Fast Newton active appearance models

Jean Kossaifi, Georgios Tzimiropoulos, M. Pantic
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引用次数: 13

Abstract

Active Appearance Models (AAMs) are statistical models of shape and appearance widely used in computer vision to detect landmarks on objects like faces. Fitting an AAM to a new image can be formulated as a non-linear least-squares problem which is typically solved using iterative methods. Owing to its efficiency, Gauss-Newton optimization has been the standard choice over more sophisticated approaches like Newton. In this paper, we show that the AAM problem has structure which can be used to solve efficiently the original Newton problem without any approximations. We then make connections to the original Gauss-Newton algorithm and study experimentally the effect of the additional terms introduced by the Newton formulation on both fitting accuracy and convergence. Based on our derivations, we also propose a combined Newton and Gauss-Newton method which achieves promising fitting and convergence performance. Our findings are validated on two challenging in-the-wild data sets.
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快速牛顿活跃外观模型
主动外观模型(AAMs)是一种广泛应用于计算机视觉的形状和外观统计模型,用于检测人脸等物体上的标志。将AAM拟合到新图像可以表述为非线性最小二乘问题,通常使用迭代方法求解。由于其效率,高斯-牛顿优化已经成为比牛顿等更复杂的方法更标准的选择。在本文中,我们证明了AAM问题具有不需要任何近似就能有效求解原牛顿问题的结构。然后,我们与原始的高斯-牛顿算法建立联系,并实验研究了牛顿公式引入的附加项对拟合精度和收敛性的影响。在推导的基础上,我们还提出了一种牛顿和高斯-牛顿相结合的方法,该方法具有良好的拟合和收敛性能。我们的发现在两个具有挑战性的野外数据集上得到了验证。
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