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http://dx.doi.org/10.7583/JKGS.2021.21.5.41

Mobile Augmented Visualization Technology Using Vive Tracker  

Lee, Dong-Chun (ETRI(Electronics and Telecommunications Research Institute))
Kim, Hang-Kee (ETRI(Electronics and Telecommunications Research Institute))
Lee, Ki-Suk (ETRI(Electronics and Telecommunications Research Institute))
Abstract
This paper introduces a mobile augmented visualization technology that augments a three-dimensional virtual human body on a mannequin model using two pose(position and rotation) tracking sensors. The conventional camera tracking technology used for augmented visualization has the disadvantage of failing to calculate the camera pose when the camera shakes or moves quickly because it uses the camera image, but using a pose tracking sensor can overcome this disadvantage. Also, even if the position of the mannequin is changed or rotated, augmented visualization is possible using the data of the pose tracking sensor attached to the mannequin, and above all there is no load for camera tracking.
Keywords
Vive tracker; Augmented reality; Mobile augmented reality;
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