Person Re-identification (ReID) has been extensively studied in recent years due to the increasing demand in public security. However, collecting and dealing with sensitive personal data raises privacy concerns. Therefore, federated learning has been explored for Person ReID, which aims to share minimal sensitive data between different parties (clients). However, existing federated learning based person ReID methods generally rely on laborious and time-consuming data annotations and it is difficult to guarantee cross-domain consistency. Thus, in this work, a federated unsupervised cluster-contrastive (FedUCC) learning method is proposed for Person ReID. FedUCC introduces a three-stage modelling strategy following a coarse-to-fine manner. In detail, generic knowledge, specialized knowledge and patch knowledge are discovered using a deep neural network. This enables the sharing of mutual knowledge among clients while retaining local domain-specific knowledge based on the kinds of network layers and their parameters. Comprehensive experiments on 8 public benchmark datasets demonstrate the state-of-the-art performance of our proposed method.
翻译:近年来,由于对公共安全的需求不断增加,对重新确定身份(ReID)进行了广泛的研究,然而,收集和处理敏感的个人数据引起了隐私问题,因此,为个人重新确定身份,探索了联合学习,目的是在不同当事人(客户)之间分享最低限度的敏感数据,然而,现有的以联盟学习为基础的个人重新确定身份方法一般依赖艰苦和耗时的数据说明,难以保证跨部的一致性,因此,在这项工作中,为个人重新确定身份提出了一种未经监督的集束通信(FeducC)联合学习方法。FedUCC采用三阶段建模战略,采用粗略至精细的神经网络,发现通用知识、专门知识和补丁知识,使客户之间能够分享相互知识,同时保留基于网络层及其参数的本地域知识。对8个公共基准数据集进行了全面试验,展示了我们拟议方法的最新表现。