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Real time head pose estimation with random regression forests

机译:随机回归森林的实时头部姿态估计

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Fast and reliable algorithms for estimating the head pose are essential for many applications and higher-level face analysis tasks. We address the problem of head pose estimation from depth data, which can be captured using the ever more affordable 3D sensing technologies available today. To achieve robustness, we formulate pose estimation as a regression problem. While detecting specific face parts like the nose is sensitive to occlusions, learning the regression on rather generic surface patches requires enormous amount of training data in order to achieve accurate estimates. We propose to use random regression forests for the task at hand, given their capability to handle large training datasets. Moreover, we synthesize a great amount of annotated training data using a statistical model of the human face. In our experiments, we show that our approach can handle real data presenting large pose changes, partial occlusions, and facial expressions, even though it is trained only on synthetic neutral face data. We have thoroughly evaluated our system on a publicly available database on which we achieve state-of-the-art performance without having to resort to the graphics card.
机译:对于许多应用和高级面部分析任务而言,用于估计头部姿势的快速可靠算法都是必不可少的。我们解决了根据深度数据进行头部姿势估计的问题,可以使用当今更便宜的3D传感技术来捕获该姿势。为了实现鲁棒性,我们将姿势估计公式化为回归问题。虽然检测到鼻子等特定的面部部位对遮挡很敏感,但要了解相当通用的表面斑块的回归效果,就需要大量的训练数据才能获得准确的估计值。考虑到它们处理大型训练数据集的能力,我们建议将随机回归森林用于手头的任务。此外,我们使用人脸统计模型合成了大量带注释的训练数据。在我们的实验中,我们证明了我们的方法可以处理呈现大姿势变化,部分遮挡和面部表情的真实数据,即使仅对合成的中性面部数据进行了训练也是如此。我们已经在可公开获取的数据库上对我们的系统进行了彻底的评估,该数据库可以在不依靠图形卡的情况下实现最先进的性能。

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