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Sparse-MVRVMs Tree for Fast and Accurate Head Pose Estimation in the Wild

机译:稀疏MVRVMs树用于野外快速准确的头部姿势估计

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Head pose estimation is an important problem in the field of computer vision and facial analysis. We model the problem of head pose estimation as a regression problem, where the three rotation angles (yaw, pitch, roll) are functions of the face appearance. We make use of that fact and learn the appearance of the face using a tree cascade of sparse Multivariate Relevance Vector Machines (MVRVM). Our method is fast and suitable for real-time applications as it is not computationally expensive. Our method learns the face appearance to estimate the head rotation angles. We evaluated our approach on two challenging datasets, the YouTube Faces and the Point and Shoot Challenging (PaSC) dataset. We achieved results of head pose estimation (yaw, pitch, roll) with mean error less than 5o and with error tolerance less than ±4 on the PaSC dataset. In terms of speed, one prediction takes around 6 milliseconds, which is suitable for real-time applications and also with high frame rate.
机译:头部姿势估计是计算机视觉和面部分析领域中的重要问题。我们将头部姿势估计问题建模为一个回归问题,其中三个旋转角度(偏航角,俯仰角,横滚角)是面部外观的函数。我们利用这一事实,并使用稀疏的多元相关性向量机(MVRVM)的树级联来学习人脸的外观。我们的方法快速且适合实时应用,因为它在计算上并不昂贵。我们的方法学习面部外观以估计头部旋转角度。我们在两个具有挑战性的数据集(YouTube人脸和挑战性射击挑战(PaSC))数据集上评估了我们的方法。我们在PaSC数据集上获得了头部姿势估计(偏航,俯仰,横滚)的结果,平均误差小于5o,误差容差小于±4。在速度方面,一个预测大约需要6毫秒,这适合于实时应用并且还具有较高的帧速率。

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