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Apparent Age Estimation with Relational Networks

机译:关系网络的表观年龄估计

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Apparent age estimation is a newly proposed and under-studied problem of predicting the age that someone "looks" rather than their actual age. It has applications in many areas within the beauty industry[3]. Methods based on convolutional neural networks (CNNs) have proved to be state-of-the-art on the few datasets used to benchmark this task. However, such CNNs typically collapse spatial information via a Global Average Pooling operation. They do not perform any explicit treatment of spatial relationships of the higher-level features which emerge in the later stages of the network and which may correspond to facial parts or blemishes that are characteristic of age. In this paper, we consider a newly proposed CNN module called relational networks that explicitly capture spatial relationships. We hypothesize that we can estimate age better by learning such relationships in the final set of CNN feature maps where spatial information is still retained. Experiments were conducted on both ChaLearn LAP 2015 and 2016 datasets [6], [7] showing that on average, there is a 3.53% improvement on Mean Absolute Error and 3.31% improvement on ε-error when compared to the baseline. A test was also calculated to show that the improvement is statistically significant.
机译:表观年龄估计是预测某人“看起来”而不是其实际年龄的新提出且研究不足的问题。它在美容行业的许多领域都有应用[3]。事实证明,基于卷积神经网络(CNN)的方法在用于基准测试该任务的少数数据集上是最新技术。但是,此类CNN通常会通过“全局平均池化”操作折叠空间信息。他们没有对网络晚期阶段出现的高层特征的空间关系进行任何显式的处理,这些高层关系可能对应于年龄特征的面部或瑕疵。在本文中,我们考虑了一种新提出的CNN模块,称为关系网络,可以明确捕获空间关系。我们假设可以通过在仍保留空间信息的最后一组CNN特征图中学习这种关系来更好地估计年龄。在ChaLearn LAP 2015和2016数据集上进行了实验[6],[7],与基线相比,平均而言,平均绝对误差改善了3.53%,ε-误差改善了3.31%。还计算出一项测试,表明该改善具有统计学意义。

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