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Entropy driven feature selection for facial expression recognition based on 3-D facial feature distances

机译:基于3-D面部特征距离的熵驱动特征选择用于表情识别

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Facial expressions contain a lot of information about the feelings of a human. It plays an important role in humancomputer interaction. In this paper, entropy based feature selection method applied to 3D facial feature distances is presented for a facial expression recognition system classifying the expressions into 6 basic classes based on 3-Dimensional (3D) face geometry. Our previous work on entropy based feature selection has been improved by employing 3D feature distances between the 83 points on the face as facial features. 3D distances are more robust to rotations of the face and involve more accurate information than 3D feature positions that are used in our previous work. Entropy is applied in order to rank the feature distances for feature selection. The system is tested on BU-3DFE database in person independent manner and provides encouraging recognition rates.
机译:面部表情包含许多有关人类感受的信息。它在人机交互中起着重要作用。本文针对基于3维(3D)人脸几何将表情分为6个基本类的人脸表情识别系统,提出了一种应用于3D人脸特征距离的基于熵的特征选择方法。通过使用面部的83个点之间的3D特征距离作为面部特征,我们以前基于熵的特征选择工作得到了改进。 3D距离比人脸旋转更健壮,并且比我们以前的工作中使用的3D特征位置包含更准确的信息。应用熵是为了对特征距离进行排名以进行特征选择。该系统以人独立的方式在BU-3DFE数据库上进行了测试,并提供令人鼓舞的识别率。

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