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首页> 外文期刊>International Journal of Applied Engineering Research >Improving the Classification Accuracy of Emotion Recognition using Facial Expressions
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Improving the Classification Accuracy of Emotion Recognition using Facial Expressions

机译:利用面部表情提高情绪识别的分类精度

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摘要

The science of image processing helps to recognize the human gesture for general life applications. Human gestures can be identified by observing the different movements of eyes, mouth, nose and hands. The face is a rich source of information about human behavior. The proposed method of facial expression recognition system is based on PCA and Neural Networks, to recognize the facial expression from a well captured image by means of extracting the features of face. This paper presents classification accuracy of neural network with principal component analysis (PCA) for feature selections in emotion recognition using different facial expressions. Dimensionality reduction of a feature set is a common preprocessing step used for pattern recognition and classification applications. From the experimental results it is concluded that, neural networks with PCA is effective in emotion recognition using facial expressions, in which it is attained a recognition rate of approximately 85% when testing six emotions on benchmark image data set.
机译:图像处理科学有助于识别人类在一般生活中的手势。可以通过观察眼睛,嘴巴,鼻子和手的不同运动来识别人的手势。面部是有关人类行为的丰富信息来源。所提出的面部表情识别系统的方法基于PCA和神经网络,通过提取面部特征从良好捕获的图像中识别面部表情。本文介绍了使用主成分分析(PCA)进行神经网络分类的准确性,该特征用于使用不同面部表情进行情感识别的特征选择。特征集的降维是用于模式识别和分类应用程序的常见预处理步骤。从实验结果可以得出结论,带有PCA的神经网络可以有效地使用面部表情识别情绪,其中在基准图像数据集上测试六种情绪时,其识别率约为85%。

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