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首页> 外文期刊>Journal of Cognitive Neuroscience >EMPATH: A Neural Network that Categorizes Facial Expressions
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EMPATH: A Neural Network that Categorizes Facial Expressions

机译:EMPATH:对面部表情进行分类的神经网络

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摘要

There are two competing theories of facial expression recognition. Some researchers have suggested that it is an example of “categorical perception.” In this view, expression categories are considered to be discrete entities with sharp boundaries, and discrimination of nearby pairs of expressive faces is enhanced near those boundaries. Other researchers, however, suggest that facial expression perception is more graded and that facial expressions are best thought of as points in a continuous, low-dimensional space, where, for instance, “surprise” expressions lie between “happiness” and “fear” expressions due to their perceptual similarity. In this article, we show that a simple yet biologically plausible neural network model, trained to classify facial expressions into six basic emotions, predicts data used to support both of these theories. Without any parameter tuning, the model matches a variety of psychological data on categorization, similarity, reaction times, discrimination, and recognition difficulty, both qualitatively and quantitatively. We thus explain many of the seemingly complex psychological phenomena related to facial expression perception as natural consequences of the tasks' implementations in the brain.
机译:面部表情识别有两种相互竞争的理论。一些研究人员认为这是“分类感知”的一个例子。在此视图中,表情类别被认为是具有清晰边界的离散实体,并且在这些边界附近增强了对附近表情对表情的区分。但是,其他研究人员则建议,面部表情的感知程度更高,并且最好将面部表情视为连续的低维空间中的点,例如,“惊喜”表情位于“幸福”与“恐惧”之间表达式由于它们在感知上的相似性。在本文中,我们展示了一个简单但生物学上似乎合理的神经网络模型,该模型经过训练可将面部表情分为六种基本情绪,可以预测用于支持这两种理论的数据。该模型无需进行任何参数调整,就可以定性和定量地匹配有关分类,相似性,反应时间,辨别力和识别难度的各种心理数据。因此,我们将许多与面部表情感知有关的看似复杂的心理现象解释为任务在大脑中执行的自然结果。

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