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Articles

An efficient procedure for locating joint centers on 3D scanned human models: using hip joint centers as an example

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Pages 457-464 | Received 21 Apr 2015, Accepted 27 Jul 2015, Published online: 23 Sep 2015
 

Abstract

This paper presents an efficient procedure to locate joint centers on 3D scanned human models. Using the hip joint centers (HJCs) as an example, we conducted an experiment to study the validity of the procedure. We carried out 3D body scanning on six subjects, which were attached with the necessary body landmarks. Another 12 participants were recruited to perform two tasks. The first task was to identify the locations of the body landmarks. We pre-programmed the estimation method to an in-house rigging system. The lower body bones were then placed by the system according to the estimated HJCs. The second task was to place the lower body bones based on visual judgments. The results show that the HJCs obtained in the first task are more accurate. The results are also visually demonstrated. The promising results of the experiment indicate the possibility of building skeletal structures with 3D body scanning.

Disclosure statement

No potential conflict of interest was reported by the authors.

Additional information

Funding

This work is partially funded by the Healthy Aging Research Center [Fund No: EMRPD1E1691] in Chang Gung University in Taiwan.

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