论文标题
使用异构指纹数据库的联合学习本地化
Federated Learning-Based Localization with Heterogeneous Fingerprint Database
论文作者
论文摘要
基于指纹的本地化在室内基于位置的服务中起着重要作用,在该服务中,该位置信息通常在分布式客户端收集并聚集在集中式服务器中。但是,超负荷的传输以及泄露私人信息的潜在风险会使应用程序负担负担。解决这些挑战的能力,联邦学习(FL)基于指纹的本地化的本地化都进入了人们的视线,旨在培训全球模型,同时在本地保留原始数据。但是,在分布式机器学习(ML)方案中,不可避免的数据库异质性通常会降低现有基于FL的本地化算法(FedLoc)的性能。在本文中,我们首先用可计算的度量(即凸船体面积)来表征数据库异质性,并通过实验结果对其进行验证。然后,提出了一种新型的基于FL的定位算法,该算法提出了基于凸壳的聚合(FedLoc-AC)的区域。进行了广泛的实验结果,包括现实案例。我们可以得出结论,在异质场景中,与联邦快递相比,提出的联邦快递可以实现明显的预测增益,并且在均匀的情况下,它的预测误差几乎具有相同的预测误差。此外,提出并验证了多层案件中联邦快递-AC的扩展。
Fingerprint-based localization plays an important role in indoor location-based services, where the position information is usually collected in distributed clients and gathered in a centralized server. However, the overloaded transmission as well as the potential risk of divulging private information burdens the application.Owning the ability to address these challenges, federated learning (FL)-based fingerprinting localization comes into people's sights, which aims to train a global model while keeping raw data locally. However, in distributed machine learning (ML) scenarios, the unavoidable database heterogeneity usually degrades the performance of existing FL-based localization algorithm (FedLoc). In this paper, we first characterize the database heterogeneity with a computable metric, i.e., the area of convex hull, and verify it by experimental results. Then, a novel heterogeneous FL-based localization algorithm with the area of convex hull-based aggregation (FedLoc-AC) is proposed. Extensive experimental results, including real-word cases are conducted. We can conclude that the proposed FedLoc-AC can achieve an obvious prediction gain compared to FedLoc in heterogeneous scenarios and has almost the same prediction error with it in homogeneous scenarios. Moreover, the extension of FedLoc-AC in multi-floor cases is proposed and verified.