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Pose Robust Face Tracking by Combining Active Appearance Models and Cylinder Head Models

机译:结合主动外观模型和汽缸盖模型的姿势鲁棒人脸跟踪

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摘要

The active appearance models (AAMs) provide the detailed descriptive parameters that are useful for various autonomous face analysis problems. However, they are not suitable for robust face tracking across large pose variation for the following reasons. First, they are suitable for tracking the local movements of facial features within a limited pose variation. Second, they use gradient-based optimization techniques for model fitting and the fitting performance is thus very sensitive to initial model parameters. Third, when their fitting is failed, it is difficult to obtain appropriate model parameters to re-initialize them. To alleviate these problems, we propose to combine the active appearance models and the cylinder head models (CHMs), where the global head motion parameters obtained from the CHMs are used as the cues of the AAM parameters for a good fitting or re-initialization. The good AAM parameters for robust face tracking are computed in the following manner. First, we estimate the global motion parameters by the CHM fitting algorithm. Second, we project the previously fitted 2D shape points onto the 3D cylinder surface inversely. Third, we transform the inversely projected shape points by the estimated global motion parameters. Fourth, we project the transformed 3D points onto the input image and computed the AAM parameters from them. Finally, we treat the computed AAM parameters as the initial parameters for the fitting. Experimental results showed that face tracking combining AAMs and CHMs is more pose robust than that of AAMs in terms of 170% higher tracking rate and the 115% wider pose coverage.
机译:活动外观模型(AAM)提供了详细的描述性参数,这些参数对于各种自主的面部分析问题很有用。但是,由于以下原因,它们不适合在较大的姿势变化中进行鲁棒的面部跟踪。首先,它们适合于在有限的姿势变化内跟踪面部特征的局部运动。其次,他们使用基于梯度的优化技术进行模型拟合,因此拟合性能对初始模型参数非常敏感。第三,当它们的拟合失败时,很难获得适当的模型参数来重新初始化它们。为了缓解这些问题,我们建议将主动外观模型和汽缸盖模型(CHM)结合起来,其中从CHM获得的全局汽缸盖运动参数用作AAM参数的提示,以实现良好的拟合或重新初始化。用于健全人脸跟踪的良好AAM参数按以下方式计算。首先,我们通过CHM拟合算法估计全局运动参数。其次,我们将先前拟合的2D形状点反向投影到3D圆柱面上。第三,我们通过估计的全局运动参数变换逆投影的形状点。第四,我们将变换后的3D点投影到输入图像上,并根据它们计算AAM参数。最后,我们将计算出的AAM参数作为拟合的初始参数。实验结果表明,结合AAM和CHM进行人脸跟踪比AAM具有更好的姿势鲁棒性,可提高170%的跟踪率和115%的姿势覆盖率。

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