Multi-Band Wi-Fi Neural Dynamic Fusion
Sorachi Kato, Pu Perry Wang, Toshiaki Koike-Akino, Takuya, Fujihashi, Hassan Mansour, Petros Boufounos

TL;DR
This paper introduces a neural dynamic fusion framework that aligns asynchronous multi-band Wi-Fi signals for continuous coordinate estimation, significantly improving over existing methods.
Contribution
It proposes a novel multi-band neural dynamic fusion approach using ODE modeling for asynchronous Wi-Fi measurements, enabling precise continuous estimation tasks.
Findings
Substantial performance improvements over baseline methods.
Effective alignment of asynchronous multi-band Wi-Fi signals.
Successful validation on an in-house testbed.
Abstract
Wi-Fi channel measurements across different bands, e.g., sub-7-GHz and 60-GHz bands, are asynchronous due to the uncoordinated nature of distinct standards protocols, e.g., 802.11ac/ax/be and 802.11ad/ay. Multi-band Wi-Fi fusion has been considered before on a frame-to-frame basis for simple classification tasks, which does not require fine-time-scale alignment. In contrast, this paper considers asynchronous sequence-to-sequence fusion between sub-7-GHz channel state information (CSI) and 60-GHz beam signal-to-noise-ratio~(SNR)s for more challenging tasks such as continuous coordinate estimation. To handle the timing disparity between asynchronous multi-band Wi-Fi channel measurements, this paper proposes a multi-band neural dynamic fusion (NDF) framework. This framework uses separate encoders to embed the multi-band Wi-Fi measurement sequences to separate initial latent conditions.…
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Taxonomy
TopicsSpeech and Audio Processing · Advanced Adaptive Filtering Techniques · Indoor and Outdoor Localization Technologies
