Mosler Dariusz, Błażkiewicz Michalina, Góra Tomasz, Bednarczuk Grzegorz, Wąsik Jacek
1Institute of Physical Culture Sciences, Jan Długosz University in Częstochowa, Częstochowa, Poland.
2Faculty of Rehabilitation, The Józef Piłsudski University of Physical Education in Warsaw, Warsaw, Poland.
Acta Bioeng Biomech. 2025 Jun 16;27(1):83-92. doi: 10.37190/abb-02565-2024-02. Print 2025 Mar 1.
: The aim of this study was to investigate the feasibility of using Long Short-Term Memory (LSTM) neural networks to predict Taekwondo kick force from data obtained by inertial measurement unit (IMU) sensors, providing a cost-effective alternative to traditional force plates in sports biomechanics. : IMU (Noraxon Ultium) data from 13 International Taekwon-do Federation (ITF) athletes (9 training, 4 validation) across genders and skill levels (expert in training, expert/advanced in validation) were collected. Sensors were attached to a foot, shank and tight of kicking leg. Athletes performed turning kicks in diverse stances towards a padded force plate (2000 Hz) attached to a wall. LSTM models were trained to predict kick force value, and trained on capturing the IMU data from sensors placed on the lower limb. : The trained LSTM models showed accuracy on the training data ( values in the range of 0.972-0.978). Feature validity analysis highlighted the importance of ankle dorsiflexion in shaping the model score. Model performance on the validation dataset was less consistent, ranging from good accuracy (RMSE 6.91) to poor accuracy (RMSE over 30), depending on the participant tested. : This study demonstrated the potential of LSTM models combined with IMU data to predict Taekwondo kick forces. Although the validation performance indicated the need for further model refinement or the inclusion of additional input variables, the results highlighted the feasibility of predicting force values without relying on a force plate. This approach could enhance the accessibility of field studies conducted outside laboratory settings.
本研究的目的是探讨使用长短期记忆(LSTM)神经网络根据惯性测量单元(IMU)传感器获得的数据预测跆拳道踢腿力量的可行性,为体育生物力学中的传统测力板提供一种经济高效的替代方案。收集了13名国际跆拳道联盟(ITF)运动员(9名用于训练,4名用于验证)的IMU(Noraxon Ultium)数据,这些运动员涵盖不同性别和技能水平(训练中的专家,验证中的专家/高级水平)。传感器附着在踢腿的脚、小腿和大腿上。运动员以不同的姿势向附着在墙上的软垫测力板(2000Hz)进行转身踢腿。训练LSTM模型以预测踢腿力量值,并通过捕捉来自放置在下肢的传感器的IMU数据进行训练。训练后的LSTM模型在训练数据上显示出准确性(值在0.972 - 0.978范围内)。特征有效性分析突出了踝关节背屈在塑造模型得分方面的重要性。验证数据集上的模型性能不太一致,根据测试的参与者不同,准确性从良好(RMSE为6.91)到较差(RMSE超过30)不等。本研究证明了LSTM模型结合IMU数据预测跆拳道踢腿力量的潜力。尽管验证性能表明需要进一步完善模型或纳入额外的输入变量,但结果突出了不依赖测力板预测力量值的可行性。这种方法可以提高在实验室环境之外进行的实地研究的可及性。