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3D-MAM: 3D Morphable Appearance Model for Efficient Fine Head Pose Estimation from Still Images

机译:3D-MAM:3D可线性外观模型,用于静止图像的高效细头姿态估计

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Identity-invariant estimation of head pose from still images is a challenging task due to the high variability of facial appearance. We present a novel 3D head pose estimation approach, which utilizes the flexibility and expressibility of a dense generative 3D facial model in combination with a very fast fitting algorithm. The efficiency of the head pose estimation is obtained by a 2D synthesis of the facial input image. This optimization procedure drives the appearance and pose of the 3D facial model In contrast to many other approaches we are specifically interested in the more difficult task of head pose estimation from still images, instead of tracking faces in image sequences. We evaluate our approach on two publicly available databases (FacePix and USF HumanID) and compare our method to the 3D morphable model and other state of the art approaches in terms of accuracy and speed.
机译:由于面部外观的高可变性,静止图像的头部姿势的身份不变估计是一个具有挑战性的任务。我们提出了一种新颖的3D头姿势估计方法,其利用致密生成3D面部模型与非常快速的拟合算法的灵活性和表达性。通过面部输入图像的2D合成来获得头部姿势估计的效率。这种优化过程与许多其他方法对比我们专门对来自静止图像的头部姿势估计的更困难任务的许多其他方法来驱动3D面部模型的外观和姿势,而不是在图像序列中跟踪面。我们在两个公开的数据库(Facepix和USF Humanid)上评估我们的方法,并在准确性和速度方面将我们的方法与其他现有技术的方法进行比较。

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