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Significance of facial features in performance of automatic facial expression recognition

机译:面部特征在自动面部表情识别中的意义

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Automatic facial expression recognition is a fascinating and challenging problem, and impacts important applications in many areas such as human-computer interaction (HCI) and robotics. In this paper an automatic facial expression recognition method is proposed, we are applying face detection methods to an image from the dataset to get face image and its important parts like eyes, nose and mouth automatically. Local binary patterns are used as feature extractor and for classification a strong machine learning classification tool support vector machine is used. Our experiments illustrate that the LBP provide a compact and discriminative facial representation and by adopting Support Vector Machines we obtained the best recognition performance of 95.83% on Cohn-Kanade database, which is better than contemporary methods. We experimentally illustrate that eyes and mouth play a significant role in facial expression recognition.
机译:自动面部表情识别是一个引人入胜且具有挑战性的问题,它影响了许多领域的重要应用,例如人机交互(HCI)和机器人技术。本文提出了一种自动表情识别方法,将人脸检测方法应用于数据集中的图像,以自动获取人脸图像及其重要部位,如眼睛,鼻子和嘴巴。局部二进制模式用作特征提取器,并使用强大的机器学习分类工具支持向量机进行分类。我们的实验表明,LBP提供了紧凑而有区别的面部表情,并且通过采用支持向量机,我们在Cohn-Kanade数据库上获得了95.83%的最佳识别性能,这比现代方法要好。我们实验表明,眼睛和嘴巴在面部表情识别中起着重要作用。

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