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Happy-Sad Expression Recognition Using Emotion Geometry Feature and Support Vector Machine

机译:基于情感几何特征和支持向量机的快乐悲伤表情识别

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Currently human-computer interaction, especially emotional interaction, still lacks intuition. In health care, it is very important for the medical robot, who assumes the responsibility of taking care of patients, to understand the patient's feeling, such as happiness and sadness. We propose an approach to facial expression recognition for estimating patients' emotion. Two expressions (happiness and sadness) are classified in this paper. Our method uses a novel geometric feature parameter, which we call the Emotion Geometry Feature (EGF). The active shape model (ASM), which can be categorized mainly for non-rigid shapes, is used to locate Emotion Geometry Feature (EGF) points. Meanwhile, the Support Vector Machine (SVM) is used to do classification. Our method was tested on a Japanese Female Facial Expression (JAFFE) database. Experimental results, with the average recognition rate of 97.3%, show the efficiency of our method.
机译:当前,人机交互,特别是情感交互,仍然缺乏直觉。在医疗保健中,承担责任照顾病人的医疗机器人了解病人的感觉(例如幸福和悲伤)非常重要。我们提出一种面部表情识别方法,以估计患者的情绪。本文对两种表达方式(幸福和悲伤)进行了分类。我们的方法使用了一种新颖的几何特征参数,我们将其称为“情感几何特征(EGF)”。活动形状模型(ASM)主要用于非刚性形状,可用于定位“情感几何特征”(EGF)点。同时,使用支持向量机(SVM)进行分类。我们的方法在日本女性面部表情(JAFFE)数据库上进行了测试。实验结果表明,该方法是有效的,平均识别率为97.3%。

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