利用机器学习和 3D 人体扫描进行身体测量预测的探索性研究

IF 2.4 4区 管理学 Q3 BUSINESS Clothing and Textiles Research Journal Pub Date : 2024-06-04 DOI:10.1177/0887302x241257914
Yingying Wu, Xuebo Liu, Kristen Morris, Shufang Lu, Hongyu Wu
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引用次数: 0

摘要

在设计适合人体的产品时,获得精确的身体测量数据是至关重要的一步。与传统的手工方法相比,三维人体扫描从根本上提高了人体的可获取性,然而,从三维人体扫描中提取的数据集往往存在缺失值。最近,数据驱动的机器学习(ML)方法在人体测量学研究和服装相关工作中的应用越来越多。然而,对于使用 ML 方法能否准确、高效地预测三维扫描中的缺失数据和难以提取的测量值,这方面的研究还很有限。因此,本探索性研究调查了四种主流 ML 方法在提高三维人体扫描数据集实用性方面的潜在用途。
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An Exploratory Study of Body Measurement Prediction Using Machine Learning and 3D Body Scans
Obtaining accurate body measurements is a critical step when designing products to fit the human body. Compared to traditional manual methods, 3D body scanning has fundamentally enhanced the accessibility of the body, however, the datasets extracted from 3D body scans often have missing values. Recently, the applications of data-driven machine learning (ML) methods in anthropometrics studies and clothing-related work have been increasing. However, there has been limited research on exploring if missing data and difficult-to-extract measurements from 3D scans could be predicted accurately and efficiently by using ML methods. Therefore, this exploratory study investigates the potential use of four mainstream ML methods in improving the usefulness of a 3D body scan dataset.
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来源期刊
CiteScore
5.30
自引率
5.30%
发文量
12
期刊介绍: Published quarterly, Clothing & Textiles Research Journal strives to strengthen the research base in clothing and textiles, facilitate scholarly interchange, demonstrate the interdisciplinary nature of the field, and inspire further research. CTRJ publishes articles in the following areas: •Textiles, fiber, and polymer science •Aesthetics and design •Consumer Theories and Behavior •Social and psychological aspects of dress or educational issues •Historic and cultural aspects of dress •International/retailing/merchandising management and industry analysis
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