解读脸。

Aleix M Martinez
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引用次数: 15

摘要

我们认为,为了使鲁棒的计算机视觉算法用于人脸分析和识别,这些算法应该基于结构和形状特征。在这个模型中,计算机视觉研究人员要解决的最重要的任务是准确地检测面部特征,而不是识别。我们的论点基于认知科学和神经科学的最新成果。特别是,我们表明不同的面部表情在人类行为/认知中有不同的用途,并且面部表情可能与多种情绪类别相关。这两个结果与认知科学中的连续模型、神经科学中的边缘假设以及计算机视觉中典型使用的多维方法相矛盾。因此,我们提出了一种替代的混合连续分类方法来感知面部表情,并表明结构和形状特征对人类识别情感结构最重要。我们说明如何这些图像线索可以成功地利用计算机视觉算法。在整个论文中,我们讨论了这些结果在人脸识别和人机交互应用中的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deciphering the Face.

We argue that to make robust computer vision algorithms for face analysis and recognition, these should be based on configural and shape features. In this model, the most important task to be solved by computer vision researchers is that of accurate detection of facial features, rather than recognition. We base our arguments on recent results in cognitive science and neuroscience. In particular, we show that different facial expressions of emotion have diverse uses in human behavior/cognition and that a facial expression may be associated to multiple emotional categories. These two results are in contradiction with the continuous models in cognitive science, the limbic assumption in neuroscience and the multidimensional approaches typically employed in computer vision. Thus, we propose an alternative hybrid continuous-categorical approach to the perception of facial expressions and show that configural and shape features are most important for the recognition of emotional constructs by humans. We illustrate how these image cues can be successfully exploited by computer vision algorithms. Throughout the paper, we discuss the implications of these results in applications in face recognition and human-computer interaction.

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CiteScore
43.50
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