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Learning Neighborhood Discriminative Manifolds for Video-Based Face Recognition

机译:学习邻域判别流形以基于视频的人脸识别

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In this paper, we propose a new supervised Neighborhood Discriminative Manifold Projection (NDMP) method for feature extraction in video-based face recognition. The abundance of data in videos often result in highly nonlinear appearance manifolds. In order to extract good discriminative features, an optimal low-dimensional projection is learned from selected face exemplars by solving a constrained least-squares objective function based on both local neighborhood geometry and global manifold structure. The discriminative ability is enhanced through the use of intra-class and inter-class neighborhood information. Experimental results on standard video databases and comparisons with state-of-art methods demonstrate the capability of NDMP in achieving high recognition accuracy.
机译:在本文中,我们提出了一种新的受监督的邻域判别流形投影(NDMP)方法,用于基于视频的人脸识别中的特征提取。视频中的大量数据通常会导致高度非线性的外观流形。为了提取良好的判别特征,通过基于局部邻域几何和全局流形结构来求解约束最小二乘目标函数,从选定的面部样本中学习最佳的低维投影。通过使用类内和类间邻域信息可以增强判别能力。在标准视频数据库上进行的实验结果以及与最新方法的比较证明了NDMP具有实现高识别精度的能力。

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