Joint Spatial Geometric and Max-margin Classifier Constraints for Facial Expression Recognition Using Nonnegative Matrix Factorization

Thanh Trong Phan, D. V. Thang
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Abstract

Based on the constrained non-negative matrix factor algorithm, the article presents a new approach to facial recognition recognition. Our proposed method incorporated two tasks in an automatic expression analysis system: facial feature extraction and classification into expressions. To obtain local and geometric structure information in the data as much as possible, we amalgamate max-margin relegation into the constrained NMF optimization, resulting in a multiplicative updating algorithm is additionally proposed for solving optimization quandary. Experimental results on JAFFE dataset demonstrate that the effectiveness of the proposed method with improved performances over the conventional dimension reduction methods.
基于非负矩阵分解的面部表情识别联合空间几何和最大边界分类器约束
基于约束非负矩阵因子算法,提出了一种人脸识别的新方法。我们提出的方法结合了自动表情分析系统的两个任务:面部特征提取和表情分类。为了尽可能多地获取数据中的局部结构信息和几何结构信息,我们将最大边界降级合并到约束NMF优化中,从而提出了一种乘法更新算法来解决优化难题。在JAFFE数据集上的实验结果表明,该方法比传统的降维方法具有更高的性能。
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