Treffer: Real performance analysis of drape of virtual cotton fabric based on Style3D.

Title:
Real performance analysis of drape of virtual cotton fabric based on Style3D.
Authors:
Liu, Chen1 (AUTHOR) lcchen21@126.com, Feng, Huafeng1 (AUTHOR) ifenghf@163.com
Source:
International Journal of Clothing Science & Technology. 2025, Vol. 37 Issue 1, p48-59. 12p.
Database:
Business Source Premier

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Purpose: To investigate whether the actual effects of eight drape characteristics of virtual fabrics can be manifested in the Style 3D software. Design/methodology/approach: Image analysis was conducted using MATLAB software to obtain the drape characteristics of virtual fabrics. Pair the drape characteristics of the real and virtual fabrics for difference. The S-W method was used to conduct a normality test to obtain the correlation of paired samples. A paired sample t-test was performed to obtain the significance values. Findings: The simulation restoration performance of the drape coefficient, number of undulations, maximum undulation angle, minimum undulation angle and undulation angle uniformity was good. However, there are differences in the simulation performance of the other three indicators: maximum undulation amplitude, minimum undulation amplitude and undulation amplitude uniformity compared to the drape characteristics of real fabrics. Originality/value: Provides reference value for the improvement of Style3D software in virtual fabric simulation and finds the main influential parameters and their impact levels that contribute to the realistic representation of virtual fabrics in software. It provides a theoretical basis for course teaching in digital fashion. [ABSTRACT FROM AUTHOR]

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