论文标题

联合学习的本地化:一种保护隐私的众包方法

Federated Learning for Localization: A Privacy-Preserving Crowdsourcing Method

论文作者

Ciftler, Bekir Sait, Albaseer, Abdullatif, Lasla, Noureddine, Abdallah, Mohamed

论文摘要

收到的信号强度(RSS)基于指纹的本地化吸引了许多研究工作,并由于其低成本和易于实施而培养了许多基于位置服务的商业应用。许多研究正在探索深度学习(DL)算法进行本地化的使用。 DL提取功能和自主分类的能力使其成为基于指纹本地化的有吸引力的解决方案。这些解决方案需要经常对DL模型进行大量测量。尽管众包是收集大量数据的绝佳方式,但它危及参与者的隐私,因为它需要在集中式服务器上收集标记的数据。最近,联邦学习已成为一种实用概念,可以通过分散的方式在边缘设备上进行模型培训来解决众包参与者的隐私保护问题。参与者不再将数据曝光到集中服务器。本文提出了一种利用联邦学习来提高基于RSS指纹本地化的精度的新方法,同时保留了众包参与者的隐私。采用联合学习可以确保\ emph {保留用户数据的隐私},同时通过在现实世界中捕获的实验数据实现适当的本地化性能。当用作集中学习的助推器时,该方法将定位精度提高了1.8米,并在使用独立时达到了令人满意的定位精度。

Received Signal Strength (RSS) fingerprint-based localization has attracted a lot of research effort and cultivated many commercial applications of location-based services due to its low cost and ease of implementation. Many studies are exploring the use of deep learning (DL) algorithms for localization. DL's ability to extract features and to classify autonomously makes it an attractive solution for fingerprint-based localization. These solutions require frequent retraining of DL models with vast amounts of measurements. Although crowdsourcing is an excellent way to gather immense amounts of data, it jeopardizes the privacy of participants, as it requires to collect labeled data at a centralized server. Recently, federated learning has emerged as a practical concept in solving the privacy preservation issue of crowdsourcing participants by performing model training at the edge devices in a decentralized manner; the participants do not expose their data anymore to a centralized server. This paper presents a novel method utilizing federated learning to improve the accuracy of RSS fingerprint-based localization while preserving the privacy of the crowdsourcing participants. Employing federated learning allows ensuring \emph{preserving the privacy of user data} while enabling an adequate localization performance with experimental data captured in real-world settings. The proposed method improved localization accuracy by 1.8 meters when used as a booster for centralized learning and achieved satisfactory localization accuracy when used standalone.

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