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Generation of emotional feature space for facial expression recognition using self-mapping

机译:使用自我映射生成用于面部表情识别的情感特征空间

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This paper proposes a method for generating a subject-specific emotional feature space that expresses the correspondence between the changes in facial expression patterns and the degree of emotions. The feature space is generated using self-organizing maps and counter propagation networks. The training data input method and the number of dimensions of the CPN mapping space are investigated. The results clearly show that the input ratio of the training data should be constant for every emotion category and the number of dimensions of the CPN mapping space should be extended to effectively express a level of detailed emotion.
机译:本文提出了一种生成特定对象的情绪特征空间的方法,该空间表达面部表情模式的变化与情绪程度之间的对应关系。使用自组织地图和计数器传播网络生成要素空间。研究了训练数据的输入方法和CPN映射空间的维数。结果清楚地表明,对于每种情感类别,训练数据的输入比率应保持恒定,并且应扩展CPN映射空间的维数以有效表达详细的情感水平。

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