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Marginal Loss for Deep Face Recognition

机译:脸部识别的边际损失

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摘要

Convolutional neural networks have significantly boosted the performance of face recognition in recent years due to its high capacity in learning discriminative features. In order to enhance the discriminative power of the deeply learned features, we propose a new supervision signal named marginal loss for deep face recognition. Specifically, the marginal loss simultaneously minimises the intra-class variances as well as maximises the inter-class distances by focusing on the marginal samples. With the joint supervision of softmax loss and marginal loss, we can easily train a robust CNNs to obtain more discriminative deep features. Extensive experiments on several relevant face recognition benchmarks, Labelled Faces in the Wild (LFW), YouTube Faces (YTF), Cross-Age Celebrity Dataset (CACD), Age Database (AgeDB) and MegaFace Challenge, prove the effectiveness of the proposed marginal loss.
机译:近年来,由于卷积神经网络具有很高的学习判别特征的能力,因此大大提高了人脸识别的性能。为了增强深度学习功能的判别能力,我们提出了一种新的监督信号,即边缘损失,用于深层人脸识别。具体地说,边际损失通过关注边际样本同时最小化了类别内的差异以及最大化了类别间的距离。在softmax损失和边际损失的联合监督下,我们可以轻松地训练强大的CNN以获得更具判别力的深层特征。在几个相关的面部识别基准,野外标记面部(LFW),YouTube面部(YTF),跨年龄名人数据集(CACD),年龄数据库(AgeDB)和MegaFace Challenge上进行的广泛实验证明了所提议的边际损失的有效性。

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