Near-Field Mobile Tracking: A Framework of Using XL-RIS Information
Tuo Wu, Cunhua Pan, Kangda Zhi, Junteng Yao, Hong Ren, Maged, Elkashlan, Chau Yuen

TL;DR
This paper proposes a novel mobile tracking framework using high-dimensional XL-RIS information, reconstructed from traditional signals, and employs deep learning for accurate, robust position prediction of mobile users.
Contribution
It introduces an XL-RIS information reconstruction algorithm and a comprehensive deep learning-based framework for mobile tracking, enhancing accuracy and robustness over traditional methods.
Findings
Significantly improved tracking accuracy with XL-RIS information.
Robust performance under varying SNR conditions.
Effective feature extraction using CNN, T&F, and AoA modules.
Abstract
This paper introduces a novel mobile tracking framework leveraging the high-dimensional signal received from extremely large-scale (XL) reconfigurable intelligent surfaces (RIS). This received signal, named XL-RIS information, has a much larger data dimension and therefore offers a richer feature set compared to the traditional base station (BS) received signal, i.e., BS information, enabling more accurate tracking of mobile users (MUs). As the first step, we present an XL-RIS information reconstruction (XL-RIS-IR) algorithm to reconstruct the high-dimensional XL-RIS information from the low-dimensional BS information. Building on this, this paper proposes a comprehensive framework for mobile tracking, consisting of a Feature Extraction Module and a Mobile Tracking Module. The Feature Extraction Module incorporates a convolutional neural network (CNN) extractor for spatial features, a…
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Taxonomy
TopicsBluetooth and Wireless Communication Technologies
MethodsSparse Evolutionary Training · Tanh Activation · Balanced Selection · Sigmoid Activation · Long Short-Term Memory
