WK-Pnet: FM-Based Positioning via Wavelet Packet Decomposition and Knowledge Distillation
WK-Pnet: FM-Based Positioning via Wavelet Packet Decomposition and Knowledge Distillation
Accurate and efficient positioning in complex environments is critical for applications where traditional satellite-based systems face limitations, such as indoors or urban canyons. This paper introduces WK-Pnet, an FM-based indoor positioning framework that combines wavelet packet decomposition (WPD) and knowledge distillation. WK-Pnet leverages WPD to extract rich time-frequency features from FM signals, which are then processed by a deep learning model for precise position estimation. To address computational demands, we employ knowledge distillation, transferring insights from a high-capacity model to a streamlined student model, achieving substantial reductions in complexity without sacrificing accuracy. Experimental results across diverse environments validate WK-Pnet's superior positioning accuracy and lower computational requirements, making it a viable solution for positioning in real-time resource-constraint applications.
Shilian Zheng、Quan Lin、Peihan Qi、Luxin Zhang、Xinjiang Qiu、Zhijin Zhao、Xiaoniu Yang
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Shilian Zheng,Quan Lin,Peihan Qi,Luxin Zhang,Xinjiang Qiu,Zhijin Zhao,Xiaoniu Yang.WK-Pnet: FM-Based Positioning via Wavelet Packet Decomposition and Knowledge Distillation[EB/OL].(2025-04-09)[2025-04-26].https://arxiv.org/abs/2504.07399.点此复制
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