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A New Loss Function for CNN Classifier Based on Predefined Evenly-Distributed Class Centroids

机译:基于预定义的均匀分布式质心的CNN分类器的新损失函数

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摘要

With the development of convolutional neural networks (CNNs) in recent years, the network structure has become more and more complex and varied, and has achieved very good results in pattern recognition, image classification, object detection and tracking. For CNNs used for image classification, in addition to the network structure, more and more researches focus on the improvement of the loss function, so as to enlarge the inter-class feature differences, and reduce the intra-class feature variations as soon as possible. Besides the traditional Softmax, typical loss functions include L-Softmax, AM-Softmax, ArcFace, and Center loss, etc. Based on the concept of predefined evenly-distributed class centroids (PEDCC) in CSAE network, this paper proposes a PEDCC-based loss function called PEDCC-Loss, which can make the inter-class distance maximal and intra-class distance small enough in latent feature space. Multiple experiments on image classification and face recognition have proved that our method achieve the best recognition accuracy, and network training is stable and easy to converge. Code is available in https://github.com/ZLeopard/PEDCC-Loss
机译:随着近年来卷积神经网络(CNNS)的发展,网络结构变得越来越复杂,变化,并且在模式识别,图像分类,对象检测和跟踪中实现了非常好的结果。对于用于图像分类的CNN,除了网络结构之外,越来越多的研究侧重于损失函数的改进,从而扩大帧间特征差异,并尽快减少类别的类别特征变化。除了传统的Softmax外,典型的损失功能包括L-Softmax,AM-Softmax,ArcFace和中心损耗等。本文提出了一种基于PEDCC的预定义的均匀分布式质心(PECCC)的概念。损耗函数称为PECCC损耗,可以使级别距离最大和级别距离足够小的潜伏特征空间。关于图像分类和面部识别的多个实验证明,我们的方法实现了最佳识别准确性,网络训练稳定且易于收敛。代码为 https://github.com/zleopard/pedcc-loss

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