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Head Pose Estimation with Improved Random Regression Forests

机译:改进随机回归森林的头部姿态估计

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摘要

Perception of head pose is useful for many face-related tasks such as face recognition, gaze estimation, and emotion analysis. In this paper, we propose a novel random forest based method for estimating head pose angles from single face images. In order to improve the effectiveness of the constructed head pose predictor, we introduce feature weighting and tree screening into the random forest training process. In this way, the features with more discriminative power are more likely to be chosen for constructing trees, and each of the trees in the obtained random forest usually has high pose estimation accuracy, while the diversity or generalization ability of the forest is not deteriorated. The proposed method has been evaluated on four public databases as well as a surveillance dataset collected by ourselves. The results show that the proposed method can achieve state-of-the-art pose estimation accuracy. Moreover, we investigate the impact of pose angle sampling intervals and heterogeneous face images on the effectiveness of trained head pose predictors.
机译:头部姿势感知对于许多与面部相关的任务很有用,例如面部识别,注视估计和情绪分析。在本文中,我们提出了一种基于随机森林的新颖方法,用于从单脸图像估计头部姿势角度。为了提高构造的头部姿态预测器的有效性,我们将特征加权和树筛选引入到随机森林训练过程中。这样,更有可能选择具有更大判别力的特征来构建树木,并且所获得的随机森林中的每棵树木通常具有较高的姿态估计精度,而森林的多样性或泛化能力不会降低。该方法已经在四个公共数据库以及我们自己收集的监视数据集上进行了评估。结果表明,所提出的方法可以达到最新的姿态估计精度。此外,我们研究了姿势角度采样间隔和异构面部图像对训练后的头部姿势预测器的有效性的影响。

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