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Generic vs. person specific active appearance models

机译:通用vs.特定于人的主动外观模型

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Active Appearance Models (AAMs) are generative parametric models that have been successfully used in the past to model faces. Anecdotal evidence, however, suggests that the performance of an AAM built to model the variation in appearance of a single person across pose, illumination, and expression (a Person Specific AAM) is substantially better than the performance of an AAM built to model the variation in appearance of many faces, including unseen subjects not in the training set (a Generic AAM). In this paper, we present an empirical evaluation that shows that Person Specific AAMs are, as expected, both easier to build and more robust to fit than Generic AAMs. Moreover, we show that: (1) building a generic shape model is far easier than building a generic appearance model, and (2) the shape component is the main cause of the reduced fitting robustness of Generic AAMs. We then proceed to describe two refinements to Generic AAMs to improve their performance: (1) a refitting procedure to improve the quality of the ground-truth data used to build the AAM and (2) a new fitting algorithm. For both refinements we demonstrate dramatically improved fitting performance. Finally, we evaluate the effect of these improvements on a combined model construction and fitting task.
机译:活动外观模型(AAM)是生成参数化模型,过去已成功用于建模面孔。然而,轶事证据表明,为建模单个人的跨姿势,光照和表情的变化而构建的AAM(特定于人的AAM)的性能明显优于为变化进行建模的AAM的性能出现许多面孔,包括不在训练集中的看不见的对象(通用AAM)。在本文中,我们提供了一项经验评估,该研究表明,与通用AAM相比,特定于人的AAM既容易构建,又更加健壮。而且,我们表明:(1)建立通用形状模型比建立通用外观模型容易得多,并且(2)形状分量是通用AAM拟合健壮性降低的主要原因。然后,我们继续描述通用AAM的两个改进,以提高其性能:(1)改进程序,以提高用于构建AAM的真实数据的质量;(2)一种新的拟合算法。对于这两个改进,我们展示了显着改善的装配性能。最后,我们评估了这些改进对组合模型构建和拟合任务的影响。

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