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Head Pose Estimation by a Stepwise Nonlinear Regression

机译:逐步非线性回归的头部姿态估计

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Head pose estimation is a crucial step for numerous face applications such as gaze tracking and face recognition. In this paper, we introduce a new method to learn the mapping between a set of features and the corresponding head pose. It combines a filter based feature selection and a Generalized Regression Neural Network where inputs are sequentially selected through a boosting process. We propose the Fuzzy Functional Criterion, a new filter used to select relevant features. At each step, features are evaluated using weights on examples computed using the error produced by the neural network at the previous step. This boosting strategy helps to focus on hard examples and selects a set of complementary features. Results are compared with three state-of-the-art methods on the Pointing 04 database.
机译:头部姿势估计对于诸如凝视跟踪和面部识别之类的众多面部应用而言是至关重要的一步。在本文中,我们介绍了一种新的方法来学习一组特征与相应的头部姿势之间的映射。它结合了基于滤波器的特征选择和广义回归神经网络,在广义神经网络中,通过提升过程依次选择输入。我们提出了模糊功能标准,这是一种用于选择相关特征的新过滤器。在每个步骤中,使用权重对示例进行权重评估,这些示例使用上一步中由神经网络产生的误差计算得出。这种提升策略有助于将重点放在困难的示例上,并选择一组互补的功能。将结果与Pointing 04数据库中的三种最新方法进行比较。

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