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Implicit learning of geometric eigenfaces

机译:几何特征面的隐式学习

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摘要

The human visual system can implicitly extract a prototype of encountered visual objects (Posner & Keele, 1968). While learning a prototype provides an efficient way of encoding objects at the category level, discrimination among individual objects requires encoding of variations among them as well. Here we show that in addition to the prototype, human adults also implicitly learn the feature correlations that capture the most significant geometric variations among faces. After studying a group of synthetic faces, observers mistook as seen previously unseen faces representing the first two principal components (eigenfaces, Turk & Pentland, 1991) of the studied faces at significantly higher rates than the correct recognition of the faces actually studied. Implicit learning of the most significant eigenfaces provides an optimal way for encoding variations among faces. The data thus extend the types of summary statistics that can be implicitly extracted by the visual system to include several principal components.
机译:人类视觉系统可以隐式提取遇到的视觉对象的原型(Posner&Keele,1968)。虽然学习原型提供了一种在类别级别对对象进行编码的有效方法,但要区分单个对象也需要对它们之间的变化进行编码。在这里,我们表明,除了原型之外,人类成年人还隐式地学习了捕获人脸之间最重要的几何变化的特征相关性。在研究了一组合成人脸之后,观察者误以为先前看不见的人脸代表了被研究人脸的前两个主要成分(eigenfaces,Turk&Pentland,1991),而误识率要比对实际人脸的正确识别要高得多。对最重要特征脸的隐式学习为编码脸部之间的变化提供了一种最佳方式。因此,数据扩展了可视化系统可以隐式提取的摘要统计信息的类型,以包括几个主要组件。

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