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An Integrated Neural Framework for Dynamic and Static Face Processing

机译:动态和静态人脸处理的集成神经框架

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摘要

Faces convey rich information including identity, gender and expression. Current neural models of face processing suggest a dissociation between the processing of invariant facial aspects such as identity and gender, that engage the fusiform face area (FFA) and the processing of changeable aspects, such as expression and eye gaze, that engage the posterior superior temporal sulcus face area (pSTS-FA). Recent studies report a second dissociation within this network such that the pSTS-FA, but not the FFA, shows much stronger response to dynamic than static faces. The aim of the current study was to test a unified model that accounts for these two functional characteristics of the neural face network. In an fMRI experiment, we presented static and dynamic faces while subjects judged an invariant (gender) or a changeable facial aspect (expression). We found that the pSTS-FA was more engaged in processing dynamic than static faces and changeable than invariant aspects, whereas the OFA and FFA showed similar response across all four conditions. These findings support an integrated neural model of face processing in which the ventral areas extract form information from both invariant and changeable facial aspects whereas the dorsal face areas are sensitive to dynamic and changeable facial aspects.
机译:面部传达丰富的信息,包括身份,性别和表情。当前的面部处理神经模型表明,与融合形式的面部区域(FFA)相关的不变面部特征(如身份和性别)的处理与与后上方融合的可变性方面(例如表情和眼睛注视)的处理之间存在分离颞沟面部区域(pSTS-FA)。最近的研究报道了该网络中的第二种解离,因此pSTS-FA(而不是FFA)显示出对动态的响应比静态面孔要强得多。当前研究的目的是测试一个解释神经人脸网络这两个功能特征的统一模型。在功能磁共振成像实验中,我们呈现出静态和动态的面孔,而受试者则判断出不变(性别)或面部表情变化(表情)。我们发现pSTS-FA在处理动态方面要比静态面孔更多,而在可变方面则比不变方面更多,而OFA和FFA在所有四个条件下都显示出相似的响应。这些发现支持了面部处理的集成神经模型,其中腹侧区域从不变和多变的面部方面提取信息,而背侧面部对动态和多变的面部方面敏感。

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