论文标题
课程面:深层识别的自适应课程学习损失
CurricularFace: Adaptive Curriculum Learning Loss for Deep Face Recognition
论文作者
论文摘要
作为面部识别的一个新兴主题,设计基于保证金的损失功能可以增加不同类别之间的特征范围,以增强可区分性。最近,采用了基于采矿的策略来强调错误分类的样本,从而取得了令人鼓舞的结果。但是,在整个培训过程中,先前的方法要么根据样本的重要性明确强调样本,从而使硬样品无法完全利用。或明确强调半硬样品的影响,即使在早期训练阶段也可能导致收敛问题。在这项工作中,我们提出了一种新型的自适应课程学习损失(课程表),该学习损失(课程表面)将课程学习的概念嵌入到损失功能中,以实现一种新颖的培训策略,以实现深层面部识别的培训策略,该培训主要解决早期培训阶段的简单样本和后期的硬性样本。具体而言,我们的课程面可自适应地调整不同训练阶段中简易和硬样品的相对重要性。在每个阶段,根据相应的难度分配了不同的样本。对流行基准测试的广泛实验结果证明了我们的课程面比最先进的竞争对手的优越性。
As an emerging topic in face recognition, designing margin-based loss functions can increase the feature margin between different classes for enhanced discriminability. More recently, the idea of mining-based strategies is adopted to emphasize the misclassified samples, achieving promising results. However, during the entire training process, the prior methods either do not explicitly emphasize the sample based on its importance that renders the hard samples not fully exploited; or explicitly emphasize the effects of semi-hard/hard samples even at the early training stage that may lead to convergence issue. In this work, we propose a novel Adaptive Curriculum Learning loss (CurricularFace) that embeds the idea of curriculum learning into the loss function to achieve a novel training strategy for deep face recognition, which mainly addresses easy samples in the early training stage and hard ones in the later stage. Specifically, our CurricularFace adaptively adjusts the relative importance of easy and hard samples during different training stages. In each stage, different samples are assigned with different importance according to their corresponding difficultness. Extensive experimental results on popular benchmarks demonstrate the superiority of our CurricularFace over the state-of-the-art competitors.