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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Combining 2D Gabor and Local Binary Pattern for Facial Expression Recognition Using Extreme Learning Machine
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Combining 2D Gabor and Local Binary Pattern for Facial Expression Recognition Using Extreme Learning Machine

机译:使用极端学习机结合2D Gabor和局部二进制模式进行面部表情识别

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摘要

The efficiency of facial expression recognition (FER) is important for human-robot interaction. Detection of the facial region, extraction of discriminative facial expression features, and identification of categories of facial expressions are all related to the recognition accuracy and time-efficiency. An FER framework is proposed, in which 2D Gabor and local binary pattern (LBP) are combined to extract discriminative features of salient facial expression patches, and extreme learning machine (ELM) is adopted to identify facial expression categories. The combination of 2D Gabor and LBP can not only describe multiscale and multidirectional textural features, but also capture small local details. The FER of ELM and support vector machine (SVM) is performed using the Japanese female facial expression database and extended Cohn-Kanade database, respectively, in which both ELM and SVM achieve an accuracy of more than 85%, and the computational efficiency of ELM is higher than that of SVM. The proposed framework has been used in the multimodal emotional communication based humans-robots interaction system, in which FER within 2 seconds enables real-time human-robot interaction.
机译:面部表情识别(FER)的效率对于人机相互作用是重要的。检测面部区域,提取鉴别的面部表情特征,以及面部表情类别的鉴定均与识别准确度和时间效率有关。提出了一种FER框架,其中组合了2D Gabor和局部二进制图案(LBP)以提取显着面部表情贴片的辨别特征,并采用极端学习机(ELM)来识别面部表情类别。 2D Gabor和LBP的组合不仅可以描述多尺度和多向纹理特征,还可以捕获小的本地细节。榆树和支持向量机(SVM)的FER分别使用日本女性面部表情数据库和扩展COHN-KANADE数据库进行,其中ELM和SVM都达到了85%以上的准确性,以及ELM的计算效率高于SVM。所提出的框架已用于基于多模式的情绪通信的人机 - 机器人交互系统,其中2秒内的FER实现了实时人员机器人交互。

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