BIM-based Image Dataset Generation Technology for Construction Site Using Generative AI

생성형 AI를 활용한 BIM 기반 건설현장 영상데이터 생성기술

  • 김형수 (한국과학기술원 응용과학연구소)
  • Published : 2024.03.15

Abstract

Keywords

References

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