Young Cole, Reinkensmeyer David J
Department of Mechanical and Aerospace Engineering, University of California at Irvine, United States.
Department of Mechanical and Aerospace Engineering, University of California at Irvine, United States; Department of Anatomy and Neurobiology, University of California at Irvine, United States; Department of Biomedical Engineering, University of California at Irvine, United States.
Hum Mov Sci. 2014 Aug;36:107-22. doi: 10.1016/j.humov.2014.05.009. Epub 2014 Jun 24.
Athletes rely on subjective assessment of complex movements from coaches and judges to improve their motor skills. In some sports, such as diving, snowboard half pipe, gymnastics, and figure skating, subjective scoring forms the basis for competition. It is currently unclear whether this scoring process can be mathematically modeled; doing so could provide insight into what motor skill is. Principal components analysis has been proposed as a motion analysis method for identifying fundamental units of coordination. We used PCA to analyze movement quality of dives taken from USA Diving's 2009 World Team Selection Camp, first identifying eigenpostures associated with dives, and then using the eigenpostures and their temporal weighting coefficients, as well as elements commonly assumed to affect scoring - gross body path, splash area, and board tip motion - to identify eigendives. Within this eigendive space we predicted actual judges' scores using linear regression. This technique rated dives with accuracy comparable to the human judges. The temporal weighting of the eigenpostures, body center path, splash area, and board tip motion affected the score, but not the eigenpostures themselves. These results illustrate that (1) subjective scoring in a competitive diving event can be mathematically modeled; (2) the elements commonly assumed to affect dive scoring actually do affect scoring (3) skill in elite diving is more associated with the gross body path and the effect of the movement on the board and water than the units of coordination that PCA extracts, which might reflect the high level of technique these divers had achieved. We also illustrate how eigendives can be used to produce dive animations that an observer can distort continuously from poor to excellent, which is a novel approach to performance visualization.
运动员依靠教练和裁判对复杂动作的主观评估来提高他们的运动技能。在一些运动项目中,如跳水、单板滑雪U型场地技巧、体操和花样滑冰,主观评分构成了比赛的基础。目前尚不清楚这种评分过程是否可以用数学模型来表示;如果可以,就能深入了解什么是运动技能。主成分分析已被提议作为一种运动分析方法,用于识别协调的基本单元。我们使用主成分分析来分析从美国跳水队2009年世界团体选拔营中选取的跳水动作质量,首先识别与跳水相关的特征姿势,然后使用特征姿势及其时间加权系数,以及通常认为会影响评分的因素——身体整体路径、水花区域和跳板末端动作——来识别特征跳水动作。在这个特征跳水动作空间内,我们使用线性回归预测实际裁判的评分。这项技术对跳水动作的评分准确性与人类裁判相当。特征姿势、身体中心路径、水花区域和跳板末端动作的时间加权会影响评分,但特征姿势本身不会。这些结果表明:(1)竞技跳水项目中的主观评分可以用数学模型来表示;(2)通常认为会影响跳水评分的因素实际上确实会影响评分;(3)精英跳水的技能更多地与身体整体路径以及动作对跳板和水的影响有关,而不是主成分分析提取的协调单元,这可能反映了这些跳水运动员所达到的高水平技术。我们还展示了如何使用特征跳水动作来制作观察者可以从差到好连续扭曲的跳水动画,这是一种新颖的表现可视化方法。