Computer-Aided Parameter Selection for Resistance Exercise Using Machine Vision-Based Capability Profile Estimation

Ognjen Arandjelović
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引用次数: 3

Abstract

The penetration of mathematical modelling in sports science to date has been highly limited. In particular and in contrast to most other scientific disciplines, sports science research has been characterized by comparatively little effort investment in the development of phenomenological models. Practical applications of such models aimed at assisting trainees or sports professionals more generally remain nonexistent. The present paper aims at addressing this gap. We adopt a recently proposed mathematical model of neuromuscular engagement and adaptation, and develop around it an algorithmic framework which allows it to be employed in actual training program design and monitoring by resistance training practitioners (coaches or athletes). We first show how training performance characteristics can be extracted from video sequences, effortlessly and with minimal human input, using computer vision. The extracted characteristics are then used to fit the adopted model i.e. to estimate the values of its free parameters, from differential equations of motion in what is usually termed the inverse dynamics problem. A computer simulation of training bouts using the estimated (and hence athlete specific) model is used to predict the effected adaptation and with it the expected changes in future performance capabilities. Lastly we describe a proof-of-concept software tool we developed which allows the practitioner to manipulate training parameters and immediately see their effect on predicted adaptation (again, on an athlete specific basis). Thus, this work presents a holistic view of the monitoring–assessment–adjustment loop which lies at the centre of successful coaching. By bridging the gap between theoretical and applied aspects of sports science, the present contribution highlights the potential of mathematical and computational modelling in this field and serves to encourage further research focus in this direction.

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基于机器视觉的能力轮廓估计在阻力训练参数选择中的应用
迄今为止,数学建模在体育科学中的渗透一直非常有限。与大多数其他科学学科相比,体育科学研究的特点是在发展现象学模型方面投入的精力相对较少。这种旨在帮助受训人员或体育专业人员的模式的实际应用通常仍然不存在。本文件旨在解决这一差距。我们采用了最近提出的神经肌肉参与和适应的数学模型,并围绕它开发了一个算法框架,使其能够用于阻力训练从业者(教练或运动员)的实际训练计划设计和监测。我们首先展示了如何使用计算机视觉从视频序列中轻松提取训练表现特征,只需最少的人工输入。然后,在通常被称为逆动力学问题的运动微分方程中,提取的特征被用来拟合所采用的模型,即估计其自由参数的值。使用估计的(因此是运动员特有的)模型对训练回合进行计算机模拟,用于预测受影响的适应以及未来表现能力的预期变化。最后,我们描述了我们开发的概念验证软件工具,该工具允许从业者操纵训练参数,并立即看到它们对预测适应的影响(同样,在运动员特定的基础上)。因此,这项工作呈现了对监控-评估-调整循环的整体看法,这是成功指导的核心。通过弥合体育科学理论和应用方面之间的差距,本论文突出了数学和计算建模在该领域的潜力,并有助于鼓励进一步关注这一方向的研究。
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