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Face Recognition using Hidden Markov Eigenface Models

机译:使用隐马尔可夫特征脸模型的人脸识别

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This paper proposes hidden Markov eigenface models (HMEMs) in which the eigenfaces are integrated into separable lattice hidden Markov models (SL-HMMs). SL-HMMs have been proposed for modeling multi-dimensional data, e.g., images, image sequences, 3-D objects. In its application to face recognition, SL-HMMs can perform an elastic image matching in both horizontal and vertical directions. However, SL-HMMs still have a limitation that the observations are assumed to be generated independently from corresponding states; it is insufficient to represent variations in face images, e.g., lighting conditions, facial expressions, etc. To overcome this problem, the structure of probabilistic principal component analysis (PPCA) and factor analysis (FA) is used as a probabilistic representation of eigenfaces. The proposed model has good properties of both PPCA/FA and SL-HMMs: a linear feature extraction and invariances to size and location of images. In face recognition experiments on the XM2VTS database, the proposed model improved the performance significantly
机译:本文提出了隐马尔可夫特征面模型(HMEM),其中特征面被集成到可分离的格子隐马尔可夫模型(SL-HMM)中。已经提出了SL-HMM用于建模多维数据,例如图像,图像序列,3-D对象。在将其应用于人脸识别时,SL-HMM可以在水平和垂直方向上执行弹性图像匹配。但是,SL-HMM仍然有一个局限性,即假定观测值独立于相应状态生成。为了克服这个问题,不足以表示面部图像的变化,例如,光照条件,面部表情等。为了解决此问题,将概率主成分分析(PPCA)和因子分析(FA)的结构用作特征脸的概率表示。所提出的模型具有PPCA / FA和SL-HMM的良好特性:线性特征提取以及图像大小和位置的不变性。在XM2VTS数据库上的人脸识别实验中,该模型显着提高了性能

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