Publication | Closed Access
Use of multi-objective optimization for digital human posture prediction
52
Citations
34
References
2009
Year
Upright PosturePhysical ActivityEngineeringMachine LearningHuman Pose Estimation3D Pose EstimationBiometricsWearable TechnologyMovement Biomechanics3D Body ScanningKinesiologyVirtual HumansAffective ComputingKinematicsHuman MotionHealth SciencesPhysical MedicineOccupational ErgonomicsDesignRehabilitationMulti-objective OptimizationPosture PredictionPotential EnergyBody ComfortHuman Movement
With sufficient fidelity, the use of virtual humans can save time, money, and lives through improved product design, process design, and understanding of behaviour. Optimization-based posture prediction is a unique tool, and this article presents a study that advances posture prediction with a multi-objective optimization (MOO) approach. MOO is used to both develop and combine the following human performance measures: joint displacement; musculoskeletal discomfort; and a variation on potential energy. The following MOO methods are studied in the context of human modelling: objective sum; min–max; and global criterion. Using MOO yields realistic results. Of the independent performance measures, discomfort generally provides the most accurate postures. Potential energy, however, is not a significant factor in governing human posture and should be combined with other performance measures. The three MOO methods for combining performance measures yield similar results, but the objective sum provides slightly more realistic postures.
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