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Fair Loss: Margin-Aware Reinforcement Learning for Deep Face Recognition

机译:公平损失:用于深层识别的保证金意识强化学习

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Recently, large-margin softmax loss methods, such as angular softmax loss (SphereFace), large margin cosine loss (CosFace), and additive angular margin loss (ArcFace), have demonstrated impressive performance on deep face recognition. These methods incorporate a fixed additive margin to all the classes, ignoring the class imbalance problem. However, imbalanced problem widely exists in various real-world face datasets, in which samples from some classes are in a higher number than others. We argue that the number of a class would influence its demand for the additive margin. In this paper, we introduce a new margin-aware reinforcement learning based loss function, namely fair loss, in which each class will learn an appropriate adaptive margin by Deep Q-learning. Specifically, we train an agent to learn a margin adaptive strategy for each class, and make the additive margins for different classes more reasonable. Our method has better performance than present large-margin loss functions on three benchmarks, Labeled Face in the Wild (LFW), Youtube Faces (YTF) and MegaFace, which demonstrates that our method could learn better face representation on imbalanced face datasets.
机译:近来,大角度softmax损失方法,例如角度softmax损失(SphereFace),大余量余弦损失(CosFace)和加法角余量损失(ArcFace),在深层人脸识别方面表现出令人印象深刻的性能。这些方法将固定的附加余量合并到所有类别中,而忽略了类别不平衡问题。然而,不平衡问题广泛存在于各种现实的面部数据集中,其中来自某些类别的样本比其他类别的样本数量更高。我们认为,一个班级的数量将影响其对附加保证金的需求。在本文中,我们介绍了一种新的基于余量感知的强化学习损失函数,即公平损失,其中每个班级都将通过深度Q学习学习适当的自适应余量。具体来说,我们训练代理商以学习每个类别的边际自适应策略,并使不同类别的附加边际更加合理。我们的方法在三个基准(野外标记面部(LFW),Youtube Faces(YTF)和MegaFace)三个基准上均比目前的大利润损失函数具有更好的性能,这表明我们的方法可以在不平衡的面部数据集上更好地学习面部表示。

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