Robust Indoor Localization in Dynamic Environments: A Multi-source Unsupervised Domain Adaptation Framework
Jiyu Jiao, Xiaojun Wang, Chengpei Han

TL;DR
This paper introduces DF-Loc, a multi-source unsupervised domain adaptation framework that significantly improves indoor fingerprint localization accuracy and robustness in dynamic environments by leveraging multi-scale features and transfer learning.
Contribution
It presents an innovative end-to-end system combining multi-source MUDA, feature fusion, and dual-stage alignment to enhance localization in changing indoor environments.
Findings
Achieves 0.79m average error in same-test scenarios
Outperforms existing methods in robustness and accuracy
Reduces labeled data requirement by leveraging multi-source data
Abstract
Fingerprint localization has gained significant attention due to its cost-effective deployment, low complexity, and high efficacy. However, traditional methods, while effective for static data, often struggle in dynamic environments where data distributions and feature spaces evolve-a common occurrence in real-world scenarios. To address the challenges of robustness and adaptability in fingerprint localization for dynamic indoor environments, this paper proposes DF-Loc, an end-to-end dynamic fingerprint localization system based on multi-source unsupervised domain adaptation (MUDA). DF-Loc leverages historical data from multiple time scales to facilitate knowledge transfer in specific feature spaces, thereby enhancing generalization capabilities in the target domain and reducing reliance on labeled data. Specifically, the system incorporates a Quality Control (QC) module for CSI data…
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Taxonomy
TopicsIndoor and Outdoor Localization Technologies · Evacuation and Crowd Dynamics · IoT-based Smart Home Systems
MethodsSoftmax · Attention Is All You Need
