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. 2023 Feb 7;23(4):1856. doi: 10.3390/s23041856

Table 6.

Table summarizing the datasets previously discussed, classified according to the number of participants, the acquisition system, the detected parameters, and the suggested application.

Dataset Provided by No of
Participants
Parameters Approach MoCap System
Details
Suggested
Application
UI–PRMD
[125]
University of
Idaho
10 Locations and angular orientations of the body joints Vision-based Vicon optical trackers
Kinect cameras
Monitoring rehabilitation exercises
KIMORE
[126]
Marche
Polytechnic
University
78 Joint
locations
Vision-based Kinect
cameras
Detection motor dysfunction
M. Capecci et al.
[127]
Marche
Polytechnic
University
7 Joint
locations
Vision-based Kinect v1 Evaluation of karate moves
Daily and sports activities data set
[128]
Bilkent
University
8 Inertial
data
Sensor-based Inertial sensors (25 Hz sampling frequency) Activity
recognition
Human
Activity recognition using smartphones data set
[129]
University of Genoa 30 Inertial
data
Sensor-based Smartphone
(Samsung Galaxy S II)
Activity
recognition
MoVi dataset
[130]
York
University
90 Camera images,
joint locations,
inertial data
Vision-based
Sensor-based
15 cameras
(Qualisys Oqus 300 and 310)
2 stationary cameras (RGB Grasshopper2)
2 hand-held cameras (iPhone 7)
17 IMU sensors
(Noitom Neuron Edition V2)
Motion
recognition
Gait in aging and disease database
[131]
PhysioBank 15 Stride interval Sensor-based Force-sensitive resistors Normal gait and Parkinson’s disease analysis
MIT database
[132]
MIT 24 View, time Vision-based Sony Handycam Gait
recognition
Georgia Tech
[133]
Georgia Tech 20 View, time, distance Vision-based - Gait
recognition