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Discriminative analysis based nonlinear subspace approach for expression recognition

机译:基于辨证分析的表达识别非线性子空间方法

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Most of the earlier expression recognition system based on nonlinear subspace methods not able to solve the discriminative problems of feature extraction, locality structure preservation and dimensional reduction by increasing the Fishers ratio of discriminant analysis. In this work, adaptive combination approach is framed by combining geometrical and holistic features. Both Gabor magnitude feature vector (GMFY) and enhanced Gabor phase feature vector (GPFV) are separately isolated and feature level fusion is carried out by combining with geometrical distance feature vector (GDFY). Fused phase part was aligned with discrete wavelet moment (DWT) features. High dimensional space was projected into low dimensional subspace by kernel locality preserving Fisher discriminant analysis method. Projected subspace is normalized and final scores of projected space were fused using maximum fusion rule. Expressions are classified using Euclidean distance matching and support vector machine radial basis function kernel classifier. The whole proposed approach is abbreviated as ACEGKLPFDA. An experimental result reveals that the proposed approach is effective for dimension reduction, efficient recognition and classification. Performance of proposed approach is measured in comparison with related subspace approaches. The best average recognition rate achieves 97.61% for JAFFE and 95.62% FD database respectively.
机译:基于非线性子空间方法的大多数早期表达识别系统不能解决特征提取的辨别问题,通过增加判别分析的渔民比来解决特征提取,地区结构保存和尺寸减少。在这项工作中,通过组合几何和整体特征来框架自适应组合方法。单独分离出Gabor幅度特征载体(GMFY)和增强的Gabor相位特征向量(GPFV),并且通过与几何距离特征向量(GDFY)组合来执行特征级融合。熔融相位部分与离散小波力矩(DWT)特征对齐。通过内核判别分析方法将高维空间投射到低维子空间中。预计子空间是标准化的,并且使用最大融合规则融合了预测空间的最终分数。表达式使用欧几里德距离匹配和支持向量机径向基函数内核分类器进行分类。整个建议的方法都是Acegklpfda的缩写。实验结果表明,所提出的方法对于维度减少,高效识别和分类是有效的。与相关子空间方法相比,测量了所提出的方法的性能。最佳平均识别率分别为贾维埃和95.62%的FD数据库实现了97.61%。

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