Salim Fahim A, Postma Dees B W, Haider Fasih, Luz Saturnino, van Beijnum Bert-Jan F, Reidsma Dennis
Digitalization Group, Irish Manufacturing Research, Mullingar, Ireland.
Human Media Interaction, University of Twente, Enschede, Netherlands.
Front Sports Act Living. 2024 Apr 16;6:1326807. doi: 10.3389/fspor.2024.1326807. eCollection 2024.
Modern sensing technologies and data analysis methods usher in a new era for sports training and practice. Hidden insights can be uncovered and interactive training environments can be created by means of data analysis. We present a system to support volleyball training which makes use of Inertial Measurement Units, a pressure sensitive display floor, and machine learning techniques to automatically detect relevant behaviours and provides the user with the appropriate information. While working with trainers and amateur athletes, we also explore potential applications that are driven by automatic action recognition, that contribute various requirements to the platform. The first application is an automatic video-tagging protocol that marks key events (captured on video) based on the automatic recognition of volleyball-specific actions with an unweighted average recall of 78.71% in the 10-fold cross-validation setting with convolution neural network and 73.84% in leave-one-subject-out cross-validation setting with active data representation method using wearable sensors, as an exemplification of how dashboard and retrieval systems would work with the platform. In the context of action recognition, we have evaluated statistical functions and their transformation using active data representation besides raw signal of IMUs sensor. The second application is the , which uses automatic action recognition to provide real-time feedback about performance to steer player behaviour in volleyball, as an example of rich learning environments enabled by live action detection. In addition to describing these applications, we detail the system components and architecture and discuss the implications that our system might have for sports in general and for volleyball in particular.
现代传感技术和数据分析方法为体育训练与实践开创了一个新时代。借助数据分析,可以揭示隐藏的见解并创建交互式训练环境。我们提出了一个支持排球训练的系统,该系统利用惯性测量单元、压敏显示地板和机器学习技术来自动检测相关行为,并为用户提供适当的信息。在与教练和业余运动员合作的过程中,我们还探索了由自动动作识别驱动的潜在应用,这些应用对该平台提出了各种要求。第一个应用是一种自动视频标记协议,它基于对排球特定动作的自动识别来标记关键事件(视频中捕获的),在使用卷积神经网络的10折交叉验证设置中,无加权平均召回率为78.71%,在使用可穿戴传感器的主动数据表示方法的留一法交叉验证设置中,召回率为73.84%,以此作为仪表板和检索系统如何与该平台配合工作的示例。在动作识别方面,除了IMU传感器的原始信号外,我们还使用主动数据表示评估了统计函数及其变换。第二个应用是 ,它利用自动动作识别为排球运动中的表现提供实时反馈,以引导运动员的行为,作为实时动作检测实现的丰富学习环境的一个示例。除了描述这些应用外,我们还详细介绍了系统组件和架构,并讨论了我们的系统可能对一般体育尤其是排球运动产生的影响。