Age estimation based on extended non-negative matrix factorization

Ce Zhan, W. Li, P. Ogunbona
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引用次数: 13

Abstract

Previous studies suggested that local appearance-based methods are more efficient than geometric-based and holistic methods for age estimation. This is mainly due to the fact that age information are usually encoded by the local features such as wrinkles and skin texture on the forehead or at the eye corners. However, the variations of theses features caused by other factors such as identity, expression, pose and lighting may be larger than that caused by aging. Thus, one of the key challenges of age estimation lies in constructing a feature space that could successfully recovers age information while ignoring other sources of variations. In this paper, non-negative matrix factorization (NMF) is extended to learn a localized non-overlapping subspace representation for age estimation. To emphasize the appearance variation in aging, one individual extended NMF subspace is learned for each age or age group. The age or age group of a given face image is then estimated based on its reconstruction error after being projected into the learned age subspaces. Furthermore, a coarse to fine scheme is employed for exact age estimation, so that the age is estimated within the pre-classified age groups. Cross-database tests are conducted using FG-NET and MORPH databases to evaluate the proposed method. Experimental results have demonstrated the efficacy of the method.
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基于扩展非负矩阵分解的年龄估计
以往的研究表明,基于局部外观的年龄估计方法比基于几何和整体的年龄估计方法更有效。这主要是由于年龄信息通常是由前额或眼角的皱纹和皮肤纹理等局部特征编码的。然而,由身份、表情、姿势、光线等其他因素引起的这些特征的变化可能比年龄引起的变化更大。因此,年龄估计的关键挑战之一在于构建一个能够成功恢复年龄信息而忽略其他变化源的特征空间。本文将非负矩阵分解(NMF)扩展到学习年龄估计的局部非重叠子空间表示。为了强调衰老过程中的外观变化,我们为每个年龄或年龄组学习了一个扩展的NMF子空间。然后,将给定人脸图像投影到学习到的年龄子空间后,根据其重建误差估计其年龄或年龄组。此外,采用粗到细的精确年龄估计方案,使年龄估计在预分类的年龄组内。使用FG-NET和MORPH数据库进行了跨数据库测试,以评估所提出的方法。实验结果证明了该方法的有效性。
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