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Modelling human perception of static facial expressions

机译:模拟人类对静态面部表情的感知

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摘要

A recent internet based survey of over 35,000 samples has shown that when different human observers are asked to assign labels to static human facial expressions, different individuals categorize differently the same image. This fact results in a lack of an unique ground-truth, an assumption held by the large majority of existing models for classification. This is especially true for highly ambiguous expressions, especially in the lack of a dynamic context. In this paper we propose to address this shortcoming by the use of discrete choice models (DCM) to describe the choice a human observer is faced to when assigning labels to static facial expressions. Different models of increasing complexity are specified to capture the causal effect between features of an image and its associated expression, using several combinations of different measurements. The sets of measurements we used are largely inspired by FACS but also introduce some new ideas, specific to a static framework. These models are calibrated using maximum likelihood techniques and they are compared with each other using a likelihood ratio test, in order to test for significance in the improvement resulting from adding supplemental features. Through a cross-validation procedure we assess the validity of our approach against overfitting and we provide a comparison with an alternative model based on Neural Networks for benchmark purposes.
机译:基于互联网的最新调查显示,超过35,000个样本显示,当要求不同的人类观察者为静态的人类面部表情分配标签时,不同的人对同一幅图像进行不同的分类。这一事实导致缺乏独特的事实真相,这是大多数现有分类模型所持的假设。对于高度含糊的表达式尤其如此,尤其是在缺少动态上下文的情况下。在本文中,我们建议通过使用离散选择模型(DCM)来描述这一缺点,以描述人类观察者将标签分配给静态面部表情时面对的选择。使用不同测量值的几种组合,指定了复杂度不断提高的不同模型,以捕获图像特征及其关联表达之间的因果关系。我们使用的度量集在很大程度上受到FACS的启发,但也引入了一些针对静态框架的新思想。使用最大似然技术对这些模型进行校准,并使用似然比检验将它们相互比较,以测试因添加补充特征而导致的改进的重要性。通过交叉验证程序,我们评估了针对过度拟合的方法的有效性,并与基于神经网络的替代模型进行了比较,以进行基准测试。

著录项

  • 来源
    《Image and Vision Computing》 |2010年第5期|790-806|共17页
  • 作者单位

    Signal Processing Laboratory (LTS5), EPFL, Station 11, CH-1015 Lausanne, Switzerland;

    IBM Zurich Laboratory, Saumerstrasse 4, Ruschlikon, Switzerland;

    Transport and Mobility Laboratory, EPFL, Station 11, CH-1015 Lausanne, Switzerland;

    Transport and Mobility Laboratory, EPFL, Station 11, CH-1015 Lausanne, Switzerland;

    Transport and Mobility Laboratory, EPFL, Station 11, CH-1015 Lausanne, Switzerland;

    Signal Processing Laboratory (LTS5), EPFL, Station 11, CH-1015 Lausanne, Switzerland;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    facial expressions; behavioural modelling; discrete choice models;

    机译:面部表情;行为建模;离散选择模型;

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