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Age Invariant Face Verification with Relative Craniofacial Growth Model

机译:相对颅面生长模型的年龄不变性面部验证

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Age-separated facial images usually have significant changes in both shape and texture. Although many face recognition algorithms have been proposed in the last two decades, the problem of recognizing facial images across aging remains an open problem. In this paper, we propose a relative craniofacial growth model which is based on the science of craniofacial anthropometry. Compared to the traditional craniofacial growth model, the proposed method introduces a set of linear equations on the relative growth parameters which can be easily applied for facial image verification across aging. We then integrate the relative growth model with the Grassmann manifold and the SVM classifier. We also demonstrate how knowing the age could improve shape-based face recognition algorithms. Experiments show that the proposed method is able to mitigate the variations caused by the aging progress and thus effectively improve the performance of open-set face verification across aging.
机译:年龄分隔的面部图像通常在形状和纹理上都有很大的变化。尽管在过去的二十年中已经提出了许多面部识别算法,但是在老化过程中识别面部图像的问题仍然是一个未解决的问题。在本文中,我们提出了一种基于颅面人体测量学的相对颅面生长模型。与传统的颅面部生长模型相比,该方法在相对生长参数上引入了一组线性方程,可以轻松地应用于老化过程中的面部图像验证。然后,我们将相对增长模型与Grassmann流形和SVM分类器集成在一起。我们还演示了了解年龄如何改善基于形状的面部识别算法。实验表明,所提出的方法能够减轻由于老化进程而引起的变化,从而有效地提高了在整个老化过程中开放式人脸验证的性能。

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