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. 2022 Jan 3;8:749274. doi: 10.3389/frobt.2021.749274

TABLE 5.

SG in sports.

Reference Algorithm Data Collection/Input AI Task/Output
Taborri et al. (2021) Linear SVM 96% N = 39, inertial sensors, and optoelectronic bars ACL risk prediction in female basketball players via LESS score
Johnson et al. (2021) CNN, not enough accuracy Wearable accelerometer predict near real-time GRF/Ms from kinematic data
Nguyen et al. (2020) CNN 7 IMU’s Gait classification: athlete vs. foot abnormalities
Guo and Wang, (2021) TS-DBN Public datasets of videos KTH and UCF HAR/sports behavior recognition
Gholami et al. (2020) CNN shoe-mounted accelerometer Abnormal running kinematics Activity recognition
Cronin et al. (2019) DeepLabCut single GoPro camera Markerless 2D kinematic analysis of underwater running
Kang et al. (2018) FFT Smartphone (unconstrained) Detects walking, counts steps, irrespective of phone placement
Onodera et al. (2017) ANN with IG infrared cameras and force plates Influence of shoe midsole resilience and upper structure on running kinematics and kinetics
Sundholm et al. (2014) KNN with DTW pressure sensor mat Exercise detection and exercise count

Legend: Fast Fourier Transform (FFT), Time-Space Deep Belief Network (TS-DBN), Landing Error Score System (LESS), Ground Reaction Forces and Moments (GRF/M), DeepLabCut as in (Mathis et al., 2018).

Datasets: Royal Institute of Technology (KTH) (Jaouedi et al., 2020) and University of Central Florida (UCF) (Perera et al., 2019).