Université Montpellier 2, CNRS, Institut des Sciences de l'Evolution, Equipe Génétique de l'Adaptation, C.C. 065, 34095 Montpellier cedex 05, France.
Am J Phys Anthropol. 2010 May;142(1):22-9. doi: 10.1002/ajpa.21187.
Many studies use representations of human body outlines to study how individual characteristics, such as height and body mass, affect perception of body shape. These typically involve reality-based stimuli (e.g., pictures) or manipulated stimuli (e.g., drawings). These two classes of stimuli have important drawbacks that limit result interpretations. Realistic stimuli vary in terms of traits that are correlated, which makes it impossible to assess the effect of a single trait independently. In addition, manipulated stimuli usually do not represent realistic morphologies. We describe and examine a method based on elliptic Fourier descriptors to automatically predict and represent body outlines for a given set of predicted variables (e.g., sex, height, and body mass). We first estimate whether these predictive variables are significantly related to human outlines. We find that height and body mass significantly influence body shape. Unlike height, the effect of body mass on shape differs between sexes. Then, we show that we can easily build a regression model that creates hypothetical outlines for an arbitrary set of covariates. These statistically computed outlines are quite realistic and may be used as stimuli in future studies.
许多研究使用人体轮廓的表示来研究个体特征(如身高和体重)如何影响对体型的感知。这些研究通常涉及基于现实的刺激(例如图片)或操纵的刺激(例如绘图)。这两类刺激都有重要的缺点,限制了结果的解释。现实的刺激在相关特征方面存在差异,这使得无法独立评估单一特征的效果。此外,操纵的刺激通常不代表现实的形态。我们描述并检查了一种基于椭圆傅里叶描述符的方法,该方法可自动预测和表示给定预测变量集(例如,性别、身高和体重)的身体轮廓。我们首先估计这些预测变量是否与人体轮廓显著相关。我们发现身高和体重显著影响体型。与身高不同,体重对体型的影响在性别之间存在差异。然后,我们表明我们可以轻松构建一个回归模型,为任意一组协变量创建假设轮廓。这些统计计算的轮廓非常逼真,可用于未来的研究作为刺激。