Publication:
Deep neural network approach for estimating the three-dimensional human center of mass using joint angles

dc.contributor.authorChebel, Elie
dc.contributor.authorTunc, Burcu
dc.contributor.institutionChebel, Elie, Department of Mechanical Engineering, Bahçeşehir Üniversitesi, Istanbul, Turkey
dc.contributor.institutionTunc, Burcu, Department of Biomedical Engineering, Bahçeşehir Üniversitesi, Istanbul, Turkey
dc.date.accessioned2025-10-05T15:30:11Z
dc.date.issued2021
dc.description.abstractHuman body center of mass location plays an essential role in physical therapy, especially in investigating a subject's capability to maintain balance. However, its estimation can be a very complex, costly, and time-consuming process. To overcome the complexities and reduce the hardware cost, we proposed a deep neural network model to map the measurements of body joint angles to the 3-D center of mass position. We used an inertial measurement units-based motion-capture system (Xsens MVN Awinda) to record the joint angles and center of mass positions of 22 healthy subjects. We divided the subjects into two groups and assigned them either squat or gait tasks. Then, recorded data were merged and fed to the model to increase its generalizability. We evaluated five different input combinations to assess the effect of each input on the accuracy and generalizability of the model. The accuracy and generalizability of the models were evaluated by root-mean-square errors and comparing the differences in errors for different datasets, respectively. Root-mean-square errors ranged from 4.11 mm to 18.39 mm on both training and testing datasets for different models. Besides, adding anthropometric measurements and a Boolean parameter specifying the type of motion contributed significantly to the generalizability of the model. Also, adding unnecessary joint angles had adverse effects on the network's estimations. This study showed that by using deep neural networks, the center of mass estimations could be achieved with high accuracy, and a 17 sensors motion-capture system can be replaced with only five sensors, thus reducing the cost and complexity of the process. © 2021 Elsevier B.V., All rights reserved.
dc.identifier.doi10.1016/j.jbiomech.2021.110648
dc.identifier.issn18732380
dc.identifier.issn00219290
dc.identifier.pubmed34333241
dc.identifier.scopus2-s2.0-85111319938
dc.identifier.urihttps://doi.org/10.1016/j.jbiomech.2021.110648
dc.identifier.urihttps://hdl.handle.net/20.500.14719/9453
dc.identifier.volume126
dc.language.isoen
dc.publisherElsevier Ltd
dc.relation.sourceJournal of Biomechanics
dc.subject.authorkeywordsDeep Neural Networks
dc.subject.authorkeywordsGait
dc.subject.authorkeywordsMapping
dc.subject.authorkeywordsSquat
dc.subject.authorkeywordsThe Center Of Mass Estimation
dc.subject.authorkeywordsXsens Awinda System
dc.subject.authorkeywordsAnthropometry
dc.subject.authorkeywordsComplex Networks
dc.subject.authorkeywordsCost Reduction
dc.subject.authorkeywordsErrors
dc.subject.authorkeywordsMean Square Error
dc.subject.authorkeywordsCenters-of-mass
dc.subject.authorkeywordsGait
dc.subject.authorkeywordsHuman Bodies
dc.subject.authorkeywordsJoint Angle
dc.subject.authorkeywordsMass Position
dc.subject.authorkeywordsMotion Capture System
dc.subject.authorkeywordsNeural-networks
dc.subject.authorkeywordsRoot Mean Square Errors
dc.subject.authorkeywordsSquat
dc.subject.authorkeywordsThe Center Of Mass Estimation
dc.subject.authorkeywordsDeep Neural Networks
dc.subject.authorkeywordsAdolescent
dc.subject.authorkeywordsArticle
dc.subject.authorkeywordsBody Weight
dc.subject.authorkeywordsCenter Of Mass
dc.subject.authorkeywordsClinical Article
dc.subject.authorkeywordsCost Control
dc.subject.authorkeywordsDeep Neural Network
dc.subject.authorkeywordsGait
dc.subject.authorkeywordsHuman
dc.subject.authorkeywordsHuman Experiment
dc.subject.authorkeywordsJoint Angle
dc.subject.authorkeywordsMeasurement Accuracy
dc.subject.authorkeywordsMusculoskeletal System Parameters
dc.subject.authorkeywordsNormal Human
dc.subject.authorkeywordsSquatting (position)
dc.subject.authorkeywordsBiomechanics
dc.subject.authorkeywordsBody Position
dc.subject.authorkeywordsMotion
dc.subject.authorkeywordsBiomechanical Phenomena
dc.subject.authorkeywordsHumans
dc.subject.authorkeywordsMotion
dc.subject.authorkeywordsNeural Networks, Computer
dc.subject.authorkeywordsPosture
dc.subject.indexkeywordsAnthropometry
dc.subject.indexkeywordsComplex networks
dc.subject.indexkeywordsCost reduction
dc.subject.indexkeywordsErrors
dc.subject.indexkeywordsMean square error
dc.subject.indexkeywordsCenters-of-mass
dc.subject.indexkeywordsGait
dc.subject.indexkeywordsHuman bodies
dc.subject.indexkeywordsJoint angle
dc.subject.indexkeywordsMass position
dc.subject.indexkeywordsMotion capture system
dc.subject.indexkeywordsNeural-networks
dc.subject.indexkeywordsRoot mean square errors
dc.subject.indexkeywordsSquat
dc.subject.indexkeywordsThe center of mass estimation
dc.subject.indexkeywordsDeep neural networks
dc.subject.indexkeywordsadolescent
dc.subject.indexkeywordsArticle
dc.subject.indexkeywordsbody weight
dc.subject.indexkeywordscenter of mass
dc.subject.indexkeywordsclinical article
dc.subject.indexkeywordscost control
dc.subject.indexkeywordsdeep neural network
dc.subject.indexkeywordsgait
dc.subject.indexkeywordshuman
dc.subject.indexkeywordshuman experiment
dc.subject.indexkeywordsjoint angle
dc.subject.indexkeywordsmeasurement accuracy
dc.subject.indexkeywordsmusculoskeletal system parameters
dc.subject.indexkeywordsnormal human
dc.subject.indexkeywordssquatting (position)
dc.subject.indexkeywordsbiomechanics
dc.subject.indexkeywordsbody position
dc.subject.indexkeywordsmotion
dc.subject.indexkeywordsBiomechanical Phenomena
dc.subject.indexkeywordsHumans
dc.subject.indexkeywordsMotion
dc.subject.indexkeywordsNeural Networks, Computer
dc.subject.indexkeywordsPosture
dc.titleDeep neural network approach for estimating the three-dimensional human center of mass using joint angles
dc.typeArticle
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dspace.entity.typePublication
local.indexed.atScopus
person.identifier.scopus-author-id57226370212
person.identifier.scopus-author-id57210862521

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