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Human Facial Expression Recognition Using Stepwise Linear Discriminant Analysis and Hidden Conditional Random Fields

机译:基于逐步线性判别分析和隐藏条件随机场的人脸表情识别

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摘要

This paper introduces an accurate and robust facial expression recognition (FER) system. For feature extraction, the proposed FER system employs stepwise linear discriminant analysis (SWLDA). SWLDA focuses on selecting the localized features from the expression frames using the partial -test values, thereby reducing the within class variance and increasing the low between variance among different expression classes. For recognition, the hidden conditional random fields (HCRFs) model is utilized. HCRF is capable of approximating a complex distribution using a mixture of Gaussian density functions. To achieve optimum results, the system employs a hierarchical recognition strategy. Under these settings, expressions are divided into three categories based on parts of the face that contribute most toward an expression. During recognition, at the first level, SWLDA and HCRF are employed to recognize the expression category; whereas, at the second level, the label for the expression within the recognized category is determined using a separate set of SWLDA and HCRF, trained just for that category. In order to validate the system, four publicly available data sets were used, and a total of four experiments were performed. The weighted average recognition rate for the proposed FER approach was 96.37% across the four different data sets, which is a significant improvement in contrast to the existing FER methods.
机译:本文介绍了一种准确而强大的面部表情识别(FER)系统。对于特征提取,建议的FER系统采用逐步线性判别分析(SWLDA)。 SWLDA专注于使用部分测试值从表达式框架中选择局部特征,从而减少内部类差异并增加不同表达类之间的方差之间的较低关系。为了进行识别,使用了隐藏条件随机场(HCRF)模型。 HCRF能够使用高斯密度函数的混合来近似复杂分布。为了获得最佳结果,系统采用了分层识别策略。在这些设置下,根据对表情贡献最大的脸部,表情被分为三类。在识别过程中,在第一级使用SWLDA和HCRF识别表达类别。而在第二级,则使用单独的SWLDA和HCRF集合(仅针对该类别进行训练)来确定已识别类别中的表达标签。为了验证系统,使用了四个公开可用的数据集,并且总共进行了四个实验。所提出的FER方法在四个不同的数据集上的加权平均识别率为96.37%,与现有的FER方法相比有很大的提高。

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