Application of cluster analysis to fabric classification
Document Type
Article
Publication Date
1-1-1999
Abstract
This paper introduces a new way of classifying clothing fabrics objectively. Representative apparel fabrics were collected and measured by the Kawabata Evaluation System for Fabrics (KES-FB). The disjoint clustering method was used to divide fabrics into four clusters, each representing particular fabric performance and end-use characteristics. These classified clusters were further analyzed applying the method of principal-component analysis to acquire factor patterns that indicate the most important fabric properties for characterizing different fabric end-use. Extracted information from the instrumentally obtained data in terms of fabric physical properties is useful to fabric and garment producers, apparel designers, and consumers in specifying and categorizing fabric products, in insuring proper fabric use, and in controlling fabric purchase.
Publication Source (Journal or Book title)
International Journal of Clothing Science and Technology
First Page
206
Last Page
215
Recommended Citation
Chen, Y., Collier, B., & Collier, J. (1999). Application of cluster analysis to fabric classification. International Journal of Clothing Science and Technology, 11 (4), 206-215. https://doi.org/10.1108/09556229910281966