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Face recognition based on Volterra kernels direct discriminant analysis and effective feature classification

机译:面部识别基于Volterra内核直接判别分析和有效特征分类

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We present a novel face recognition method based on direct discriminant Volterra kernels and effective feature classification (DD-VK). One of the crucial steps involves dividing face images into patches and using the DD-VK method to extract the features of sub image patches. DD-VK implements diagonalization to discard useless information in the null space of the inter-class scatter matrix and preserve important discriminant information in the null space of the intra-class scatter matrix. This method can simultaneously maximize inter-class distances and minimize intra-class distances in the feature space. We also introduce a novel classification scheme associated with the 2D Volterra kernel feature. Our scheme aggregates the classification information obtained from each column of the feature matrix in each image patch and uses a voting strategy to implement parent face image classification. This procedure can reduce the influence of local negative information. Experimental results show that the proposed method demonstrates good performance when dealing with conventional face recognition problems and exhibits strong robustness when dealing with block occlusion images. (C) 2018 Elsevier Inc. All rights reserved.
机译:我们提出了一种基于直接判别volterra仁和有效特征分类(DD-VK)的新型面部识别方法。其中一个关键步骤涉及将面部图像划分为斑块并使用DD-VK方法提取子图像斑块的特征。 DD-VK实现对角化以丢弃类别散射矩阵的空白区域中的无用信息,并在类帧分散矩阵的空白区域中保留重要的判别信息。该方法可以同时最大化帧间距离,并最大限度地减少特征空间中的类内距离。我们还介绍了与2D Volterra Kernel功能相关的新型分类方案。我们的方案聚合从每个图像修补程序中的特征矩阵的每列获得的分类信息,并使用投票策略来实现父面图像分类。该过程可以减少局部负面信息的影响。实验结果表明,当处理块闭塞图像时,所提出的方法在处理传统的面部识别问题时表现出良好的性能。 (c)2018年Elsevier Inc.保留所有权利。

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