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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Differential components of discriminative 2D Gaussian-Hermite moments for recognition of facial expressions
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Differential components of discriminative 2D Gaussian-Hermite moments for recognition of facial expressions

机译:区分面部表情的判别式2D高斯-赫尔姆特矩的微分分量

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This paper deals with a new expression recognition method by representing facial images in terms of higher-order two-dimensional orthogonal Gaussian-Hermite moments (GHMs) and their geometric invariants. Only the moments having high discrimination power are selected as a set of features for expressions. To obtain the differentially expressive components of the moments, the discriminative GHMs are projected on to a new expression-invariant subspace using the correlations among the neutral faces. Features obtained from the discriminative moments and differentially expressive components of the moments are used to recognize an expression using the well-known support vector machine classifier. Experimental results presented are obtained from commonly-referred databases such as the CK-AUC, FRGC, and MMI that have posed or spontaneous expressions as well as the GENKI database that has expressions in-the-wild. Experiments on mutually exclusive subjects reveal that the performance of expression recognition of the proposed method is significantly better than that of the existing or similar methods, which use the local or patch-based high dimensional binary patterns, directional number patterns generated from derivatives of Gaussian, Gabor- or other moment-based features. (C) 2016 Elsevier Ltd. All rights reserved.
机译:本文通过用高阶二维正交高斯-赫尔米特矩(GHMs)及其几何不变量表示面部图像,提出了一种新的表情识别方法。仅将具有高判别力的矩选择为表达的一组特征。为了获得力矩的差异表达成分,使用中性面之间的相关性将判别式GHM投影到新的表达不变子空间上。使用已知的支持向量机分类器,从判别矩和矩的差异表达分量中获得的特征可用于识别表达式。呈现的实验结果是从经常提及的具有自发表达或自发表达的数据库(例如CK-AUC,FRGC和MMI)以及具有野生表达的GENKI数据库获得的。在互斥主题上进行的实验表明,该方法的表情识别性能明显优于现有或类似方法,后者使用基于局部或基于补丁的高维二进制模式,从高斯导数生成的方向数模式, Gabor或其他基于矩的功能。 (C)2016 Elsevier Ltd.保留所有权利。

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