Detecting Smiles of Young Children via Deep Transfer Learning

Yu Xia, Di Huang, Yunhong Wang
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引用次数: 11

Abstract

Smile detection is an interesting topic in computer vision and has received increasing attention in recent years. However, the challenge caused by age variations has not been sufficiently focused on before. In this paper, we first highlight the impact of the discrepancy between infants and adults in a quantitative way on a newly collected database. We then formulate this issue as an unsupervised domain adaptation problem and present the solution of deep transfer learning, which applies the state of the art transfer learning methods, namely Deep Adaptation Networks (DAN) and Joint Adaptation Network (JAN), to two baseline deep models, i.e. AlexNet and ResNet. Thanks to DAN and JAN, the knowledge learned by deep models from adults can be transferred to infants, where very limited labeled data are available for training. Cross-dataset experiments are conducted and the results evidently demonstrate the effectiveness of the proposed approach to smile detection across such an age gap.
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通过深度迁移学习检测幼儿的微笑
微笑检测是计算机视觉领域一个有趣的研究课题,近年来受到越来越多的关注。然而,年龄差异带来的挑战以前没有得到足够的关注。在本文中,我们首先以定量的方式对新收集的数据库强调了婴儿和成人之间差异的影响。然后,我们将此问题表述为无监督域适应问题,并提出了深度迁移学习的解决方案,该解决方案将最先进的迁移学习方法,即深度适应网络(DAN)和联合适应网络(JAN)应用于两个基线深度模型,即AlexNet和ResNet。由于DAN和JAN,深度模型从成人那里学到的知识可以转移到婴儿身上,而婴儿可以用于训练的标记数据非常有限。进行了跨数据集的实验,结果明显表明了该方法在跨越这种年龄差距的微笑检测中的有效性。
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