保持整个Gabor核局域性的Fisher判别分析:表达式识别的子空间方法

G. Hegde, M. Seetha
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引用次数: 0

摘要

本工作的重要目标是通过增强Gabor的相位部分来利用整个Gabor特征,并通过保留局部信息来最大化非线性域空间中的fisher比率。提出了保持整个Gabor核局域性的Fisher判别分析方法。Gabor幅度和空间增强相一致性部分分别用于特征提取。通过保留数据的核判别局域结构,将这两个向量特征空间投影到KLPFDA子空间中。投影子空间通过z分数归一化进行归一化。两个归一化分数采用最大融合规则进行融合。利用欧氏距离算法对训练图像集和测试图像集的最终得分进行距离匹配,并实现支持向量机分类器对表达式进行分类。性能分析是通过比较以前的方法来进行的。在JAFFE、Yale和FD数据库上的实验结果证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Entire Gabor kernel locality preserving Fisher discriminant analysis: Subspace approach for expression recognition
The important objective of this work is to utilization of entire Gabor features by enhancing the phase part of the Gabor and maximizing the Fishers ratio in nonlinear domain space by preserving the local information. Entire Gabor kernel locality preserving Fisher discriminant analysis (EGKLPFDA) approach is proposed. Both Gabor magnitude and spatially enhanced phase congruency parts are separately used for feature extraction. These two vector feature space is projected into KLPFDA subspace method by preserving the kernel discriminant locality structure of data. Projected subspace is normalized by Z-score normalization. Both normalized scores are fused by maximum fusion rule. Final score obtained from train and test image sets are used to distance matching using Euclidean distance algorithm and support vector machine (SVM) classifier is implemented to classify the expressions. Performance analysis is carried out by comparing earlier approaches. Experimental results on JAFFE, Yale, and FD database demonstrate the effectiveness of the proposed approach.
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