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Double sparse local fisher discriminant analysis for facial expression recognition

机译:面部表情识别的双稀疏局部Fisher判别分析

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In this paper, we propose a novel feature extraction method called double sparse local Fisher discriminant analysis (DSLFDA), which is an extension of the local Fisher discriminant analysis (LFDA) algorithm. The proposed method combines the idea of sparse representation to construct an adaptive graph to describe the structure information of the samples. Meanwhile, to obtain the sparse projection vectors, we first transform the original generalized eigenvalue problem to a regression-type problem with two variables. Then, l1 penalty was added to the objective function in the regression problem. One disadvantage of the sparse projection vectors is that which elements or regions of the pattern are important for each sparse projection vector. Experiments on the JAFEE and Cohn-Kande facial expression database show that the proposed DSLFDA is effective for recognition tasks and achieves competitive performance compared with other feature extraction methods.
机译:在本文中,我们提出了一种新的特征提取方法,称为双稀疏局部Fisher判别分析(DSLFDA),它是对局部Fisher判别分析(LFDA)算法的扩展。该方法结合了稀疏表示的思想,构造了一个自适应图来描述样本的结构信息。同时,为了获得稀疏的投影矢量,我们首先将原始的广义特征值问题转换为具有两个变量的回归型问题。然后,将l1罚分添加到回归问题的目标函数中。稀疏投影向量的一个缺点是图案的哪些元素或区域对于每个稀疏投影向量都很重要。在JAFEE和Cohn-Kande面部表情数据库上进行的实验表明,与其他特征提取方法相比,所提出的DSLFDA对于识别任务是有效的,并且具有竞争性能。

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