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Benchmarking Foot Trajectory Estimation Methods for Mobile Gait Analysis.Towards Mobile Gait Analysis: Concurrent Validity and Test-Retest Reliability of an Inertial Measurement System for the Assessment of Spatio-Temporal Gait ParametersMobile Stride Length Estimation with Deep Convolutional Neural Networks.Reference-Free Adjustment of Respiratory Inductance Plethysmography for Measurements during Physical Exercise.Diving Into Research of Biomedical Engineering in Scuba Diving.Quantification of Nighttime Micturition With an Ambulatory Sensor-Based System.Smart Annotation of Cyclic Data Using Hierarchical Hidden Markov Models.Segmentation of Gait Sequences in Sensor-Based Movement Analysis: A Comparison of Methods in Parkinson's Disease.Self-Powered Multiparameter Health Sensor.Sensor-based gait analysis of individualized improvement during apomorphine titration in Parkinson’s diseasePre-operative sensor-based gait parameters predict functional outcome after total knee arthroplastySpecial Issue on Wearable Computing and Machine Learning for Applications in Sports, Health, and Medical EngineeringWearable Current-Based ECG Monitoring System with Non-Insulated Electrodes for Underwater ApplicationAn Overview of Smart Shoes in the Internet of Health Things: Gait and Mobility Assessment in Health Promotion and Disease MonitoringComparison of Different Algorithms for Calculating Velocity and Stride Length in Running Using Inertial Measurement UnitsTreadmill exercise intervention improves gait and postural control in alpha-synuclein mouse models without inducing cerebral autophagyAnkle angle variability during running in athletes with chronic ankle instability and copersA Novel Mobile Phone App (OncoFood) to Record and Optimize the Dietary Behavior of Oncologic Patients: Pilot StudyOn Providing Multi-Level Quality of Service for Operating Rooms of the FutureHidden Markov Model-Based Smart Annotation for Benchmark Cyclic Activity Recognition Database Using WearablesMultimodal Assessment of Parkinson's Disease: A Deep Learning ApproachTurning Analysis during Standardized Test Using On-Shoe Wearable Sensors in Parkinson's DiseaseIndoor Trajectory Reconstruction of Walking, Jogging, and Running Activities Based on a Foot-Mounted Inertial Pedestrian Dead-Reckoning System
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description
hulumtues
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հետազոտող
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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Bjoern M Eskofier
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P106
P21
P2456
P2798
P31
P4012
P496
0000-0002-0417-0336