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A relation between dynamic strength and manual materials-handling strategy affected by knowledge of strengthCan relative strength between the back and knees differentiate lifting strategy?Deformable models with sparsity constraints for cardiac motion analysis.Integrating dynamic stereo-radiography and surface-based motion data for subject-specific musculoskeletal dynamic modelingMapping ligament insertion sites onto bone surfaces in knee by co-registration of CT and digitization data.Automating analyses of the distal femur articular geometry based on three-dimensional surface data.Gender and condylar differences in distal femur morphometry clarified by automated computer analysesA Novel Screening Technique for Ulnar-Sided Carpometacarpal Dislocations.Clinical Risk Factors for Orthostatic Hypotension: Results Among Elderly Fallers in Long-Term Care.Computerized 3D morphological analysis of glenoid orientation.Using a marker-less method for estimating L5/S1 moments during symmetrical lifting.A novel two-stage framework for musculoskeletal dynamic modeling: an application to multifingered hand movement.Transformation between different local coordinate systems of the scapula.Shoe-Floor Interactions in Human Walking with Slips: Modeling and Experiments.A computer vision based method for 3D posture estimation of symmetrical lifting.Large-scale Exploration of Neuronal Morphologies Using Deep Learning and Augmented Reality.Optimizing the Care Coordinator Role in Primary Care: A Qualitative Case Study.A probabilistic finger biodynamic model better depicts the roles of the flexors during unloaded flexionCollaborative multi organ segmentation by integrating deformable and graphical modelsA Deep Neural Network-based method for estimation of 3D lifting motionsVertebrae Identification and Localization Utilizing Fully Convolutional Networks and a Hidden Markov ModelTowards Efficient U-Nets: A Coupled and Quantized Approach
P50
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P50
description
onderzoeker
@nl
researcher ORCID: 0000-0002-8136-9816
@en
name
Kang Li
@ast
Kang Li
@en
Kang Li
@es
Kang Li
@nl
Kang Li
@sl
type
label
Kang Li
@ast
Kang Li
@en
Kang Li
@es
Kang Li
@nl
Kang Li
@sl
prefLabel
Kang Li
@ast
Kang Li
@en
Kang Li
@es
Kang Li
@nl
Kang Li
@sl
P214
P106
P1153
55343288900
P214
P2456
P31
P496
0000-0002-8136-9816