Design Supporting System for Textile Product Development Based on Human Sensibility Ergonomics

소재설계를 위한 감성공학적 디자인 지원 시스템 개발

  • 나영주 (인하대학교 생활과학대학 의류디자인학과) ;
  • 정경용 (인하대학교 공과대학 전자계산공학과)
  • Published : 2003.06.01

Abstract

To improve objectiveness of consumer's sensibility we developed the Textile Design Recommendation System, which shows textile designs according to consumer's preference. We set up the system with efficiency in the user interface model. To design textiles objectively, consumers' sensibility and preferences were measured through world-wide web and the averaged sensibility was connected to textile images. We established the database for textile images, which has the connection mechanism to consumer's sensibility, and suggested a proper model for cyber product with visualized shape through user-manipulated keys. As a tool for the objective human sensibility design to meet the consumer needs, it will help to develop high quality textile products with higher efficiency and reduced developing cost.

Keywords

References

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