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Biased Metric Learning for Person-Independent Head Pose Estimation

机译:偏见的公制学习人格独立的头部姿势估计

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In this paper, a new biased metric learning (BML) method is proposed for human head pose estimation problem. Traditional approaches focus on modeling a smooth low-dimensional manifold embedded in the high-dimensional feature space. Such manifold-embedding methods, linear or nonlinear, suffer from one common drawback, that all neighbors are identified based on the Euclidean distance in the original feature space. However, the nature local structure of data is always corrupted by various factors in this original feature space. The proposed BML method aims at obtaining a global optimal linear transformation from the input feature space into a new semantic space which is characterized by pose angles. The metric is trained with the goal that local semantic structure of data with same label is preserved while the biased distance of differently labeled data is maximized. The learning process also reduces to a convex optimization by formulating it as a semidefinite problem (SDP). Numerous experiments demonstrate the superiority of our BML method over several current states of art approaches on publicly available dataset.
机译:本文提出了一种新的偏置度量学习(BML)方法,用于人头姿势估计问题。传统方法专注于建模嵌入在高维特征空间中的光滑低维歧管。这种歧管嵌入方法,线性或非线性遭受一个共同缺点,即所有邻居都是基于原始特征空间中的欧几里德距离来识别的。但是,该原始特征空间中的各种因素始终损坏数据的自然局部结构。所提出的BML方法旨在从输入要素空间获得从输入要素空间的全局最佳线性变换到一个以姿势角度为特征的新语义空间。测量度量训练,目标是,保留具有相同标签的局部语义结构,同时不同标记数据的偏差距离最大化。学习过程还通过将其作为SemideFinite问题(SDP)制定来减少凸优化。众多实验证明了我们的BML方法在公共数据集上的几个现有技术态度上的优势。

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