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NTIS 바로가기한국건축시공학회지 = Journal of the Korea Institute of Building Construction, v.21 no.6, 2021년, pp.665 - 676
이재민 (Department of Architecture, Yeungnam University) , 김상용 (Department of Architecture, Yeungnam University) , 김승호 (Department of Architecture, Yeungnam University College)
As the number of deteriorated buildings increases, the importance of safety diagnosis and maintenance of buildings has been rising. Existing visual investigations and building safety diagnosis objectivity and reliability are poor due to their reliance on the subjective judgment of the examiner. Ther...
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