Home » today » Technology » Gamechanger AI in sports and training science – Can we trust the technology today?

Gamechanger AI in sports and training science – Can we trust the technology today?

  • Salvagno, M., Taccone, F.S., Gerli, A.G.: Can artificial intelligence help for scientific writing? Critical Care 27(75), 1–5 (2023).

    Google Scholar

  • Weineck, J.: Optimal training. Performance physiological training theory with special consideration of children and youth training. Spitta Verlag, Balingen (2019).

    Google Scholar

  • Schnabel, G., Harre, H.-D., Krug, J.: Training theory – training science. Performance – training – competition. Meyer & Meyer, Aachen (2014).

    Google Scholar

  • Prieske, O., Granacher, U.: Sports medicine basics: The importance of training science for optimizing athletic performance and maintaining health. In: Güllich, A., Krüger, M. (eds.) Movement, training, performance and health, pp. 627–640. Springer, Berlin and Heidelberg (2023).

    Chapter

    Google Scholar

  • Martin, D., Weigelt, S.: Training science. Self-image and research approaches. Academia Verlag, Sankt Augustin (1993).

    Google Scholar

  • Ferrauti, A.: Training science for sports practice. Springer, Berlin and Heidelberg (2020).

    Book

    Google Scholar

  • Frey, G., Hildenbrandt, E.: Introduction to training theory. Part 1: Basics. Hofmann-Verlag, Schorndorf (2002).

    Google Scholar

  • Hohmann, A., Lames, M., Letzelter, M.: Introduction to training science. Limpert, Wiebelsheim (2014).

    Google Scholar

  • Krug, J.: Training science – claim and attempt to determine the position from the perspective of “applied training science!” In: Martin, D., Weigelt, S. (eds.) Training science. Self-image and research approaches, pp. 95–104. Academia Verlag, Sankt Augustin (1993).

    Google Scholar

  • Fröhlich, M.: Reflections on training science. Sport Science 42(2), 96–104 (2012).

    Article

    Google Scholar

  • Dindorf, C., Fröhlich, M.: On the connotation and denotation of the concept of training in the theory and practice of sport. German Journal of Exercise and Sport Research 50, 297–307 (2020).

    Article

    Google Scholar

  • Kurz, D.: On the importance of training science for sport in schools. Sportwissenschaft 8, 125–141 (1978).

    MathSciNet

    Google Scholar

  • Fröhlich, M., Ludwig, O.: Training science. In: Güllich, A., Krüger, M. (eds.) Movement, training, performance and health, pp. 691–704. Springer Berlin and Heidelberg (2023).

    Chapter

    Google Scholar

  • Herrmann, T.: Psychology and its research programs. Hogrefe, Göttingen (1976).

    Google Scholar

  • Willimczik, K.: Interdisciplinary sports science. A scientific-theoretical dialogue. Volume 1: History, structure and subject of sports science. Czwalina Verlag, Hamburg (2001).

    Google Scholar

  • Fröhlich, M., Mayerl, J., Pieter, A., Kemmler, W. (eds.): Introduction to methods, methodology and statistics in sport. Springer, Berlin and Heidelberg, (2020).

    Google Scholar

  • Wendeborn, T., Hummel, A., Fröhlich, M.: Training science and sports pedagogy under a symbiotic perspective. In: Güllich, A., Krüger, M. (eds.) Movement, training, performance and health, pp. 705–715. Springer, Berlin and Heidelberg (2023).

    Chapter

    Google Scholar

  • Krug, J.: Motor skills: concept, developments, theory comparisons. In: Güllich, A., Krüger, M. (eds.) Movement, training, performance and health, pp. 733–755. Springer, Berlin and Heidelberg (2023).

    Chapter

    Google Scholar

  • Düking, P., Fröhlich, M., Sperlich, B.: Technological innovation in training science: Digitally supported training control using wearable sensors. In: Güllich, A., Krüger, M. (eds.) Movement, training, performance and health, pp. 991–998. Springer, Berlin and Heidelberg (2023).

    Chapter

    Google Scholar

  • Lames, M., Pfeiffer, M., Hohmann, A., Horn, A.: Statement on the situation of university training science. Sportwiss 43, 85–89 (2013).

    Article

    Google Scholar

  • Dindorf, C., Bartaguiz, E., Gassmann, F., Michael, F.: Artificial intelligence in sport and sport science. Potentials, challenges and limitations. Springer Spektrum, Berlin and Heidelberg (2023).

    Google Scholar

  • Li, B., Xu, X.: Application of Artificial Intelligence in Basketball Sport. Journal of Education, Health and Sport 11, 54–67 (2021).

    Article

    Google Scholar

  • Claudino, J.G., de Oliveira Capanema, D., de Souza, T.V., Serrão, J.C., Machado Pereira, A.C., Nassis, G.P.: Current Approaches to the Use of Artificial Intelligence for Injury Risk Assessment and Performance Prediction in Team Sports: a Systematic Review. Sports Medicine – Open 5(28), 1–12 (2019).

    Google Scholar

  • Article

    Google Scholar

  • Woltmann, L., Hartmann, C., Lehner, W., Rausch, P., Ferger, K.: Sensor-based jump detection and classification with machine learning in trampoline gymnastics. German Journal of Exercise and Sport Research 53, 187–195 (2023).

    Article

    Google Scholar

  • Khan, N.J., Ahamad, G., Naseem, M.: An IoT/FOG based framework for sports talent identification in COVID-19 like situations. International Journal of Information Technology 14, 2513–2521 (2022).

    Article

    Google Scholar

  • Parida, S., Thilak, K.D., Singh, R.: Enhancing the Prediction of Growth of Footballers using Real-Life Statistics and Machine Learning. In: 2022 International Conference on Applied Artificial Intelligence and Computing (ICAAIC), pp. 471–475. IEEE, Salem, India (2022).

    Google Scholar

  • Zahran, L., El-Beltagy, M., Saleh, M.: A Conceptual Framework for the Generation of Adaptive Training Plans in Sports Coaching. In: Hassanien, A.E., Shaalan, K., Tolba, M.F. (eds.) Proceedings of the International Conference on Advanced Intelligent Systems and Informatics 2019. pp. 673–684. Springer International Publishing, Cham (2020).

    Google Scholar

  • Fister, I., Fister, D.: Computational Intelligence in Sports. Adaptation, Learning, and Optimization. Springer International Publishing, Cham (2019).

    Google Scholar

  • Dindorf, C., Bartaguiz, E., Dully, J., Sprenger, M., Merk, A., Becker, S., Fröhlich, M., Ludwig, O.: Evaluation of Influencing Factors on the Maximum Climbing Specific Holding Time: An Inferential Statistics and Machine Learning Approach. Journal of Functional Morphology and Kinesiology 7(4), 1–9 (2022).

    Article

    Google Scholar

  • Rommers, N., Rössler, R., Verhagen, E., Vandecasteele, F., Verstockt, S., Vaeyens, R., Lenoir, M., D’Hondt, E., Witvrouw, E.: A Machine Learning Approach to Assess Injury Risk in Elite Youth Football Players. Medicine and Science in Sports and Exercise 52, 1745–1751 (2020).

    Article

    Google Scholar

  • Kakavas, G., Malliaropoulos, N., Pruna, R., Maffulli, N.: Artificial intelligence: A tool for sports trauma prediction. Injury 51(Suppl 3), 63–65 (2020).

    Article

    Google Scholar

  • Harris, E.J., Khoo, I.-H., Demircan, E.: A Survey of Human Gait-Based Artificial Intelligence Applications. Frontiers in Robotics and AI 8, 749274 (2022).

    Article

    Google Scholar

  • Thompson, W.R.: WORLDWIDE SURVEY OF FITNESS TRENDS FOR 2017. ACSM’S Health & Fitness Journal 27, 9–17 (2020).

    Article

    Google Scholar

  • Adadi, A., Berrada, M.: Peeking Inside the Black-Box: A Survey on Explainable Artificial Intelligence (XAI). IEEE Access 6, 52138–52160 (2018).

    Article

    Google Scholar

  • Slijepcevic, D., Horst, F., Lapuschkin, S., Horsak, B., Raberger, A.-M., Kranzl, A., Samek, W., Breiteneder, C., Schöllhorn, W.I., Zeppelzauer, M.: Explaining Machine Learning Models for Clinical Gait Analysis. ACM Transactions on Computing for Healthcare 3, 1–27 (2022).

    Article

    Google Scholar

  • Dindorf, C., Teufl, W., Taetz, B., Bleser, G., Fröhlich, M.: Interpretability of Input Representations for Gait Classification in Patients after Total Hip Arthroplasty. Sensors 20(16), 1–14 (2020).

    Article

    Google Scholar

  • Haenlein, M., Kaplan, A.: A Brief History of Artificial Intelligence: On the Past, Present, and Future of Artificial Intelligence. California Management Review 61, 5–14 (2019).

    Article

    Google Scholar

  • German Ethics Council: Man and Machine – Challenges of Artificial Intelligence. German Ethics Council, Berlin (2023).

    Google Scholar

  • Leave a Comment

    This site uses Akismet to reduce spam. Learn how your comment data is processed.