate of 88.1 per cent) is the third model that is designed with two steps, one is to predict apparel ATTRIBUTEs through the apparel images, and the other is to further predict apparel MEANINGs based on predicted ATTRIBUTEs. The results indicate that adding the proposed ATTRIBUTE data that captures the deep features of clothes design does improve the model performances (e.g. from 73.5 per cent, Model B to 86 per cent, Model C), and the new concept of apparel recommendation based on style meanings is technically applicable.Originality/value The apparel data and the design of three training models are originally introduced in this study. The proposed methodology can evaluate the pros and cons of different clothes feature extraction approaches through either images or design attributes and balance different machine learning technologies between the latest CNN and traditional SVM.
机译:目的,服装推荐系统研究中的大挑战不是时尚机器学习技术的探索,而是真正了解衣服,时尚和人们,并知道学习的内容。本文的目的是探讨一种先进的服装风格学习和推荐系统,可以识别衣服的深层设计相关特征,并了解这些特征与风格和身体相关的内涵意义,以便它可以提出熟练的建议人类专家.Design/methodology/Approach本研究首先提出了一种新的衣服风格培训数据。其次,它根据新提出的培训数据设计了三种智能服装学习模型,包括属性,含义和原始图像数据,并比较模型的性能以识别最佳学习模型。对于深度学习,引入了两种模型来训练预测模型,一个是一个具有基线分类器支持向量机的卷积神经网络关节,另一个是具有新提出的分类器之后的内核融合。结果表明,结果表明了最准确的模型(平均预测率为88.1%)是用两个步骤设计的第三模型,一个是通过服装图像预测服装属性,另一个是进一步预测基于预测属性的服装含义。结果表明,添加捕获衣服设计的深度特征的建议的属性数据确实改善了模型表演(例如,从73.5%,B模型B到86%,型号C)以及基于样式的服装建议的新概念含义在技术上是适用的。在本研究中最初介绍了服装数据和三种培训模型的设计。所提出的方法可以通过图像或设计属性评估不同衣服特征提取方法的优缺点,并在最新的CNN和传统SVM之间平衡不同的机器学习技术。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号