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首页> 外文期刊>IEEE transactions on information forensics and security >A Customized Sparse Representation Model With Mixed Norm for Undersampled Face Recognition
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A Customized Sparse Representation Model With Mixed Norm for Undersampled Face Recognition

机译:欠采样的人脸识别的混合范数定制稀疏表示模型

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In this paper, a customized sparse representation model is proposed to take advantage of the variational information for undersampled face recognition. The proposed model with the mixed norm is a generalization of the extended sparse representation-based classification model. This model guarantees the sparsity of representation coefficient and the robustness for the variational information from generic data set. The mixed norm well fits the distribution of variational information (such as illumination, expression, poses, and occlusion) and the interference information (somewhat face-specific in generic data set) simultaneously. We compare the proposed method with the related methods on several popular face databases, including AR, CMU-PIE, Georgia, and LFW databases. The experimental results show that the proposed method outperforms several popular face recognition methods.
机译:本文提出了一种定制的稀疏表示模型,以利用变异信息进行欠采样的人脸识别。提出的带有混合范数的模型是对基于扩展稀疏表示的分类模型的推广。该模型保证了表示系数的稀疏性和通用数据集变异信息的鲁棒性。混合规范很好地适合变化信息的分布(例如照明,表情,姿势和遮挡)和干扰信息(在通用数据集中有些人脸特定)。我们在几种流行的人脸数据库(包括AR,CMU-PIE,乔治亚州和LFW数据库)上将提出的方法与相关方法进行了比较。实验结果表明,该方法优于几种流行的人脸识别方法。

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