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A Comprehensive Study on Center Loss for Deep Face Recognition

机译:深层识别中心损失综合研究

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Deep convolutional neural networks (CNNs) trained with the softmax loss have achieved remarkable successes in a number of close-set recognition problems, e.g. object recognition, action recognition, etc. Unlike these close-set tasks, face recognition is an open-set problem where the testing classes (persons) are usually different from those in training. This paper addresses the open-set property of face recognition by developing the center loss. Specifically, the center loss simultaneously learns a center for each class, and penalizes the distances between the deep features of the face images and their corresponding class centers. Training with the center loss enables CNNs to extract the deep features with two desirable properties: inter-class separability and intra-class compactness. In addition, we extend the center loss in two aspects. First, we adopt parameter sharing between the softmax loss and the center loss, to reduce the extra parameters introduced by centers. Second, we generalize the concept of center from a single point to a region in embedding space, which further allows us to account for intra-class variations. The advanced center loss significantly enhances the discriminative power of deep features. Experimental results show that our method achieves high accuracies on several important face recognition benchmarks, including Labeled Faces in the Wild, YouTube Faces, IJB-A Janus, and MegaFace Challenging 1.
机译:在Softmax损失训练的深度卷积神经网络(CNNS)已经在许多静默识别问题中取得了显着的成功,例如,如此。对象识别,动作识别等。与这些封闭式任务不同,面部识别是一个开放式问题,其中测试类(人员)通常与培训中的问题不同。本文通过开发中心损耗来解决面部识别的开放式属性。具体地,中心损耗同时学习每个类的中心,并惩罚面部图像的深度特征与其相应的类中心之间的距离。中心损耗的培训使CNN能够提取具有两个所需特性的深度特征:级别间可分离性和课外紧凑性。此外,我们在两个方面延长了中心损失。首先,我们采用Softmax丢失和中心丢失之间的参数共享,以减少中心引入的额外参数。其次,我们将中心的概念从单一到嵌入空间中的一个地区概括,这进一步允许我们考虑课外变化。先进的中心损失显着提高了深度特征的辨别力。实验结果表明,我们的方法在几个重要的面部识别基准上实现了高精度,包括野外,Youtube面临,IJB-A Janus和Megaface挑战1的标记面。

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