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首页> 外文期刊>Journal of computer sciences >Performance Analysis of LDA, AdaBoost and Ensemble Bag Classifiers for Automatically Recognizing Nine Common Facial Expressions
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Performance Analysis of LDA, AdaBoost and Ensemble Bag Classifiers for Automatically Recognizing Nine Common Facial Expressions

机译:用于自动识别九种常见面部表情的LDA,AdaBoost和集成袋分类器的性能分析

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Facial expression recognition holds a prominent role in today’s digital world with more Human –Computer Interaction happening in day to day life. Successful identification of facial expressions needs extraction of descriptive attributes from the active facial patches and accurate classification. This paper is presented with the comparison of three multi class classifiers namely Linear Discriminant Analysis, AdaBoost and Ensemble bag. Nine common facial emotions such as happiness, sad, anger, fear, disgust, surprised, confused, neutral and sleepy are recognized and classified. The feature descriptors are formed by combining Local Binary Patterns and Grey Level Co-occurrence Matrix. Feature descriptor formed from LBP operator supports handling the illumination invariance in the image and GLCM being capable of deriving second order textual information proves to be a good feature descriptor. Twenty-one active facial patches are extracted from the facial land marks eyebrows, iris, nose, sides of nose and lip corners. Feature vectors are generated for these twenty one facial patches, which considerably reduced the dimension feature vectors for classification. Each classifier is then trained using training set which consists of feature vector and corresponding expression of the image used for training. After training testing was done and the accuracy of recognition are analyzed. The experiments were done on facial expression data bases JAFFE and YALE. The proposed method obtained an accuracy of 98.03% for recognizing nine expressions.
机译:面部表情识别在当今的数字世界中起着举足轻重的作用,在日常生活中发生了更多的人机交互。成功识别面部表情需要从活动面部补丁中提取描述属性并进行准确分类。本文介绍了线性判别分析,AdaBoost和Ensemble bag这三个多类分类器的比较。识别并分类了九种常见的面部表情,例如幸福,悲伤,愤怒,恐惧,厌恶,惊讶,困惑,中立和困倦。通过结合局部二进制模式和灰度共生矩阵来形成特征描述符。由LBP运算符形成的特征描述符支持处理图像中的照度不变,并且能够导出二阶文本信息的GLCM被证明是很好的特征描述符。从面部眉毛,虹膜,鼻子,鼻子的侧面和唇角提取二十一个活动的面部补丁。为这二十一个面部补丁生成特征向量,这大大减少了用于分类的维度特征向量。然后使用训练集对每个分类器进行训练,该训练集由特征向量和用于训练的图像的相应表达式组成。训练测试完成后,分析识别的准确性。实验是在面部表情数据库JAFFE和YALE上完成的。所提出的方法识别九种表情的准确率达98.03%。

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