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Adaptive and Constrained Algorithms for Inverse Compositional Active Appearance Model Fitting

机译:用于反向组成主动外观模型配件的自适应和约束算法

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Parametric models of shape and texture such as Active Appearance Models (AAMs) are diverse tools for deformable object appearance modeling and have found important applications in both image synthesis and analysis problems. Among the numerous algorithms that have been proposed for AAM fitting, those based on the inverse-compositional image alignment technique have recently received considerable attention due to their potential for high efficiency. However, existing fitting algorithms perform poorly when used in conjunction with models exhibiting significant appearance variation, such as AAMs trained on multiple-subject human face images. We introduce two enhancements to inverse-compositional AAM matching algorithms in order to overcome this limitation. First, we propose fitting algorithm adaptation, by means of (a) fitting matrix adjustment and (b) AAM mean template update. Second, we show how prior information can be incorporated and constrain the AAM fitting process. The inverse-compositional nature of the algorithm allows efficient implementation of these enhancements. Both techniques substantially improve AAM fitting performance, as demonstrated with experiments on publicly available multiperson face datasets.
机译:诸如主动外观模型(AAMS)的形状和纹理的参数模型是可变形物体外观建模的多种工具,并在图像合成和分析问题中找到了重要的应用。在为AAM配件提出的许多算法中,基于反相色谱图像对准技术的那些最近由于它们的高效率而受到了相当大的关注。然而,当与表现出显着外观变化的模型一起使用时,现有拟合算法表现不佳,例如在多对象人类脸部图像上培训的AAM。我们介绍了两种增强功能对逆合AAM匹配算法以克服这种限制。首先,我们提出拟合算法适应,借助于(a)拟合矩阵调整和(b)aam平均模板更新。其次,我们展示了如何纳入先前信息并限制AAM配件过程。算法的逆组成性质允许有效地实现这些增强功能。这两种技术都基本上改善了AAM拟合性能,如在公开的多人面对数据集上的实验所证明的那样。

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