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一种通过整合设计师知识和三维人体测量数据的个性化参数化服装版型智能推荐系统。

An intelligent recommendation system for personalised parametric garment patterns by integrating designer's knowledge and 3D body measurements.

作者信息

Chi Cheng, Zeng Xianyi, Bruniaux Pascal, Tartare Guillaume

机构信息

Wuhan Textile University, Wuhan, China.

Ecole Nationale Superieure des Arts et Industries Textiles, GEMTEX Laboratory, Roubaix, France.

出版信息

Ergonomics. 2025 Mar;68(3):317-337. doi: 10.1080/00140139.2024.2332772. Epub 2024 Mar 28.

DOI:10.1080/00140139.2024.2332772
PMID:38544443
Abstract

Garment pattern-making is one of the most important parts of the apparel industry. However, traditional pattern-making is an experience-based work, very time-consuming and ignores the body shape difference. This paper proposes a parametric design method for garment pattern based on body dimensions acquired from a body scanner and body features (body feature points and three segmented body part shape classification) identified by designers according to their professional knowledge. By using this method, we construct a men's shirt pattern recommendation system oriented to personalised fit. The system consists of two databases and three models. The two databases include a relational database (Database I) and a personalised basic pattern (PBP) database (Database II). The Database I is based on manual and three-dimensional (3D) measurements of human bodies by using designer's knowledge. And Database I is a relational database, which is organised in terms of the relational model of the body part shape and its key body feature dimensions. After a deep analysis of measured data, the irrelevant measured dimensions to human body shape have been excluded by designers and extract representative human body feature dimensions. In addition, the relations between body shapes and previously identified body feature dimensions have been modelled. From the above relational model, we label key feature point positions on the corresponding 3D body model obtained from 3D body scanning and correct the whole 3D human upper body model into the semantically interpretable one. The 3D personalised basic pattern is drawn on the corrected model based on these key feature points. By using three-dimensional to two-dimensional (3D-to-2D) flattening technology, a 2D flatten graph of the 3D personalised basic pattern of the interpretable model is obtained and slightly adjusted to the form suitable for industrial production, i.e., PBP and the PBP database (Database II) is built. In addition, the three models include a basic pattern parametric model (Model I) (characterizing the relations between the basic pattern and its key influencing human dimensions (chest girth and back length)), a regression model (Model II) which enables to infer from basic pattern to PBP for three body parts based on the one-to-one correspondence of key points between the PBPs and the basic patterns and a personalised shirt pattern parametric model (Model III) (characterizing the structural relations between the personalised shirt pattern (PBPshirt) and PBP). The initial input items of the recommendation system are the body dimension constraint parameters, including chest girth, back length and the body feature dimensions used to determine each body part shape as well as three shirt style constraint parameters (slim, regular and loose). By using Model I, the corresponding basic pattern can be generated through the user's chest girth and back length. Body feature dimensions determine the three body parts' shapes. Then, Model II is used to generate the PBP for the corresponding body parts shape. Based on the shirt style chosen by the user, Mode III is used to generate the PBPshirt from the PBP. The output of the recommendation system is a fit-oriented PBPshirt. Moreover, if the PBPshirt is unsatisfactory after a virtual try-on, four adjustable parameters (front side-seam dart, back side-seam dart, waist dart and garment bodice length) are designed to adjust the PBPshirt generated by the proposed recommendation system.

摘要

服装制版是服装行业最重要的环节之一。然而,传统制版是一项基于经验的工作,非常耗时且忽略了体型差异。本文提出了一种基于从人体扫描仪获取的身体尺寸以及设计师根据其专业知识识别出的身体特征(身体特征点和三个身体部位形状分类)的服装版型参数化设计方法。通过使用这种方法,我们构建了一个面向个性化合身的男士衬衫版型推荐系统。该系统由两个数据库和三个模型组成。这两个数据库包括一个关系数据库(数据库I)和一个个性化基本版型(PBP)数据库(数据库II)。数据库I基于设计师利用专业知识对人体进行的手动和三维(3D)测量。并且数据库I是一个关系数据库,它按照身体部位形状及其关键身体特征尺寸的关系模型进行组织。在对测量数据进行深入分析后,设计师排除了与人体形状无关的测量尺寸,并提取了具有代表性的人体特征尺寸。此外,还对身体形状与先前确定的身体特征尺寸之间的关系进行了建模。从上述关系模型中,我们在从3D人体扫描获得的相应3D身体模型上标记关键特征点位置,并将整个3D人体上半身模型校正为语义可解释的模型。基于这些关键特征点,在校正后的模型上绘制3D个性化基本版型。通过使用三维到二维(3D到2D)的展平技术,获得可解释模型的3D个性化基本版型的2D展平图,并对其进行微调以使其适合工业生产形式,即构建PBP和PBP数据库(数据库II)。此外,这三个模型包括一个基本版型参数模型(模型I)(表征基本版型与其关键影响人体尺寸(胸围和背长)之间的关系)、一个回归模型(模型II),该模型能够基于PBP与基本版型之间关键点的一一对应关系,从基本版型推断出三个身体部位的PBP,以及一个个性化衬衫版型参数模型(模型III)(表征个性化衬衫版型(PBPshirt)与PBP之间的结构关系)。推荐系统的初始输入项是身体尺寸约束参数,包括胸围、背长以及用于确定每个身体部位形状的身体特征尺寸,还有三个衬衫款式约束参数(修身、常规和宽松)。通过使用模型I,可以根据用户的胸围和背长生成相应的基本版型。身体特征尺寸决定了三个身体部位的形状。然后,使用模型II为相应的身体部位形状生成PBP。基于用户选择的衬衫款式,使用模型III从PBP生成PBPshirt。推荐系统的输出是一个面向合身的PBPshirt。此外,如果在虚拟试穿后PBPshirt不令人满意,则设计了四个可调节参数(前侧缝褶、后侧缝褶、腰褶和衣身长度)来调整所提出的推荐系统生成的PBPshirt。

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