Two-Stage Radio Map Construction with Real Environments and Sparse Measurements
Radio map construction based on extensive measurements is accurate but expensive and time-consuming, while environment-aware radio map estimation reduces the costs at the expense of low accuracy. Considering accuracy and costs, a first-predict-then-correct (FPTC) method is proposed by leveraging gen...
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Zusammenfassung: | Radio map construction based on extensive measurements is accurate but
expensive and time-consuming, while environment-aware radio map estimation
reduces the costs at the expense of low accuracy. Considering accuracy and
costs, a first-predict-then-correct (FPTC) method is proposed by leveraging
generative adversarial networks (GANs). A primary radio map is first predicted
by a radio map prediction GAN (RMP-GAN) taking environmental information as
input. Then, the prediction result is corrected by a radio map correction GAN
(RMC-GAN) with sparse measurements as guidelines. Specifically, the
self-attention mechanism and residual-connection blocks are introduced to
RMP-GAN and RMC-GAN to improve the accuracy, respectively. Experimental results
validate that the proposed FPTC-GANs method achieves the best radio map
construction performance, compared with the state-of-the-art methods. |
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DOI: | 10.48550/arxiv.2410.18092 |