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首页> 外文期刊>International Journal of Pattern Recognition and Artificial Intelligence >REAL-TIME FACIAL POSE IDENTIFICATION WITH HIERARCHICALLY STRUCTURED ML POSE CLASSIFIER
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REAL-TIME FACIAL POSE IDENTIFICATION WITH HIERARCHICALLY STRUCTURED ML POSE CLASSIFIER

机译:使用分层结构的ML姿势分类器进行实时面部姿势识别

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摘要

Since pose-varying face images form nonlinear convex manifold in high dimensional image space, it is difficult to model their pose distribution in terms of a simple probabilistic density function. To solve this difficulty, we divide the pose space into many constituent pose classes and treat the continuous pose estimation problem as a discrete pose-class identification problem. We propose to use a hierarchically structured ML (Maximum Likelihood) pose classifiers in the reduced feature space to decrease the computation time for pose identification, where pose space is divided into several pose groups and each group consists of a number of similar neighboring poses. We use the CONDENSATION algorithm to find a newly appearing face and track the face with a variety of poses in real-time. Simulation results show that our proposed pose identification using the hierarchically structured ML pose classifiers can perform a faster pose identification than conventional pose identification using the flat structured ML pose classifiers. A real-time facial pose tracking system is built with high speed hierarchically structured ML pose classifiers.
机译:由于姿态变化的面部图像在高维图像空间中形成了非线性凸流形,因此很难根据简单的概率密度函数对它们的姿态分布进行建模。为了解决这个困难,我们将姿势空间划分为许多组成的姿势类别,并将连续姿势估计问题视为离散的姿势类别识别问题。我们建议在减少的特征空间中使用分层结构的ML(最大似然)姿势分类器,以减少姿势识别的计算时间,其中姿势空间分为几个姿势组,每个组由多个相似的相邻姿势组成。我们使用CONDENSATION算法查找新出现的脸部并实时跟踪各种姿势的脸部。仿真结果表明,我们提出的使用分层结构的ML姿势分类器的姿势识别比使用平面结构的ML姿势分类器的常规姿势识别可以执行更快的姿势识别。实时面部姿势跟踪系统使用高速分层结构的ML姿势分类器构建。

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