Deep person re-identification with improved embedding and efficient training

Haibo Jin, Xiaobo Wang, Shengcai Liao, S. Li
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引用次数: 43

Abstract

Person re-identification task has been greatly boosted by deep convolutional neural networks (CNNs) in recent years. The core of which is to enlarge the inter-class distinction as well as reduce the intra-class variance. However, to achieve this, existing deep models prefer to adopt image pairs or triplets to form verification loss, which is inefficient and unstable since the number of training pairs or triplets grows rapidly as the number of training data grows. Moreover, their performance is limited since they ignore the fact that different dimension of embedding may play different importance. In this paper, we propose to employ identification loss with center loss to train a deep model for person re-identification. The training process is efficient since it does not require image pairs or triplets for training while the inter-class distinction and intra-class variance are well handled. To boost the performance, a new feature reweighting (FRW) layer is designed to explicitly emphasize the importance of each embedding dimension, thus leading to an improved embedding. Experiments 1 on several benchmark datasets have shown the superiority of our method over the state-of-the-art alternatives on both accuracy and speed.
通过改进的嵌入和有效的培训进行深度人员再识别
近年来,深度卷积神经网络(cnn)极大地促进了人的再识别任务。其核心是扩大阶级间差异,缩小阶级内差异。然而,为了实现这一点,现有的深度模型更倾向于采用图像对或三元组来形成验证损失,由于随着训练数据数量的增加,训练对或三元组的数量会迅速增加,这种方法效率低下且不稳定。此外,由于忽略了嵌入的不同维度可能具有不同的重要性这一事实,它们的表现受到了限制。在本文中,我们提出使用识别损失和中心损失来训练一个人再识别的深度模型。训练过程不需要图像对或三元组进行训练,同时很好地处理了类间差异和类内方差。为了提高性能,设计了一个新的特征重加权(FRW)层,明确强调每个嵌入维度的重要性,从而改进了嵌入。在几个基准数据集上的实验1表明,我们的方法在准确性和速度上都优于最先进的替代方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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