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Generic Active Appearance Models Revisited

机译:再谈通用主动外观模型

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The proposed Active Orientation Models (AOMs) are generative models of facial shape and appearance. Their main differences with the well-known paradigm of Active Appearance Models (AAMs) are (i) they use a different statistical model of appearance, (ii) they are accompanied by a robust algorithm for model fitting and parameter estimation and (iii) and, most importantly, they generalize well to unseen faces and variations. Their main similarity is computational complexity. The project-out version of AOMs is as computationally efficient as the standard project-out inverse compositional algorithm which is admittedly the fastest algorithm for fitting AAMs. We show that not only does the AOM generalize well to unseen identities, but also it outperforms state-of-the-art algorithms for the same task by a large margin. Finally, we prove our claims by providing Matlab code for reproducing our experiments.
机译:提出的主动方向模型(AOM)是面部形状和外观的生成模型。它们与活动外观模型(AAM)的著名范例的主要区别是(i)使用不同的外观统计模型;(ii)随附用于模型拟合和参数估计的健壮算法;以及(iii)和,最重要的是,它们很好地概括了看不见的面孔和变化。它们的主要相似之处是计算复杂度。 AOM的投影版本与标准的投影逆合成算法一样,在计算效率上也很出色,后者是公认的适合AAM的最快算法。我们表明,AOM不仅可以很好地推广到看不见的身份,而且在很大程度上可以胜过用于同一任务的最新算法。最后,我们通过提供用于再现实验的Matlab代码来证明我们的主张。

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