Preserving Gender and Identity in Face Age Progression of Infants and Toddlers

Yao Xiao, Yijun Zhao
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引用次数: 1

Abstract

Realistic age-progressed photos provide invaluable biometric information in a wide range of applications. In recent years, deep learning-based approaches have made remarkable progress in modeling the aging process of the human face. Nevertheless, it remains a challenging task to generate accurate age-progressed faces from infant or toddler photos. In particular, the lack of visually detectable gender characteristics and the drastic appearance changes in early life contribute to the difficulty of the task. We address this challenge by extending the CAAE (2017) architecture to 1) incorporate gender information and 2) augment the model’s overall architecture with an identity-preserving component based on facial features. We trained our model using the publicly available UTKFace dataset and evaluated our model by simulating up to 100 years of age progression on 1,156 male and 1,207 female infant and toddler face photos. Compared to the CAAE approach, our new model demonstrates noticeable visual improvements. Quantitatively, our model exhibits an overall gain of 77.0% (male) and 13.8% (female) in gender fidelity measured by a gender classifier for the simulated photos across the age spectrum. Our model also demonstrates a 22.4% gain in identity preservation measured by a facial recognition neural network.
婴儿和学步儿童面部年龄发展中的性别和身份保护
逼真的年龄进展照片在广泛的应用中提供了宝贵的生物特征信息。近年来,基于深度学习的方法在人脸老化过程建模方面取得了显著进展。然而,从婴儿或幼儿的照片中生成准确的年龄变化脸部仍然是一项具有挑战性的任务。特别是,缺乏视觉上可察觉的性别特征和早期生活中剧烈的外貌变化都增加了这项任务的难度。我们通过扩展CAAE(2017)架构来解决这一挑战:1)纳入性别信息;2)使用基于面部特征的身份保持组件来增强模型的整体架构。我们使用公开可用的UTKFace数据集训练我们的模型,并通过模拟1,156名男性和1,207名女性婴幼儿面部照片的100岁年龄进展来评估我们的模型。与CAAE方法相比,我们的新模型显示出明显的视觉改善。在数量上,我们的模型显示了77.0%(男性)和13.8%(女性)的性别保真度的总体增益,通过性别分类器对跨年龄谱的模拟照片进行测量。我们的模型还展示了通过面部识别神经网络测量的身份保存增益22.4%。
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