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DS-Pnet: FM-Based Positioning via Downsampling

DS-Pnet: FM-Based Positioning via Downsampling

来源:Arxiv_logoArxiv
英文摘要

In this paper we present DS-Pnet, a novel framework for FM signal-based positioning that addresses the challenges of high computational complexity and limited deployment in resource-constrained environments. Two downsampling methods-IQ signal downsampling and time-frequency representation downsampling-are proposed to reduce data dimensionality while preserving critical positioning features. By integrating with the lightweight MobileViT-XS neural network, the framework achieves high positioning accuracy with significantly reduced computational demands. Experiments on real-world FM signal datasets demonstrate that DS-Pnet achieves superior performance in both indoor and outdoor scenarios, with space and time complexity reductions of approximately 87% and 99.5%, respectively, compared to an existing method, FM-Pnet. Despite the high compression, DS-Pnet maintains robust positioning accuracy, offering an optimal balance between efficiency and precision.

Shilian Zheng、Xinjiang Qiu、Luxin Zhang、Quan Lin、Zhijin Zhao、Xiaoniu Yang

无线通信无线电设备、电信设备

Shilian Zheng,Xinjiang Qiu,Luxin Zhang,Quan Lin,Zhijin Zhao,Xiaoniu Yang.DS-Pnet: FM-Based Positioning via Downsampling[EB/OL].(2025-04-09)[2025-05-03].https://arxiv.org/abs/2504.07429.点此复制

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