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Face Recognition by Humans and Machines: Three Fundamental Advances from Deep Learning
Annual Review of Vision Science ( IF 6 ) Pub Date : 2021-09-15 , DOI: 10.1146/annurev-vision-093019-111701
Alice J O'Toole 1 , Carlos D Castillo 2
Affiliation  

Deep learning models currently achieve human levels of performance on real-world face recognition tasks. We review scientific progress in understanding human face processing using computational approaches based on deep learning. This review is organized around three fundamental advances. First, deep networks trained for face identification generate a representation that retains structured information about the face (e.g., identity, demographics, appearance, social traits, expression) and the input image (e.g., viewpoint, illumination). This forces us to rethink the universe of possible solutions to the problem of inverse optics in vision. Second, deep learning models indicate that high-level visual representations of faces cannot be understood in terms of interpretable features. This has implications for understanding neural tuning and population coding in the high-level visual cortex. Third, learning in deep networks is a multistep process that forces theoretical consideration of diverse categories of learning that can overlap, accumulate over time, and interact. Diverse learning types are needed to model the development of human face processing skills, cross-race effects, and familiarity with individual faces.

中文翻译:


人和机器的人脸识别:深度学习的三个基本进展

深度学习模型目前在现实世界的人脸识别任务上达到了人类水平。我们回顾了使用基于深度学习的计算方法理解人脸处理的科学进展。本次审查围绕三个基本进展进行组织。首先,为人脸识别训练的深度网络生成一个表示,该表示保留了关于人脸(例如,身份、人口统计、外观、社会特征、表情)和输入图像(例如,视点、照明)的结构化信息。这迫使我们重新思考视觉逆光学问题的可能解决方案。其次,深度学习模型表明,面部的高级视觉表示无法根据可解释的特征来理解。这对于理解高级视觉皮层中的神经调节和群体编码具有重要意义。第三,深度网络中的学习是一个多步骤的过程,它迫使对不同类别的学习进行理论考虑,这些类别可以重叠、随着时间的推移积累和相互作用。需要多样化的学习类型来模拟人脸处理技能的发展、跨种族效应和对个人面孔的熟悉程度。

更新日期:2021-09-17
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