This work is licensed under the Creative Commons Attribution 4.0 International License.
Yu, H., Mars, H. V. D., Hastie, P. A., & Kulinna, P. H. (2021). Incorporating a motion analysis app in middle school badminton unit. Journal of Teaching in Physical Education, 1–9.Search in Google Scholar
Chow, D. H. K., & Li, S. S. W. (2021). Effects of sport imagery training and imagery ability on badminton service return in a secondary-school physical education setting. International journal of sport psychology (3), 52.Search in Google Scholar
Ye, H. (2023). Intelligent image processing technology for badminton robot under machine vision of internet of things. International journal of humanoid robotics(6), 20.Search in Google Scholar
Hastie, P. A., Wang, W., Liu, H., & He, Y. (2021). The effects of play practice instruction on the badminton content knowledge of a cohort of chinese physical education majors. Journal of Teaching in Physical Education, 1–9.Search in Google Scholar
Tian, Z. (2015). Research on the principles of interactive teaching and practice teaching with the applications on badminton education in colleges. International Journal of Technology, Management(012), 000.Search in Google Scholar
LiYingda. (2021). Simplified beam element model of badminton batting process based on motion differential equation. Complexity.Search in Google Scholar
Hui, Z., Jing, C., & Taining, W. (2022). Research on simulation analysis of physical training based on deep learning algorithm. Scientific Programming, 2022, 1–11.Search in Google Scholar
Lin, Y. N., Hsia, L. H., & Hwang, G. J. (2022). Fostering motor skills in physical education: a mobile technology-supported icra flipped learning model. Computers & education(Feb.), 177.Search in Google Scholar
Nolasco, S., Amaro, C. M., Roseiro, L., Castro, M. A., & Amaro, A. M. (2022). Hand-arm vibration assessment in badminton athletes during three different movements using two rackets. International Journal of Industrial Ergonomics(88-), 88.Search in Google Scholar
Miguel A. Gómez, Adrián Cid, Rivas, F., Júlia Barreira, & Prieto, J. (2021). Dynamic analysis of scoring performance in elite men’s badminton according to contextual-related variables. Chaos Solitons & Fractals, 151(2), 111295.Search in Google Scholar
Liang, Z., Yin, D., Liu, T., Zhu, Z., Lin, H., & Jin, H. (2021). High perceptual sensitivity to global motion in badminton players. International journal of sport psychology(1), 52.Search in Google Scholar
Li, C. (2020). Badminton motion capture with visual image detection of picking robotics. International Journal of Advanced Robotic Systems, 17(6), 172988142096907.Search in Google Scholar
Qi, Y. (2020). Research on badminton action feature recognition based on improved hmm model. Journal of Intelligent and Fuzzy Systems, 39(4), 5571–5582.Search in Google Scholar
Zhang, S. (2020). Effects of fatigue on biomechanics of forehand smash in badminton. Journal of Vibroengineering, 22(5).Search in Google Scholar
Xipeng, Z., Peng, Z., & Yecheng, C. (2022). Research on badminton teaching technology based on human pose estimation algorithm. Scientific Programming.Search in Google Scholar
Wang, P. (2021). Modeling of badminton intelligent teaching system based on neural network. Wireless Communications and Mobile Computing, 2021(8), 1–10.Search in Google Scholar
Cédric Roure, Cédric Roure, Pasco, D., & Pasco, D. (2018). The impact of learning task design on students’ situational interest in physical education. Journal of Teaching in Physical Education, 37(1), 24–34.Search in Google Scholar
Liu, H., Wang, W., Zhang, C., & Hastie, P. A. (2020). College students’ development of badminton skills and tactical competencies following play practice. Journal of Teaching in Physical Education, 1–9.Search in Google Scholar
Colella, R., Sabina, S., Mincarone, P., & Catarinucci, L. (2023). Semi-passive rfid electronic devices with on-chip sensor fusion capabilities for motion capture and biomechanical analysis. IEEE Sensors Journal, 23, 11672–11681.Search in Google Scholar
Gao, Q., Li, J., Zhu, Y., Wang, S., Liufu, J., & Liu, J. (2023). Hand gesture teleoperation for dexterous manipulators in space station by using monocular hand motion capture. Acta astronautica.Search in Google Scholar
Fonk, R., Schneeweiss, S., Simon, U., & Engelhardt, L. (2021). Hand motion capture from a 3d leap motion controller for a musculoskeletal dynamic simulation. Sensors, 21(4), 1199.Search in Google Scholar
Gao, P., Zhao, D., & Chen, X. (2020). Multi-dimensional data modelling of video image action recognition and motion capture in deep learning framework. IET Image Processing, 14(7), 1257–1264.Search in Google Scholar