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Head pose estimation method based on pose manifold and tensor decomposition

机译:基于姿态流形和张量分解的头部姿态估计方法

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摘要

Pose manifold and tensor decomposition are used to represent the nonlinear changes of multi-view faces for pose estimation, which cannot be well handled by principal component analysis or multilinear analysis methods. A pose manifold generation method is introduced to describe the nonlinearity in pose subspace. And a nonlinear kernel based method is used to build a smooth mapping from the low dimensional pose subspace to the high dimensional face image space. Then the tensor decomposition is applied to the nonlinear mapping coefficients to build an accurate multi-pose face model for pose estimation. More importantly, this paper gives a proper distance measurement on the pose manifold space for the nonlinear mapping and pose estimation. Experiments on the identity unseen face images show that the proposed method increases pose estimation rates by 13.8% and 10.9 % against principal component analysis and multilinear analysis based methods respectively. Thus, the proposed method can be used to estimate a wide range of head poses.
机译:姿态流形和张量分解用于表示多视图面部的非线性变化以进行姿势估计,而主成分分析或多线性分析方法无法很好地处理这些变化。介绍了一种姿势流形生成方法来描述姿势子空间中的非线性。然后使用基于非线性核的方法构建从低维姿态子空间到高维人脸图像空间的平滑映射。然后将张量分解应用于非线性映射系数,以建立用于姿势估计的精确多姿势人脸模型。更重要的是,本文针对非线性映射和姿态估计在姿态歧管空间上给出了适当的距离测量。对身份不可见的人脸图像进行的实验表明,与基于主成分分析和基于多线性分析的方法相比,该方法分别将姿势估计率提高了13.8%和10.9%。因此,所提出的方法可以用于估计广泛的头部姿势。

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