The content discusses the integration of sensing and communication in 6G systems using OFDM waveforms. It introduces a novel approach for passive target detection indoors, highlighting the benefits of utilizing AI techniques for improved performance. The paper explores various training strategies under different conditions, showcasing significant improvements over baseline methods.
OFDM is identified as a suitable waveform for both communication and sensing purposes due to its robustness and flexibility. The proposed method leverages the structure of OFDM to enhance target detection capabilities indoors. By extracting features like DDP and PDP from high-frequency signals, the authors demonstrate the effectiveness of AI-based detectors in improving detection accuracy.
The study compares the performance of the proposed methods under LOS and NLOS conditions, emphasizing the impact of different scenarios on target detection accuracy. Through simulations and training procedures, the AI detectors outperform baseline methods by providing a 10 dB gain at an 80% detection rate under LOS conditions. However, performance degrades by 10-20 dB in NLOS scenarios.
Overall, the research highlights the potential of integrating sensing capabilities into wireless communication systems using advanced AI algorithms for enhanced target detection accuracy in indoor environments.
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arxiv.org
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