人工智能技术更灵活地推荐制服

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Chih-Hao Wen, Chih-Chan Cheng, Y. Shih
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引用次数: 2

摘要

本研究旨在通过数码相机拍摄的二维图像收集人体变量。基于这些人为变量,对台湾军事人员数字化迷彩服(DCU)进行了预测和推荐。设计/方法/方法共招募375名受试者(男性253名;女:122)。在本研究中,OpenPose将拍摄的二维图像转换为四个身体变量,并与卷尺和三维扫描同时进行比较。然后,采用决策树的方法建立DCU的推荐模型。同时,计算制造规范中DCU各尺寸的欧氏距离,作为最佳的三个建议。结果:决策树建立的推荐尺寸仅为0.62和0.63。但是,对于最好的三个选项的推荐结果,DCU Fitting Score可以高达0.8甚至更高。尽管测量体型的方法不同,但OpenPose和3D扫描的结果相关系数最高。这一结果证实了OpenPose具有显著的测量效度。也就是说,廉价的设备可以获得合理的结果。总的来说,本研究提出的方法适合在全球面临Covid-19的情况下,以远距离、非接触、非预标签的方式应用于电子商务和服装行业。特别是可以减少普通用户在网上购买服装时的测量烦恼。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial intelligence technologies for more flexible recommendation in uniforms
PurposeThis research aims to collect human body variables via 2D images captured by digital cameras. Based on those human variables, the forecast and recommendation of the Digital Camouflage Uniforms (DCU) for Taiwan's military personnel are made.Design/methodology/approachA total of 375 subjects are recruited (male: 253; female: 122). In this study, OpenPose converts the photographed 2D images into four body variables, which are compared with those of a tape measure and 3D scanning simultaneously. Then, the recommendation model of the DCU is built by the decision tree. Meanwhile, the Euclidean distance of each size of the DCU in the manufacturing specification is calculated as the best three recommendations.FindingsThe recommended size established by the decision tree is only 0.62 and 0.63. However, for the recommendation result of the best three options, the DCU Fitting Score can be as high as 0.8 or more. The results of OpenPose and 3D scanning have the highest correlation coefficient even though the method of measuring body size is different. This result confirms that OpenPose has significant measurement validity. That is, inexpensive equipment can be used to obtain reasonable results.Originality/valueIn general, the method proposed in this study is suitable for applications in e-commerce and the apparel industry in a long-distance, non-contact and non-pre-labeled manner when the world is facing Covid-19. In particular, it can reduce the measurement troubles of ordinary users when purchasing clothing online.
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来源期刊
Data Technologies and Applications
Data Technologies and Applications Social Sciences-Library and Information Sciences
CiteScore
3.80
自引率
6.20%
发文量
29
期刊介绍: Previously published as: Program Online from: 2018 Subject Area: Information & Knowledge Management, Library Studies
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