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Tracking the recognition of static and dynamic facial expressions of emotion across the life span

机译:跟踪整个人生过程中静态和动态表情的识别

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The effective transmission and decoding of dynamic facial expressions of emotion is omnipresent and critical for adapted social interactions in everyday life. Thus, common intuition would suggest an advantage for dynamic facial expression recognition (FER) over the static snapshots routinely used in most experiments. However, although many studies reported an advantage in the recognition of dynamic over static expressions in clinical populations, results obtained from healthy participants are contrasted. To clarify this issue, we conducted a large cross-sectional study to investigate FER across the life span in order to determine if age is a critical factor to account for such discrepancies. More than 400 observers (age range 5–96) performed recognition tasks of the six basic expressions in static, dynamic, and shuffled (temporally randomized frames) conditions, normalized for the amount of energy sampled over time. We applied a Bayesian hierarchical step-linear model to capture the nonlinear relationship between age and FER for the different viewing conditions. Although replicating the typical accuracy profiles of FER, we determined the age at which peak efficiency was reached for each expression and found greater accuracy for most dynamic expressions across the life span. This advantage in the elderly population was driven by a significant decrease in performance for static images, which was twice as large as for the young adults. Our data posit the use of dynamic stimuli as being critical in the assessment of FER in the elderly population, inviting caution when drawing conclusions from the sole use of static face images to this aim.
机译:动态传递情感的面部表情的有效传输和解码无所不在,对于日常生活中适应性社交互动至关重要。因此,与大多数实验中常规使用的静态快照相比,普通的直觉将为动态面部表情识别(FER)带来优势。然而,尽管许多研究报告了在临床人群中识别动态表达而不是静态表达方面的优势,但对比了健康参与者的结果。为了弄清这个问题,我们进行了一项大型的横断面研究,以调查整个寿命期间的FER,以确定年龄是否是解决此类差异的关键因素。超过400位观察者(5-96岁)在静态,动态和随机(临时随机帧)条件下执行了六个基本表达式的识别任务,并针对随时间推移采集的能量进行了标准化。我们应用贝叶斯分层逐步线性模型来捕获不同观看条件下年龄与FER之间的非线性关系。尽管复制了FER的典型准确度配置文件,但我们确定了每个表达式达到峰值效率的年龄,并发现了整个生命周期中大多数动态表达式的准确性更高。老年人口的这一优势是由于静态图像性能的显着下降所驱动,而静态图像的性能是年轻人的两倍。我们的数据认为使用动态刺激对于老年人FER评估至关重要,因此在仅使用静态面部图像得出结论时要谨慎。

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