情感空间用于分析和合成面部表情

S. Morishima, H. Harashima
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引用次数: 38

摘要

本文提出了一种新的情绪模型,给出了从人脸图像判断人的情绪状态的标准。我们的最终目标是通过给计算机终端或通信系统一个能理解用户情绪状况的面孔,实现非常自然和友好的人机通信环境。因此,情感模型有必要定量地表达参数化面部表情及其运动的情感含义。我们的情感模型基于5层神经网络,具有泛化和非线性映射性能。输入层和输出层都有相同数量的单元。因此可以实现身份映射,并在中间层(第三层)构建情感空间。输入层到中间层的映射是情感识别,中间层到输出层的映射是情感值的表情合成。训练是通过13种典型的情绪模式来完成的,这些情绪模式通过表情参数来表达。对该情感空间的主观检验证明了该模型的合理性。选择面部动作编码系统作为描述精致面部表情和动作的有效标准。
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Emotion space for analysis and synthesis of facial expression
This paper presents a new emotion model which gives a criteria to decide human's emotion condition from the face image. Our final goal is to realize very natural and user-friendly human-machine communication environment by giving a face to computer terminal or communication system which can also understand the user's emotion condition. So it is necessary for the emotion model to express emotional meanings of a parameterized face expression and its motion quantitatively. Our emotion model is based on 5-layered neural network which has generalization and nonlinear mapping performance. Both input and output layer has the same number of units. So identity mapping can be realized and emotion space can be constructed in the middle-layer (3rd layer). The mapping from input layer to middle layer means emotion recognition and that from middle layer to output layer corresponds to expression synthesis from the emotion value. Training is performed by typical 13 emotion patterns which are expressed by expression parameters. Subjective test of this emotion space proves the propriety of this model. The facial action coding system is selected as an efficient criteria to describe delicate face expression and motion.<>
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