Research Article

Edge Artificial Intelligence: Real-Time Noninvasive Technique for Vital Signs of Myocardial Infarction Recognition Using Jetson Nano

Table 1

Fall detection techniques.

AuthorDatasetsNo. of subjects (age)SensorAlgorithms

Saleh and Jeannès [28]Simulated23 (19–30), 15 (60–75)Accelerometer (waist)SVM
Zitouni et al. [29]Simulated6 (N/A)Accelerometer (sole)Threshold
Wu et al. [30]Public (simulated)42 (N/A), 36 (N/A)Accelerometer (chest and thigh)Decision tree
Huang et al. [31]Simulated12 (19–29)VibrationHMM
Tian et al. [32]Simulated140 (N/A)FMCW radioCNN
Wang et al. [33]SimulatedN/AWiFiSVM, Random Forests
Kerdjidj et al. [34]Simulated17 (N/A)Accelerometer, gyroscopeCompressive sensing
Queralta et al. [35]Public (simulated)57 (20–47)Accelerometer, gyroscope, magnetometerLTSM
Han et al. [36]SimulatedN/AWeb cameraCNN
Kong et al. [37]PublicPublicCamera (surveillance)CNN
Ko et al. [38]SimulatedN/ACamera (smartphone)Rao-Blackwellized particle filtering
Shojaei-Hashemi et al. [39]Public (simulated)40 (10–15)KinectLSTM
Min et al. [40]Public (simulated)4 (N/A), 11 (22–39)KinectSVM
Ozcan et al. [41]Simulated10 (24–31)Web cameraRelative-entropy-based