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首页> 外文期刊>IETE Journal of Research >Modelling Facial Features for Emotion Recognition and Synthesis
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Modelling Facial Features for Emotion Recognition and Synthesis

机译:情绪识别和综合的面部特征建模

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摘要

Emotion recognition and synthesis is one of the most important challenges for effective human-computer interaction. In this paper, a novel approach for emotion recognition is presented by modelling facial feature deformations. The presented approach is based on the fact that facial features such as lip, nose, eyes, and eyebrows get deformed due to variation in emotions. To measure the change in shapes of different facial features, landmark points are extracted around the facial features. Thin plate spline (TPS) is used to model the deformation of these landmark points. The basic property of TPS mapping function is that it is capable of computing rigid as well as non-rigid transformations between neutral and emotion image frames. The rigid transformation parameters represent affine parameters caused by head movement and non-rigid transformation parameters are used as representatives of facial feature deformation caused by emotion. To prove the modelling ability of TPS, non-rigid parameters are fed to support vector machine for emotion recognition. Moreover, an attempt is made to synthesize emotion by using TPS warping function. The mean of non-rigid transformation for an emotion is used as a template to warp the neutral image to emotion image. To evaluate the proposed approach, extended Cohn-Kanade database and JAFFE database are used and experimental results show 95% and 70% accuracy for them, respectively.
机译:情感识别和综合是有效的人机交互的最重要挑战之一。在本文中,通过对面部特征变形建模,提出了一种新颖的情感识别方法。提出的方法基于以下事实:由于情绪变化,面部特征(如嘴唇,鼻子,眼睛和眉毛)会变形。为了测量不同面部特征的形状变化,在面部特征周围提取界标点。薄板样条线(TPS)用于对这些界标点的变形进行建模。 TPS映射功能的基本特性是它能够计算中性和情感图像帧之间的刚性和非刚性转换。刚性变换参数表示由头部运动引起的仿射参数,非刚性变换参数用作由情绪引起的面部特征变形的代表。为了证明TPS的建模能力,将非刚性参数馈入支持向量机进行情感识别。此外,尝试通过使用TPS变形功能来合成情绪。情感的非刚性变换的平均值用作将中性图像扭曲为情感图像的模板。为了评估所提出的方法,使用扩展的Cohn-Kanade数据库和JAFFE数据库,实验结果分别显示了95%和70%的准确性。

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