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Fusion of Keypoint Tracking and Facial Landmark Detection for Real-Time Head Pose Estimation

机译:关键点跟踪和人脸地标检测的融合,用于实时头部姿态估计

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In this paper, we address the problem of extreme head pose estimation from intensity images, in a monocular setup. We introduce a novel fusion pipeline to integrate into a dedicated Kalman Filter the pose estimated from a tracking scheme in the prediction stage and the pose estimated from a detection scheme in the correction stage. To that end, the measurement covariance of the Kalman Filter is updated in every frame. The tracking scheme is performed using a set of keypoints extracted in the area of the head along with a simple 3D geometric model. The detection scheme, on the other hand, relies on the alignment of facial landmarks in each frame combined with 3D features extracted on a head mesh. The head pose in each scheme is estimated by minimizing the reprojection error from the 3D-2D correspondences. By combining both frameworks, we extend the applicability of head pose estimation from facial landmarks to cases where these features are no longer visible. We compared the proposed method to other related approaches, showing that it can achieve state-of-the-art performance. We also demonstrate that our approach is suitable for cases with extreme head rotations and (self-) occlusions, besides being suitable for real time applications.
机译:在本文中,我们解决了在单眼设置中根据强度图像估算极端头部姿势的问题。我们介绍了一种新颖的融合流水线,可以将预测阶段的跟踪方案估计的姿态和校正阶段的检测方案估计的姿态集成到专用的Kalman滤波器中。为此,在每一帧中更新卡尔曼滤波器的测量协方差。使用在头部区域中提取的一组关键点以及简单的3D几何模型来执行跟踪方案。另一方面,该检测方案依赖于每帧中面部标志的对齐方式与在头部网格上提取的3D特征相结合。通过最小化来自3D-2D对应关系的重投影误差,可以估算每种方案中的头部姿势。通过结合这两个框架,我们将头部姿势估计的适用性从面部标志扩展到了这些特征不再可见的情况。我们将提出的方法与其他相关方法进行了比较,表明它可以实现最新的性能。我们还证明了我们的方法除了适用于实时应用之外,还适用于头部剧烈旋转和(自)闭塞的情况。

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