Person re-identification (Re-ID) is a critical technique in the video surveillance system, which has achieved significant success in the supervised setting. However, it is difficult to directly apply the supervised model to arbitrary unseen domains due to the domain gap between the available source domains and unseen target domains. In this paper, we propose a novel label distribution learning (LDL) method to address the generalizable multi-source person Re-ID task (i.e., there are multiple available source domains, and the testing domain is unseen during training), which aims to explore the relation of different classes and mitigate the domain-shift across different domains so as to improve the discrimination of the model and learn the domain-invariant feature, simultaneously. Specifically, during the training process, we produce the label distribution via the online manner to mine the relation information of different classes, thus it is beneficial for extracting the discriminative feature. Besides, for the label distribution of each class, we further revise it to give more and equal attention to the other domains that the class does not belong to, which can effectively reduce the domain gap across different domains and obtain the domain-invariant feature. Furthermore, we also give the theoretical analysis to demonstrate that the proposed method can effectively deal with the domain-shift issue. Extensive experiments on multiple benchmark datasets validate the effectiveness of the proposed method and show that the proposed method can outperform the state-of-the-art methods. Besides, further analysis also reveals the superiority of the proposed method.
翻译:视频监视系统(Re-ID)是重新确认个人身份(Re-ID)的关键技术,在受监督的环境下取得了显著成功,但是,由于现有源域和无形目标域之间的域间差距,很难将受监督的模式直接应用于任意的无形领域;在本文件中,我们提出一个新的标签分配学习(LDL)方法,以解决通用的多源人重新确定任务(即,有多个源域,培训期间看不到测试域),目的是探索不同类别之间的关系,减少不同领域的域档,从而改善模型的区别,同时学习域内差异特征。具体地说,在培训过程中,我们通过在线方式进行标签分配,以挖掘不同类别间的关联信息,从而有利于提取歧视性特征。此外,对于每个类的标签分布,我们进一步修订它,以便更多、平等地关注该类不属于的其他领域,从而有效地缩小不同领域之间的域域间差距,并同时学习域内差异特性特征。此外,我们还在培训过程中,通过在线方式进行标签分配,以挖掘不同类别间的关系信息,这样有利于提取拟议的方法。此外,我们还可以对拟议采用的多领域性分析方法作基础分析,以展示拟议的方法。