DBU-OFDM: A Trainable Deep Block-Unitary OFDM Waveform for Integrated Sensing and Communication
Cheng Luo, Luping Xiang, Hankun Zhang, Yi Luo, Chen Huang, Yi Zhang, Cheng-Xiang Wang, Kun Yang

TL;DR
DBU-OFDM introduces a trainable, structure-preserving waveform that enhances integrated communication and sensing by reducing PAPR, improving reliability, and enabling practical hardware implementation.
Contribution
It proposes a novel deep block-unitary precoded OFDM framework that maintains OFDM structure while allowing trainable waveform adaptation for better performance.
Findings
Achieves PAPR tails close to block-pilot DFT-s-OFDM
Improves communication reliability in frequency-selective fading
Enhances range and velocity estimation in sensing
Abstract
Orthogonal frequency-division multiplexing (OFDM) is a dominant waveform in modern wireless systems, yet its high peak-to-average power ratio (PAPR) and limited adaptability hinder efficient support for integrated communication and sensing. This paper proposes deep block-unitary precoded OFDM (DBU-OFDM), a structure-preserving learning framework that enables trainable waveform adaptation while preserving the DFT-based signal structure, pilot/null resource protection, and compatibility with low-complexity frequency-domain equalization. The proposed design restricts learning to a block-unitary transformation over data subcarriers and preserves pilot and null resources for structural compatibility. The transform is parameterized by recursive Householder reflections, ensuring strict unitarity as well as differentiable, numerically stable, and complexity-controllable implementation. Results…
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