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Facial Expression Recognition Based on Local Features and Monogenic Binary Coding

机译:基于局部特征和单基因二进制编码的人脸表情识别

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Facial expression is a recognition technology for biological features, which is very significant and practical and has bright market prospects and fast development. In the study, monogenic binary coding algorithm was first considered to illustrate its operation process and good matching with local features through the analysis of monogenic signal theory and monogenic binary algorithm. Then, the results of facial expression recognition simulation experiment of monogenic based on classical facial expression database, Japanese Female Facial Expression (JAFFE) Database, and the results of traditional Local Binary Patterns-Sparse Representation-based Classification (LBP-SRC) residual fusion method were compared to illustrate the efficiency of monogenic binary coding algorithm in the aspect of facial recognition and provide a basis for the application of monogenic signal theory in facial expression.
机译:面部表情是一种对生物特征的识别技术,非常重要和实用,具有广阔的市场前景和快速发展。在研究中,首先通过分析单基因信号理论和单基因二进制算法,首先考虑了单基因二进制编码算法来说明其工作过程并与局部特征良好匹配。然后,基于经典面部表情数据库,日本女性面部表情(JAFFE)数据库进行的单基因面部表情识别模拟实验的结果,以及传统的基于本地二元模式-基于稀疏表示的分类(LBP-SRC)残差融合方法的结果进行了比较,以说明单基因二进制编码算法在面部识别方面的效率,并为单基因信号理论在面部表情中的应用提供了依据。

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