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A 3D facial expression recognition system based on SVM classifier using distance based features

机译:基于SVM分类器的基于距离特征的3D面部表情识别系统

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In this study, an SVM-based system is proposed for the classification of facial expressions that are represented in 3D. Distance based features are used as a feature vector, which are determined by the distances between the different key points on the image. Study was conducted on a subset (Happy, sadness, surprise) of Bosphorus 3D Face Database. 9 different fiducial points are used to calculate a total of 5 distance features. SVM classification was performed with K-fold cross validation thus mean classification performance of different training and test clusters were determined. %85 success rate has achieved as a result of the expression analysis performed on the 3D facial scans.
机译:在这项研究中,提出了一种基于SVM的系统,用于对以3D表示的面部表情进行分类。基于距离的特征用作特征向量,它由图像上不同关键点之间的距离确定。研究是对Bosphorus 3D人脸数据库的一个子集(快乐,悲伤,惊奇)进行的。使用9个不同的基准点来计算总共5个距离特征。 SVM分类通过K倍交叉验证执行,因此可以确定不同训练和测试聚类的分类性能。通过对3D面部扫描进行表情分析,可以达到\%85的成功率。

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