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When Face Recognition Meets with Deep Learning: An Evaluation of Convolutional Neural Networks for Face Recognition

机译:当人脸识别与深度学习相遇时:卷积神经网络对人脸识别的评估

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Deep learning, in particular Convolutional Neural Network (CNN), has achieved promising results in face recognition recently. However, it remains an open question: why CNNs work well and how to design a 'good' architecture. The existing works tend to focus on reporting CNN architectures that work well for face recognition rather than investigate the reason. In this work, we conduct an extensive evaluation of CNN-based face recognition systems (CNN-FRS) on a common ground to make our work easily reproducible. Specifically, we use public database LFW (Labeled Faces in the Wild) to train CNNs, unlike most existing CNNs trained on private databases. We propose three CNN architectures which are the first reported architectures trained using LFW data. This paper quantitatively compares the architectures of CNNs and evaluates the effect of different implementation choices. We identify several useful properties of CNN-FRS. For instance, the dimensionality of the learned features can be significantly reduced without adverse effect on face recognition accuracy. In addition, a traditional metric learning method exploiting CNN-learned features is evaluated. Experiments show two crucial factors to good CNN-FRS performance are the fusion of multiple CNNs and metric learning. To make our work reproducible, source code and models will be made publicly available.
机译:深度学习,特别是卷积神经网络(CNN),最近在人脸识别方面取得了可喜的成果。但是,这仍然是一个悬而未决的问题:CNN为什么运行良好以及如何设计“好的”架构。现有的工作往往集中于报告对人脸识别效果很好的CNN架构,而不是调查原因。在这项工作中,我们在共同的基础上对基于CNN的人脸识别系统(CNN-FRS)进行了广泛的评估,以使我们的工作易于再现。具体来说,我们使用公共数据库LFW(野兽标记脸)来训练CNN,这与大多数在私有数据库上训练的现有CNN不同。我们提出了三种CNN体系结构,这是使用LFW数据训练的第一个报告的体系结构。本文定量地比较了CNN的体系结构,并评估了不同实现选择的效果。我们确定了CNN-FRS的几个有用的属性。例如,可以显着减小学习特征的尺寸,而不会对面部识别精度造成不利影响。此外,还评估了利用CNN学习特征的传统度量学习方法。实验表明,良好的CNN-FRS性能的两个关键因素是多个CNN和度量学习的融合。为了使我们的工作具有可复制性,将公开提供源代码和模型。

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