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Facial Region Segmentation Based Emotion Recognition Using Extreme Learning Machine

机译:基于极限学习机的基于面部区域分割的情绪识别

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摘要

A framework to recognize human emotion through facial expression recognition is proposed in this paper where segmentation of the expression regions (right eye, left eye, nose, mouth) are done manually in an easy yet effective, unique manner by analyzing many facial expression images and the possible positions of the expression regions in those images. For feature extraction from the segmented parts 2D Gabor filter is used with multiple frequency and orientation. Redundant features from the extracted features are eliminated using downsampling. Finally, Extreme Learning Machine (ELM) is used to handle the classification process. For performance evaluation of the proposed method, four different datasets (JAFFE, CK+, RaFD, KDEF) have been used and impressive correct recognition rate on these four datasets indicates the capability of the proposed system to recognize human emotion through facial expression recognition of front-facing images.
机译:本文提出了一种通过面部表情识别来识别人的情感的框架,该框架通过分析许多面部表情图像并以一种简单而有效的独特方式手动完成表情区域(右眼,左眼,鼻子,嘴巴)的分割。这些图像中表达区域的可能位置。为了从分段零件中提取特征,使用了具有多个频率和方向的2D Gabor滤波器。使用下采样可以消除提取的特征中的冗余特征。最后,极限学习机(ELM)用于处理分类过程。为了评估所提出方法的性能,使用了四个不同的数据集(JAFFE,CK +,RaFD,KDEF),并且在这四个数据集上令人印象深刻的正确识别率表明,所提出的系统具有通过面部表情识别来识别人的情绪的能力。面对图像。

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