A Belief Propagation Based Framework for Soft Multiple-Symbol Differential Detection
Chanfei Wang, Tiejun Lv, Hui Gao, Shaoshi Yang

TL;DR
This paper introduces a belief propagation framework for soft multiple-symbol differential detection in high-dimensional wireless systems, significantly improving detection performance while addressing computational complexity.
Contribution
It proposes a novel BP-based MSDD framework with algorithms for APP calculation and complexity reduction, enhancing detection in UWB-IR systems.
Findings
BP-MSDD outperforms conventional hard-decision MSDDs
Proposed algorithms enable iterative detection and decoding
Simulation confirms effectiveness in UWB-IR systems
Abstract
Soft noncoherent detection, which relies on calculating the \textit{a posteriori} probabilities (APPs) of the bits transmitted with no channel estimation, is imperative for achieving excellent detection performance in high-dimensional wireless communications. In this paper, a high-performance belief propagation (BP)-based soft multiple-symbol differential detection (MSDD) framework, dubbed BP-MSDD, is proposed with its illustrative application in differential space-time block-code (DSTBC)-aided ultra-wideband impulse radio (UWB-IR) systems. Firstly, we revisit the signal sampling with the aid of a trellis structure and decompose the trellis into multiple subtrellises. Furthermore, we derive an APP calculation algorithm, in which the forward-and-backward message passing mechanism of BP operates on the subtrellises. The proposed BP-MSDD is capable of significantly outperforming the…
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