Localization in OFDM Passive Distributed Antenna Systems with Pilots and Unknown Data Payloads: A Marginal Maximum Likelihood Approach
Mathieu Reniers, Martin Willame, J\'er\^ome Louveaux, Luc Vandendorpe

TL;DR
This paper introduces a Marginal Maximum Likelihood estimator for joint localization using pilot and data symbols in OFDM systems, outperforming existing methods especially at low SNRs.
Contribution
It develops a novel joint localization approach that leverages both pilot and data payloads without decoding, improving accuracy and robustness over decision-directed methods.
Findings
Achieves superior localization accuracy compared to existing methods.
Converges to the genie bound at lower SNR than decision-directed approaches.
Remains robust to increasing modulation order.
Abstract
Integrated Sensing and Communications (ISAC) is emerging as a key paradigm for future Sixth-Generation (6G) networks, with communication-centric designs favored for their compatibility with existing standards. Communication signals contain both known deterministic pilot symbols and unknown random data payloads. Most localization approaches rely solely on pilots, discarding the position information contained in the data symbols, which constitute the majority of each transmitted frame. Alternatively, Decision-Directed (DD) approaches exploit data decisions, thereby inherently limiting positioning performance to that of the communication system. In this paper, we derive a Marginal Maximum Likelihood (MML) estimator that jointly leverages pilot and data payloads without requiring data decoding, enabling operation with high-order constellations and under challenging noise conditions. We…
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