针对隐私感知室内定位的特征融合联合学习

IF 3.3 4区 计算机科学 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Peer-To-Peer Networking and Applications Pub Date : 2024-06-03 DOI:10.1007/s12083-024-01736-5
Omid Tasbaz, Bahar Farahani, Vahideh Moghtadaiee
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引用次数: 0

摘要

近年来,室内定位系统(IPS)已成为一项关键技术,在零售、医疗保健和交通等不同领域支持各种基于位置的服务(LBS)。尽管需求旺盛且十分重要,但现有的室内定位系统在准确性和隐私保护方面仍面临巨大挑战。准确性问题主要源于接收信号强度(RSS)的固有特性,RSS 只需要现成的 WiFi 基础设施,因此被广泛集成到当前的 IPS 中。一些研究表明,RSS 在环境变化时存在不稳定性和不准确性,因此不能作为精确 IPS 的选择。此外,大多数最先进的 IPS 还存在隐私和数据安全问题,因为它们通常要求用户与中央服务器共享对隐私敏感的位置数据。遗憾的是,集中式数据收集和处理可能会使用户的隐私受到侵犯。为了解决这些缺陷,我们主张采用一种全面、准确和多方面的解决方案,使用户既能利用 IPS 的优势,又不会引发隐私问题。首先,我们通过结合 RSS 和信道状态信息 (CSI) 的优势和协同作用来解决位置不准确的问题。将这些互补指标融合在一起,可以提高稳定性,抵御环境波动。因此,它为可靠和准确的定位结果奠定了坚实的基础。其次,为了应对隐私挑战,我们将联邦学习(FL)集成到了拟议的解决方案中,以实现基于机器学习的 IPS 模型的协作开发,同时确保用户数据保持分散。我们进行了一项综合评估,以评估与独立使用 RSS 或 CSI 的既定基线技术相比,所提出的 IPS 的性能和相应的开销。评估结果表明,我们的解决方案在有效解决准确性和隐私挑战方面有明显的提升。
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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Feature fusion federated learning for privacy-aware indoor localization

In recent years, Indoor Positioning Systems (IPS) have emerged as a critical technology to enable a diverse range of Location-based Services (LBS) across different sectors, such as retail, healthcare, and transportation. Despite their strong demand and importance, existing implementations of IPS face significant challenges concerning accuracy and privacy. The accuracy issue is mainly rooted in the inherent characteristics of Received Signal Strength (RSS), which is widely integrated into current IPS as it only requires readily available WiFi infrastructure. Several studies have demonstrated that RSS suffers from instability and inaccuracy in the presence of environmental changes, making it an inadequate choice for precise IPS. Furthermore, most state-of-the-art IPS encounter privacy and data security issues as they often require users to share their privacy-sensitive location data with a centralized server. Unfortunately, centralized data collection and processing potentially expose users to privacy breaches. To tackle these shortcomings, we advocate for a comprehensive, accurate, and multifaceted solution that enables users to harness the benefits of IPS without provoking privacy concerns. First, we address the positional inaccuracy problem by combining the strengths and synergies between RSS and Channel State Information (CSI). Fusing these complementary metrics delivers increased stability against environmental fluctuations. Thereby, it provides a robust foundation for reliable and accurate positioning outcomes. Second, to address the privacy challenge, we integrate Federated Learning (FL) into the proposed solution to enable the collaborative development of machine learning-based IPS models while ensuring that user data remains decentralized. We conducted a comprehensive assessment to evaluate the performance of the proposed IPS and the corresponding overheads compared to established baseline techniques that utilize either RSS or CSI independently. The results indicate significant enhancements, highlighting our solution’s ability to effectively address accuracy and privacy challenges.

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来源期刊
Peer-To-Peer Networking and Applications
Peer-To-Peer Networking and Applications COMPUTER SCIENCE, INFORMATION SYSTEMS-TELECOMMUNICATIONS
CiteScore
8.00
自引率
7.10%
发文量
145
审稿时长
12 months
期刊介绍: The aim of the Peer-to-Peer Networking and Applications journal is to disseminate state-of-the-art research and development results in this rapidly growing research area, to facilitate the deployment of P2P networking and applications, and to bring together the academic and industry communities, with the goal of fostering interaction to promote further research interests and activities, thus enabling new P2P applications and services. The journal not only addresses research topics related to networking and communications theory, but also considers the standardization, economic, and engineering aspects of P2P technologies, and their impacts on software engineering, computer engineering, networked communication, and security. The journal serves as a forum for tackling the technical problems arising from both file sharing and media streaming applications. It also includes state-of-the-art technologies in the P2P security domain. Peer-to-Peer Networking and Applications publishes regular papers, tutorials and review papers, case studies, and correspondence from the research, development, and standardization communities. Papers addressing system, application, and service issues are encouraged.
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