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Facial expression recognition based on mixture of basic expressions and intensities

机译:基于基本表情和强度混合的表情识别

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摘要

Facial expression recognition can provide rich emotional information for human-robot interaction. This paper presents a facial expression recognition design that recognizes facial expressions as well as intensity and mixture ratio of six basic facial expressions. In this system, Active Appearance Model (AAM) and Lucas-Kanade image alignment algorithms are adopted to align the input facial images to obtain texture features. A novel method is proposed to recognize mixture ratio of basic facial expressions and the intensity of the expression. Three kinds of texture features are used in this method: 1. texture features of the whole face, which are used as inputs of facial expression intensity recognition; 2. texture features of the upside face, which are used as inputs of upper face action units recognition; 3. texture features of the downside face, which are used as the inputs of lower face action units recognition. Back propagation neural networks are used to obtain the recognition scores, which are then exploited to classify the facial expression results. Experimental results verified that the proposed method can effectively recognize mixture ratio of six basic expressions and the expression intensity.
机译:面部表情识别可以为人机交互提供丰富的情感信息。本文提出了一种面部表情识别设计,可以识别面部表情以及六种基本面部表情的强度和混合比。在该系统中,采用主动外观模型(AAM)和Lucas-Kanade图像对齐算法来对齐输入的面部图像以获得纹理特征。提出了一种识别面部基本表情混合比例和表情强度的新方法。此方法使用三种纹理特征:1.整个面部的纹理特征,用作面部表情强度识别的输入; 2.上脸的纹理特征,用作上脸动作单元识别的输入; 3.下脸的纹理特征,用作下脸动作单元识别的输入。反向传播神经网络用于获取识别分数,然后将其用于对面部表情结果进行分类。实验结果证明,该方法能够有效识别六个基本表达的混合比例和表达强度。

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