학술논문

Tailoring Garment Fit for Personalized Body Image Enhancement: Insights from Digital Fitting Research
Document Type
article
Source
Journal of Theoretical and Applied Electronic Commerce Research, Vol 19, Iss 2, Pp 942-957 (2024)
Subject
online apparel mass customization
body image perception
computer-aided design
artificial neural network
garment fit
Business
HF5001-6182
Language
English
ISSN
0718-1876
Abstract
In the context of the Fashion Apparel Industry 4.0, a transformative evolution is directed towards the Online Apparel Mass Customization (OAMC) strategy, which provides efficient and personalized apparel product solutions to consumers. A critical challenge within this customization process is the determination of sizes. While existing research addresses comfort evaluation in relation to wearer and garment fit, little attention has been given to how garment fit influences the wearer’s body image, which is also an important purchase consideration. This study investigates the impact of garment fit on the wearer’s body scale perception using quantitative research design. A digital dataset of avatars, clothed in varying sizes of T-shirts, were created for the body scale perception experiment, and an Artificial Neural Network (ANN) model was developed to predict the effect of T-shirt fit on body image. With only a small number of garments and body measurements as inputs, the ANN model can accurately predict the body scales of the clothed persons. It was found that the effect of apparel fit on body image varies depending on the wearer’s gender, body size, and shape. This model can be applied to enhance the online garment shopping experience with respect to personalized body image enhancement.