Instituto Federal de Educação, Ciência e Tecnologia de São Paulo (IFSP), Piracicaba 13414-155, SP, Brazil.
Graduate Programme in Human Development and Technologies, São Paulo State University (UNESP), Rio Claro 13506-900, SP, Brazil.
Sensors (Basel). 2024 Mar 16;24(6):1910. doi: 10.3390/s24061910.
Incorrect limb position while lifting heavy weights might compromise athlete success during weightlifting performance, similar to the way that it increases the risk of muscle injuries during resistance exercises, regardless of the individual's level of experience. However, practitioners might not have the necessary background knowledge for self-supervision of limb position and adjustment of the lifting position when improper movement occurs. Therefore, the computerized analysis of movement patterns might assist people in detecting changes in limb position during exercises with different loads or enhance the analysis of an observer with expertise in weightlifting exercises. In this study, hidden Markov models (HMMs) were employed to automate the detection of joint position and barbell trajectory during back squat exercises. Ten volunteers performed three lift movements each with a 0, 50, and 75% load based on body weight. A smartphone was used to record the movements in the sagittal plane, providing information for the analysis of variance and identifying significant position changes by video analysis ( < 0.05). Data from individuals performing the same movements with no added weight load were used to train the HMMs to identify changes in the pattern. A comparison of HMMs and human experts revealed between 40% and 90% agreement, indicating the reliability of HMMs for identifying changes in the control of movements with added weight load. In addition, the results highlighted that HMMs can detect changes imperceptible to the human visual analysis.
在举重过程中,如果肢体位置不正确,可能会影响运动员的表现,就像在进行抗阻运动时增加肌肉受伤的风险一样,无论个人的经验水平如何。然而,从业者可能没有必要的背景知识来自我监督肢体位置,并在出现不当运动时调整举重位置。因此,运动模式的计算机分析可能有助于人们检测不同负荷下的肢体位置变化,或增强举重练习方面的专家对运动的分析。在这项研究中,隐马尔可夫模型(HMM)被用于自动检测深蹲运动中的关节位置和杠铃轨迹。十名志愿者分别以体重的 0%、50%和 75%进行三次举重动作。智能手机用于记录矢状面的运动,为方差分析提供信息,并通过视频分析识别出显著的位置变化(<0.05)。来自同一批没有附加重量的人执行相同动作的数据被用于训练 HMM 以识别模式的变化。HMM 与人类专家的比较显示,其一致性在 40%到 90%之间,这表明 HMM 对于识别有附加重量负荷的运动控制变化具有可靠性。此外,结果还突出表明,HMM 可以检测到人类视觉分析难以察觉的变化。