FedHIL: Heterogeneity Resilient Federated Learning for Robust Indoor Localization with Mobile Devices

Author:

Gufran Danish1ORCID,Pasricha Sudeep1ORCID

Affiliation:

1. Colorado State University, Fort Collins, CO, USA

Abstract

Indoor localization plays a vital role in applications such as emergency response, warehouse management, and augmented reality experiences. By deploying machine learning (ML) based indoor localization frameworks on their mobile devices, users can localize themselves in a variety of indoor and subterranean environments. However, achieving accurate indoor localization can be challenging due to heterogeneity in the hardware and software stacks of mobile devices, which can result in inconsistent and inaccurate location estimates. Traditional ML models also heavily rely on initial training data, making them vulnerable to degradation in performance with dynamic changes across indoor environments. To address the challenges due to device heterogeneity and lack of adaptivity, we propose a novel embedded ML framework called FedHIL . Our framework combines indoor localization and federated learning (FL) to improve indoor localization accuracy in device-heterogeneous environments while also preserving user data privacy. FedHIL integrates a domain-specific selective weight adjustment approach to preserve the ML model's performance for indoor localization during FL, even in the presence of extremely noisy data. Experimental evaluations in diverse real-world indoor environments and with heterogeneous mobile devices show that FedHIL outperforms state-of-the-art FL and non-FL indoor localization frameworks. FedHIL is able to achieve 1.62 × better localization accuracy on average than the best performing FL-based indoor localization framework from prior work.

Funder

National Science Foundation

Publisher

Association for Computing Machinery (ACM)

Subject

Hardware and Architecture,Software

Reference46 articles.

1. Indoor localization with smartphones;Langlois C.;IEEE CEM,2017

2. RSSI-Based Indoor Localization With the Internet of Things

3. The Microsoft Indoor Localization Competition: Experiences and Lessons Learned

4. Comparing and evaluating indoor positioning techniques;Raza A.;IEEE IPIN,2021

5. Automating csi measurement with uavs: from problem formulation to energy-optimal solution;Piao S.;IEEE INFOCOM,2019

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