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Facial age estimation by multilinear subspace analysis

机译:基于多线性子空间分析的面部年龄估计

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摘要

Automatic estimation of human facial age is an interesting yet challenging topic appearing in recent years. Since different people might age in different ways, solving the problem of age estimation involves two semantic labels: identity and age. In this paper, aging face images are organized in a third-order tensor according to both identity and age. Due to the difficulty in data collection, the aging pattern for each person in the training set is always incomplete. Therefore, the tensor contains a large amount of missing values. Through a series of multilinear subspace analysis algorithms operating on tensor with missing values, the aging pattern contained in the training aging images can be iteratively learned and be used to predict the age of a given test image. In the experiment, the proposed method not only outperforms the existing algorithms, but also exceeds the human ability in age estimation.
机译:自动估计人的面部年龄是近年来出现的一个有趣但具有挑战性的话题。由于不同的人可能以不同的方式衰老,因此解决年龄估算问题涉及两个语义标签:身份和年龄。在本文中,根据身份和年龄,将人脸老化图像按三阶张量进行组织。由于数据收集的困难,训练集中每个人的衰老模式总是不完整。因此,张量包含大量的缺失值。通过对具有缺失值的张量进行操作的一系列多线性子空间分析算法,可以迭代地学习训练老化图像中包含的老化模式,并将其用于预测给定测试图像的年龄。在实验中,该方法不仅优于现有算法,而且超过了人类的年龄估计能力。

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