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논문 기본 정보

자료유형
학술저널
저자정보
김은정 (전남대학교 의류학과)
저널정보
대한가정학회 대한가정학회지 대한가정학회지 제44권 제2호
발행연도
2006.1
수록면
49 - 59 (11page)

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초록· 키워드

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Mourning culture has tended to be reduced to mere empty formalities with more simplified regulations. Changes in modern life style make it difficult to perform extended mourning ceremonies and the venues for mourning ceremony have shifted from private homes to chapels of rest in hospitals or Funeral Homes. Mourning clothing, the symbol of filial duty, has gradually been changed in shape. The study purposes were to research in the shapes of modern mourning clothing through field study on mourning clothing manufacturers and to compare traditional mourning clothing with the modern varieties through the actual making of traditional male mourning clothing based on old regulations. The study of mourning clothing through actual making prevents transformation and provides practical research data. The study methods were inquiry into old documents, field study, and actual clothing making. The study results are as follows. First, in terms of shape, traditional and modern mourning clothing are different in Garyeong, Lim and Daehacheok of Choiui. In case of Choisang, traditional clothing has one central plait in its front and rear sides while modern clothing one has 3 single plaits in each side. Second, in terms of sewing, traditional mourning clothing leaves an exterior margin to sew up in Choiui and an internal one in Choisang. However, modern mourning clothing has various types of sewing and plaits depending on the manufacturers and all sewing is done by machine. Third, in terms of material, traditional mourning clothing is made of Korean hemp and features narrow width, while modern clothing is made of Chinese hemp and features broad width.

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