Geng Xin, Zhou Zhi-Hua, Smith-Miles Kate
School of Engineering and Information Technology, Deakin University, Australia.
IEEE Trans Pattern Anal Mach Intell. 2007 Dec;29(12):2234-40. doi: 10.1109/TPAMI.2007.70733.
While recognition of most facial variations, such as identity, expression and gender, has been extensively studied, automatic age estimation has rarely been explored. In contrast to other facial variations, aging variation presents several unique characteristics which make age estimation a challenging task. This paper proposes an automatic age estimation method named AGES (AGing pattErn Subspace). The basic idea is to model the aging pattern, which is defined as the sequence of a particular individual' s face images sorted in time order, by constructing a representative subspace. The proper aging pattern for a previously unseen face image is determined by the projection in the subspace that can reconstruct the face image with minimum reconstruction error, while the position of the face image in that aging pattern will then indicate its age. In the experiments, AGES and its variants are compared with the limited existing age estimation methods (WAS and AAS) and some well-established classification methods (kNN, BP, C4.5, and SVM). Moreover, a comparison with human perception ability on age is conducted. It is interesting to note that the performance of AGES is not only significantly better than that of all the other algorithms, but also comparable to that of the human observers.
虽然对大多数面部变化,如身份、表情和性别识别等已进行了广泛研究,但自动年龄估计却很少被探讨。与其他面部变化不同,衰老变化呈现出几个独特特征,这使得年龄估计成为一项具有挑战性的任务。本文提出了一种名为AGES(衰老模式子空间)的自动年龄估计方法。其基本思想是通过构建一个代表性子空间,对衰老模式进行建模,衰老模式被定义为按时间顺序排列的特定个体面部图像序列。对于一张之前未见过的面部图像,合适的衰老模式是由子空间中的投影确定的,该投影能以最小重建误差重建面部图像,而面部图像在该衰老模式中的位置将指示其年龄。在实验中,将AGES及其变体与有限的现有年龄估计方法(WAS和AAS)以及一些成熟的分类方法(kNN、BP、C4.5和SVM)进行了比较。此外,还与人类对年龄的感知能力进行了比较。值得注意的是,AGES的性能不仅显著优于所有其他算法,而且与人类观察者的性能相当。