IEEE Trans Cybern. 2018 Sep;48(9):2531-2541. doi: 10.1109/TCYB.2017.2741998. Epub 2018 Jan 23.
Owing to the variations including both intrinsic and extrinsic factors, age estimation remains a challenging problem. In this paper, five cascaded structure frameworks are proposed for age estimation based on convolutional neural networks. All frameworks are learned and guided by auxiliary demographic information, since other demographic information (i.e., gender and race) is beneficial for age prediction. Each cascaded structure framework is embodied in a parent network and several subnetworks. For example, one of the applied framework is a gender classifier trained by gender information, and then two subnetworks are trained by the male and female samples, respectively. Furthermore, we use the features extracted from the cascaded structure frameworks with Gaussian process regression that can boost the performance further for age estimation. Experimental results on the MORPH II and CACD datasets have gained superior performances compared to the state-of-the-art methods. The mean absolute error is significantly reduced from 3.63 to 2.93 years under the same test protocol on the MORPH II dataset.
由于内在和外在因素的变化,年龄估计仍然是一个具有挑战性的问题。在本文中,我们提出了五个基于卷积神经网络的级联结构框架来进行年龄估计。所有的框架都是通过辅助人口统计学信息来学习和指导的,因为其他人口统计学信息(如性别和种族)有利于年龄预测。每个级联结构框架都体现在一个父网络和几个子网络中。例如,其中一个应用的框架是一个由性别信息训练的性别分类器,然后分别由男性和女性样本训练两个子网。此外,我们使用从级联结构框架中提取的特征,结合高斯过程回归,进一步提高年龄估计的性能。在 MORPH II 和 CACD 数据集上的实验结果与最先进的方法相比取得了优异的性能。在相同的 MORPH II 数据集测试协议下,平均绝对误差从 3.63 年显著降低到 2.93 年。