Basketball player motion detection and motion mode analysis based on biomechanical sensors

  • Long Liu School of Health Care, Chongqing Preschool Education College, Chongqing 404047, China
  • Yucui Pu School of Health Care, Chongqing Preschool Education College, Chongqing 404047, China
Keywords: basketball player; motion stage detection; Gadget; biomechanical sensors
Ariticle ID: 354

Abstract

Basketball player motion detection and analysis are crucial for optimizing performance and preventing injuries. Traditional methods often rely on visual observation and video analysis, lacking precision and real-time feedback. In this study, a unique novel Intelligent Bayesian tuned-augmented Support Vector Machine (IB-ASVM) was proposed for predicting basketball players’ motion modes and performance analysis using the biomechanical sensor data. Advancements in biomechanical sensors such as accelerometers, gyroscopes, and force sensors are deployed into ESP32 to build a player’s wearable gadget. This gadget provides dynamic players with real-time sensing data. Data are transmitted to the cloud via Wi-Fi 7.0 for motion analysis and this model is stimulated using Arduino IDE. The Kalman Filter reduces noise and smoothens sensor data such as acceleration, and angular velocity. Then, the filtered data is employed in the Discrete Wavelet Transform (DWT) to capture time-frequency characteristics of motion signals, making it ideal for extracting relevant features. The featured data are utilized in the ASVM model to classify and detect the motion modes of the basketball players via IB optimization. The Tensor Flow software is used to implement the IB-ASVM model. The result demonstrates that IB-ASVM most accurately predicts the jump shot, layup, dribbling, running, pivoting, passing, free throw, and motion states of the basketball players. The IB-ASVM model accurately classifies basketball motion states using biomechanical sensor data, enhancing performance optimization and injury prevention through precise motion detection.

References

1. Guo R, Chen B, Li Y, et al. Deep Learning Methods to Analyze the Forces and Torques in Joints Motion. Applied Sciences. 2024; 14(15): 6846. doi: 10.3390/app14156846

2. Li J, Zhang X, Yang G. The Biomechanical Analysis on the Tennis Batting Angle Selection Under Deep Learning. IEEE Access. 2023; 11: 97758–97768. doi: 10.1109/access.2023.3313167

3. Zare E, Mohammadi SM, Abbasi Kesbi R. A Portable Motion Sensor to Measure the Movements of Runners for Biomechanics Analysis. Journal of Bioengineering Research. 2020; 2(4): 12–22. doi: 10.22034/jbr.2020.253869.1036

4. Hendry D, Leadbetter R, McKee K, et al. An Exploration of Machine-Learning Estimation of Ground Reaction Force from Wearable Sensor Data. Sensors. 2020; 20(3): 740. doi: 10.3390/s20030740

5. Brumann C, Kukuk M, Reinsberger C. Evaluation of Open-Source and Pre-Trained Deep Convolutional Neural Networks Suitable for Player Detection and Motion Analysis in Squash. Sensors. 2021; 21(13): 4550. doi: 10.3390/s21134550

6. Wen L, Nie M, Chen P, et al. Wearable multimode sensor with a seamless integrated structure for recognition of different joint motion states with the assistance of a deep learning algorithm. Microsystems & Nanoengineering. 2022; 8(1): 24. doi: 10.1038/s41378-022-00358-2

7. Lu S, Zhang X, Wang J, et al. An IoT-Based Motion Tracking System for Next-Generation Foot-Related Sports Training and Talent Selection. Chen CH, ed. Journal of Healthcare Engineering. 2021; 2021: 1–14. doi: 10.1155/2021/9958256

8. Edriss S, Romagnoli C, Caprioli L, et al. The Role of Emergent Technologies in the Dynamic and Kinematic Assessment of Human Movement in Sport and Clinical Applications. Applied Sciences. 2024; 14(3): 1012. doi: 10.3390/app14031012

9. Tedesco S, Crowe C, Ryan A, et al. Motion Sensors-Based Machine Learning Approach for the Identification of Anterior Cruciate Ligament Gait Patterns in On-the-Field Activities in Rugby Players. Sensors. 2020; 20(11): 3029. doi: 10.3390/s20113029

10. Giles B, Kovalchik S, Reid M. A machine learning approach for automatic detection and classification of changes of direction from player tracking data in professional tennis. Journal of Sports Sciences. 2020; 38(1): 106–113. doi: 10.1080/02640414.2019.1684132

11. Li Z. Feature Extraction and Data Analysis of Basketball Motion Postures: Acquisition With an Inertial Sensor. Journal of Engineering and Science in Medical Diagnostics and Therapy. 2021; 4(4): 041006. doi: 10.1115/1.4052311

12. Hu X, Mo S, Qu X. Basketball Activity Classification Based on Upper Body Kinematics and Dynamic Time Warping. International Journal of Sports Medicine. 2020; 41(04): 255–263. doi: 10.1055/a-1065-2044

13. Chen Z, Zhang G. CNN sensor based motion capture system application in basketball training and injury prevention. Preventive Medicine. 2023; 174: 107644. doi: 10.1016/j.ypmed.2023.107644

14. Guo X, Brown E, Chan PPK, et al. Skill Level Classification in Basketball Free-Throws Using a Single Inertial Sensor. Applied Sciences. 2023; 13(9): 5401. doi: 10.3390/app13095401

15. Zhao Y, Wang X, Li J, et al. Using IoT Smart Basketball and Wristband Motion Data to Quantitatively Evaluate Action Indicators for Basketball Shooting. Advanced Intelligent Systems. 2023; 5(12). doi: 10.1002/aisy.202300239

16. Guembe IP, Lopez-Iturri P, Astrain JJ, et al. Basketball Player On-Body Biophysical and Environmental Parameter Monitoring Based on Wireless Sensor Network Integration. IEEE Access. 2021; 9: 27051–27066. doi: 10.1109/access.2021.3054990

17. Taborri J, Molinaro L, Santospagnuolo A, et al. A Machine-Learning Approach to Measure the Anterior Cruciate Ligament Injury Risk in Female Basketball Players. Sensors. 2021; 21(9): 3141. doi: 10.3390/s21093141

18. Fan J, Bi S, Xu R, et al. Hybrid lightweight Deep-learning model for Sensor-fusion basketball Shooting-posture recognition. Measurement. 2022; 189: 110595. doi: 10.1016/j.measurement.2021.110595

19. Tedesco S, Crowe C, Ryan A, et al. Motion Sensors-Based Machine Learning Approach for the Identification of Anterior Cruciate Ligament Gait Patterns in On-the-Field Activities in Rugby Players. Sensors. 2020; 20(11): 3029. doi: 10.3390/s20113029

20. Zhang L. Applying Deep Learning-Based Human Motion Recognition System in Sports Competition. Frontiers in Neurorobotics. 2022; 16. doi: 10.3389/fnbot.2022.860981

21. Johnson WR, Mian A, Robinson MA, et al. Multidimensional Ground Reaction Forces and Moments From Wearable Sensor Accelerations via Deep Learning. IEEE Transactions on Biomedical Engineering. 2021; 68(1): 289–297. doi: 10.1109/tbme.2020.3006158

22. Derungs A, Amft O. Estimating wearable motion sensor performance from personal biomechanical models and sensor data synthesis. Scientific Reports. 2020; 10(1): 11450. doi: 10.1038/s41598-020-68225-6

23. Lisca G, Prodaniuc C, Grauschopf T, et al. Less Is More: Learning Insights From a Single Motion Sensor for Accurate and Explainable Soccer Goalkeeper Kinematics. IEEE Sensors Journal. 2021; 21(18): 20375–20387. doi: 10.1109/jsen.2021.3094929

24. Xie Q, Jin N, Lu S. Lightweight Football Motion Recognition and Intensity Analysis Using Low-Cost Wearable Sensors. In: Applied Bionics and Biomechanics. Wiley; 2023.

25. Xiao J, Tian W, Ding L. Basketball Action Recognition Method of Deep Neural Network Based on Dynamic Residual Attention Mechanism. Information. 2022; 14(1): 13. doi: 10.3390/info14010013

Published
2024-11-06
How to Cite
Liu, L., & Pu, Y. (2024). Basketball player motion detection and motion mode analysis based on biomechanical sensors. Molecular & Cellular Biomechanics, 21(2), 354. https://doi.org/10.62617/mcb.v21i2.354
Section
Article