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Sensors for Gait, Posture, and Health Monitoring Volume 1

Lockhart, Thurmon
Basel, Switzerland: MDPI - Multidisciplinary Digital Publishing Institute, 2020
Online E-Book - 410

Titel:
Sensors for Gait, Posture, and Health Monitoring Volume 1
Autor/in / Beteiligte Person: Lockhart, Thurmon
Link:
Veröffentlichung: Basel, Switzerland: MDPI - Multidisciplinary Digital Publishing Institute, 2020
Medientyp: E-Book
Umfang: 410
ISBN: 978-3-03936-342-1 (print) ; 978-3-03936-343-8 (print)
DOI: 10.3390/books978-3-03936-343-8
Schlagwort:
  • step detection
  • machine learning
  • outlier detection
  • transition matrices
  • autoencoders
  • ground reaction force (GRF)
  • micro electro mechanical systems (MEMS)
  • gait
  • walk
  • bipedal locomotion
  • 3-axis force sensor
  • shoe
  • force distribution
  • multi-sensor gait classification
  • distributed compressed sensing
  • joint sparse representation classification
  • telemonitoring of gait
  • operating range
  • accelerometer
  • stride length
  • peak tibial acceleration
  • running velocity
  • wearable sensors
  • feedback technology
  • rehabilitation
  • motor control
  • cerebral palsy
  • inertial sensors
  • gait events
  • spatiotemporal parameters
  • postural control
  • falls in the elderly
  • fall risk assessment
  • low-cost instrumented insoles
  • foot plantar center of pressure
  • flexible sensor
  • gait recognition
  • piezoelectric material
  • wearable
  • adaptability
  • force sensitive resistors
  • self-tuning triple threshold algorithm
  • sweat sensor
  • sweat rate
  • dehydration
  • IoT
  • PDMS
  • surface electromyography
  • handgrip force
  • force-varying muscle contraction
  • nonlinear analysis
  • wavelet scale selection
  • inertial measurement unit
  • gyroscope
  • asymmetry
  • feature extraction
  • gait analysis
  • lower limb prosthesis
  • trans-femoral amputee
  • MR damper
  • knee damping control
  • inertial measurement units
  • motion analysis
  • kinematics
  • functional activity
  • repeatability
  • reliability
  • biomechanics
  • cognitive frailty
  • cognitive–motor impairment
  • Alzheimer’s disease
  • motor planning error
  • instrumented trail-making task
  • ankle reaching task
  • dual task walking
  • nondestructive
  • joint moment
  • partial weight loading
  • muscle contributions
  • sit-to-stand training
  • motion parameters
  • step length
  • self-adaptation
  • Parkinson’s disease (PD)
  • tremor dominant (TD)
  • postural instability and gait difficulty (PIGD)
  • center of pressure (COP)
  • fast Fourier transform (FFT)
  • wavelet transform (WT)
  • fall detection system
  • smartphones
  • accelerometers
  • machine learning algorithms
  • supervised learning
  • ANOVA analysis
  • Step-detection
  • ActiGraph
  • Pedometer
  • acceleration
  • physical activity
  • physical function
  • physical performance test
  • chair stand
  • sit to stand transfer
  • wearables
  • gyroscopes
  • e-Health application
  • physical rehabilitation
  • shear and plantar pressure sensor
  • biaxial optical fiber sensor
  • multiplexed fiber Bragg gratings
  • frailty
  • pre-frail
  • wearable sensor
  • sedentary behavior
  • moderate-to-vigorous activity
  • steps
  • fall detection
  • elderly people monitoring
  • telerehabilitation
  • virtual therapy
  • Kinect
  • eHealth
  • telemedicine
  • insole
  • injury prevention
  • biomechanical gait variable estimation
  • inertial gait variable
  • total knee arthroplasty
  • falls in healthy elderly
  • fall prevention
  • biometrics
  • human gait recognition
  • ground reaction forces
  • Microsoft Kinect
  • high heels
  • fusion data
  • ensemble classifiers
  • accidental falls
  • older adults
  • neural networks
  • convolutional neural network
  • long short-term memory
  • accelerometry
  • obesity
  • nonlinear
  • electrostatic field sensing
  • gait measurement
  • temporal parameters
  • artificial neural network
  • propulsion
  • aging
  • walking
  • smart footwear
  • frailty prediction
  • fall risk
  • smartphone based assessments
  • adverse post-operative outcome
  • intelligent surveillance systems
  • human fall detection
  • health and well-being
  • safety and security
  • movement control
  • anterior cruciate ligament
  • kinetics
  • real-time feedback
  • biomechanical gait features
  • impaired gait classification
  • pattern recognition
  • sensors
  • clinical
  • knee
  • osteoarthritis
  • shear stress
  • callus
  • woman
  • TUG
  • IMU
  • geriatric assessment
  • semi-unsupervised
  • self-assessment
  • domestic environment
  • functional decline
  • symmetry
  • trunk movement
  • autocorrelation
  • gait rehabilitation
  • wearable device
  • IMU sensors
  • gait classification
  • stroke patients
  • neurological disorders
  • scanning laser rangefinders (SLR), GAITRite
  • cadence
  • velocity and stride-length
  • power
  • angular velocity
  • human motion measurement
  • sensor fusion
  • complementary filter
  • fuzzy logic
  • inertial and magnetic sensors
  • ESOQ-2
  • Parkinson’s disease
  • UPDRS
  • movement disorders
  • human computer interface
  • RGB-Depth
  • hand tracking
  • automated assessment
  • at-home monitoring
  • Parkinson’s Diseases
  • motorized walker
  • haptic cue
  • gait pattern
  • statistics study
  • walk detection
  • step counting
  • signal processing
  • plantar pressure
  • flat foot
  • insoles
  • force sensors
  • arch index
  • sports analytics
  • deep learning
  • classification
  • inertial sensor
  • cross-country skiing
  • classical style
  • skating style
  • batteryless strain sensor
  • wireless strain sensor
  • resonant frequency modulation
  • Ecoflex
  • human activity recognition
  • smartphone
  • human daily activity
  • ensemble method
  • running
  • velocity
  • smart shoe
  • concussion
  • inertial motion units (IMUs)
  • vestibular exercises
  • validation
  • motion capture
  • user intent recognition
  • transfemoral prosthesis
  • multi-objective optimization
  • biogeography-based optimization
  • smart cane
  • weight-bearing
  • health monitoring
  • wearable/inertial sensors
  • regularity
  • variability
  • human
  • motion
  • locomotion
  • UPDRS tasks
  • posture
  • postural stability
  • center of mass
  • RGB-depth
  • neurorehabilitation
  • hallux abductus valgus
  • high heel
  • proximal phalanx of the hallux
  • abduction
  • valgus
  • ultrasonography
  • Achilles tendon
  • diagnostic
  • imaging
  • tendinopathy
  • foot insoles
  • electromyography
  • joint instability
  • muscle contractions
  • motorcycling
  • wearable electronic devices
  • validity
  • relative movement
  • lower limb prosthetics
  • biomechanic measurement tasks
  • quantifying socket fit
  • rehabilitation exercise
  • dynamic time warping
  • automatic coaching
  • exergame
  • fine-wire intramuscular EMG electrode
  • non-human primate model
  • traumatic spinal cord injury
  • wavelet transform
  • relative power
  • linear mixed model
  • VO2
  • calibration
  • MET
  • VO2net
  • speed
  • equivalent speed
  • free-living
  • children
  • adolescents
  • adults
  • gait event detection
  • hemiplegic gait
  • appropriate mother wavelet
  • acceleration signal
  • wavelet-selection criteria
  • conductive textile
  • stroke
  • hemiparetic
  • real-time monitoring
  • lower limb locomotion activity
  • triplet Markov model
  • semi-Markov model
  • on-line EM algorithm
  • human kinematics
  • phase difference angle
  • thema EDItEUR:T Technology, Engineering, Agriculture, Industrial processes:TB Technology: general issues:TBX History of engineering and technology
Sonstiges:
  • Nachgewiesen in: Directory of Open Access Books
  • Sprachen: English
  • Document Type: eBook
  • File Description: application/octet-stream
  • Language: English
  • Rights: Attribution 4.0 International ; URL: https://creativecommons.org/licenses/by/4.0/
  • Notes: ONIX_20210501_9783039363421_380

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