Peres André B, Almeida Tiago A F, Massini Danilo A, Macedo Anderson G, Espada Mário C, Robalo Ricardo A M, Oliveira Rafael, Brito João P, Pessôa Filho Dalton M
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.
J Funct Morphol Kinesiol. 2025 Feb 28;10(1):84. doi: 10.3390/jfmk10010084.
: Correct supervision during the performance of resistance exercises is imperative to the correct execution of these exercises. This study presents a proposal for the use of Morisita-Horn similarity indices in modelling with machine learning methods to identify changes in positional sequence patterns during the biceps-curl weight-lifting exercise with a barbell. The models used are based on the fuzzy logic (FL) and support vector machine (SVM) methods. : Ten male volunteers (age: 26 ± 4.9 years, height: 177 ± 8.0 cm, body weight: 86 ± 16 kg) performed a standing barbell bicep curl with additional weights. A smartphone was used to record their movements in the sagittal plane, providing information about joint positions and changes in the sequential position of the bar during each lifting attempt. Maximum absolute deviations of movement amplitudes were calculated for each execution. A variance analysis revealed significant deviations ( < 0.002) in vertical displacement between the standard execution and execution with a load of 50% of the subject's body weight. Experts with over thirty years of experience in resistance-exercise evaluation evaluated the exercises, and their results showed an agreement of over 70% with the results of the ANOVA. The similarity indices, absolute deviations, and expert evaluations were used for modelling in both the FL system and the SVM. The root mean square error and R-squared results for the FL system (R = 0.92, r = 0.96) were superior to those of the SVM (R = 0.81, r = 0.79). : The use of FL in modelling emerges as a promising approach with which to support the assessment of movement patterns. Its applications range from automated detection of errors in exercise execution to enhancing motor performance in athletes.
在进行抗阻训练时,正确的监督对于这些训练的正确执行至关重要。本研究提出了一项建议,即在使用机器学习方法进行建模时,运用森下-霍恩相似性指数来识别使用杠铃进行二头肌弯举举重训练期间位置序列模式的变化。所使用的模型基于模糊逻辑(FL)和支持向量机(SVM)方法。
十名男性志愿者(年龄:26±4.9岁,身高:177±8.0厘米,体重:86±16千克)进行了负重站立式杠铃二头肌弯举训练。使用智能手机记录他们在矢状面内的动作,提供每次举起重物尝试期间关节位置以及杠铃连续位置变化的信息。计算每次执行动作时运动幅度的最大绝对偏差。方差分析显示,标准动作与负重为受试者体重50%时的动作在垂直位移上存在显著偏差(<0.002)。具有三十多年抗阻训练评估经验的专家对这些训练进行了评估,他们的结果与方差分析结果的一致性超过70%。相似性指数、绝对偏差和专家评估结果被用于FL系统和SVM的建模。FL系统的均方根误差和决定系数结果(R = 0.92,r = 0.96)优于SVM(R = 0.81,r = 0.79)。
在建模中使用FL成为一种有前景的方法,可用于支持对运动模式的评估。其应用范围从自动检测训练执行中的错误到提高运动员的运动表现。