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Facial expression recognition using krawtchouk moments and support vector machine classifier

机译:使用krawtchouk矩和支持向量机分类器的面部表情识别

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In this paper, we have proposed an algorithm for facial expression recognition using Krawtchouk moments. In this method, useful facial patches are detected using Viola Jones algorithm. These detected patches are first preprocessed by performing Gaussian filtering and histogram equalization. As our facial expressions are mainly dependent on eyes and lips gestures so only these regions of interests are extracted. Computation of orthogonal moments is performed on extracted ROI at different spatial pyramid levels. These features are then concatenated so that both global and local features can be obtained. The dimensional space of the feature vector is reduced by using Neighbourhood Component Analysis (NCA) so that only relevant features with high expression information are selected. We use 10 fold cross validation to perform classification using binary Support Vector Machine (SVM) classifier. An efficiency of 95.62% and 95.31% on CK+ database and JAFFE database has been obtained respectively.
机译:在本文中,我们已经提出了一种使用Krawtchouk矩的面部表情识别算法。在该方法中,使用Viola Jones算法检测有用的面部贴片。首先通过执行高斯滤波和直方图均衡来预处理这些检测到的补丁。由于我们的面部表情主要依赖于眼睛和嘴唇手势,因此只提取这些兴趣区域。在不同空间金字塔水平下提取的ROI对正交矩的计算。然后连接这些功能,以便可以获得全局和本地特征。通过使用邻域分量分析(NCA)来减少特征向量的尺寸空间,从而仅选择具有高表达信息的相关特征。我们使用10倍交叉验证使用二进制支持向量机(SVM)分类器进行分类。 CK +数据库和jaffe数据库的效率为95.62 %和95.31 %。

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