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Novel Example-Based Shape Learning For Fast Face Alignment

机译:基于新的基于示例性的形状学习,用于快速面向对准

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In this paper, a novel Example-based Shape Learning (ESL) strategy has been proposed for facial feature alignment. The method is motivated by an intuitive and experimental observation that there exists an approximate linearity relationship between the image difference and the shape difference, that is, similar face images imply similar face shapes. Therefore, given a learning set of face images with their corresponding face landmarks labeled, the shape of any novel face image can be learned by estimating its similarities to the training images in the learning set and applying these similarities to the shape reconstruction of the novel face image. Concretely, if the novel face image is expressed by an optimal linear combination of the training images, the same linear combination coefficients can be directly applied to the linear combination of the training shapes to construct the optimal shape for the novel face image. Our experiments have convincingly shown the effectiveness and efficiency of the proposed approach in both speed and accuracy performance compared with other methods.
机译:本文已经提出了一种用于面部特征对准的基于示例性的形状学习(ESL)策略。该方法通过直观和实验观察,即图像差和形状差之间存在近似线性关系,即类似的面部图像意味着类似的面形状。因此,给定一个学习集合的面部图像的与它们相应的面部界标标记,任何新颖的面部图像的形状可以通过估计其相似性在学习集合中的训练图像以及施加这些相似的形状重建的新的脸的获知图片。具体地,如果通过训练图像的最佳线性组合表示新颖的面部图像,则可以直接施加到训练形状的线性组合以构造新颖的面部图像的最佳形状。与其他方法相比,我们的实验令人信服地示出了速度和准确性绩效的提出方法的有效性和效率。

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