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Multi-view face recognition based on tensor subspace analysis and view manifold modeling

机译:基于张量子空间分析和视图流形建模的多视图人脸识别

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摘要

This paper aims to address the face recognition problem with a wide variety of views. We proposed a tensor subspace analysis and view manifold modeling based multi-view face recognition algorithm by improving the TensorFace based one. Tensor subspace analysis is applied to separate the identity and view information of multi-view face images. To model the nonlinearity in view subspace, a novel view manifold is introduced to TensorFace. Thus, a uniform multi-view face model is achieved to deal with the linearity in identity subspace as well as the nonlinearity in view subspace. Meanwhile, a parameter estimation algorithm is developed to solve the view and identity factors automatically. The new face model yields improved facial recognition rates against the traditional TensorFace based method.
机译:本文旨在以多种观点解决人脸识别问题。通过改进基于TensorFace的张量子空间分析和视图流形建模,提出了一种基于张量子空间的多视图人脸识别算法。张量子空间分析用于分离多视图面部图像的身份和视图信息。为了对视图子空间中的非线性进行建模,向TensorFace中引入了一种新颖的视图流形。因此,实现了统一的多视图人脸模型来处理标识子空间中的线性以及视图子空间中的非线性。同时,开发了一种参数估计算法来自动解决视图和身份因素。与传统的基于TensorFace的方法相比,新的面部模型可提高面部识别率。

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