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Medical Digital Twin-Based Dynamic Virtual Body Capture System

메디컬 디지털 트윈 기반 동적 가상 인체 획득 시스템

  • Kim, Daehwan (VR/AR Content Research Section, Creative Contents Research Division, Electronics Telecommunication Research Institute) ;
  • Kim, Yongwan (VR/AR Content Research Section, Creative Contents Research Division, Electronics Telecommunication Research Institute) ;
  • Lee, Kisuk (VR/AR Content Research Section, Creative Contents Research Division, Electronics Telecommunication Research Institute)
  • Received : 2020.09.21
  • Accepted : 2020.09.24
  • Published : 2020.10.31

Abstract

We present the concept of a Medical Digital Twin (MDT) that can predict and analyze medical diseases using computer simulations and introduce a dynamic virtual body capture system to create it. The MDT is a technology that creates a 3D digital virtual human body by reflecting individual medical and biometric information. The virtual human body is composed of a static virtual human body that reflects an individual's internal and external information and a dynamic virtual human body that reflects his motion. Especially we describe an early version of the dynamic virtual body capture system that enables continuous simulation of musculoskeletal diseases.

Keywords

References

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