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Multi-View Face Recognition By Nonlinear Dimensionality Reduction And Generalized Linear Models

机译:通过非线性维度降低和广义线性模型的多视图面部识别

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In this paper we propose a new general framework for real-time multi-view face recognition in real-world conditions, based on a novel nonlinear dimensionality reduction method IsoScale and Generalized Linear Models (GLMs). Multi-view face sequences of freely moving people are obtained from several stereo cameras installed in an ordinary room, and IsoScale is used to map the faces into a low-dimensional space where the manifold structure of the view-varied faces is preserved, but the face classes are forced to be linearly separable. Then a GLM-based linear map is learnt between the low-dimensional face representation and the classes, providing posterior probabilities of class membership for the test faces. The benefits of the proposed method are illustrated in a typical HCI application.
机译:在本文中,我们提出了一种新的一般框架,用于基于一种新的非线性维度减少方法IS尺度和广义线性模型(GLM)的实际情况下的实时多视图面部识别的新一般框架。自由移动人员的多视图面序列是从安装在普通空间中的若干立体声相机获得的,并且使用镜头将面映射到低维空间中,其中保留了视图变化面的歧管结构,但是面部课程被迫线性可分离。然后在低维面部表示和类之间学习基于GLM的线性图,为测试面提供类成员资格的后验概率。所提出的方法的益处在典型的HCI应用中示出。

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