A Validation Study of a Kinect Based Body Imaging (KBI) Device System Based on ISO 20685:2010

FEDER funds through the Competitive Factors Operational Program (COMPETE) and by national funds through FCT (Portuguese Foundation for Science and Technology) with the projects PEst- C/CTM/U10264 and ID/CEC/00319/2013

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