PropSplat: Map-Free RF Field Reconstruction via 3D Gaussian Propagation Splatting
William Bjorndahl, Maninder Pal Singh, Farhad Nouri, Joseph Camp
TLDR
PropSplat reconstructs RF fields using map-free 3D Gaussian splatting, outperforming existing methods and reducing the need for geographic data.
Key contributions
- Reconstructs RF fields using map-free 3D anisotropic Gaussian primitives, eliminating need for detailed maps.
- Optimized end-to-end from sparse RF measurements, learning propagation without external geographic data.
- Outperforms state-of-the-art methods, achieving 5.38 dB RMSE outdoors and 0.19m localization error indoors.
Why it matters
Current RF propagation models are expensive and rely on detailed maps or dense measurements, hindering rapid deployment. PropSplat provides a cost-effective, map-free solution. This innovation significantly reduces the dependency on geographic data, making scalable and accurate RF environment modeling more accessible for various applications.
Original Abstract
Building a site-specific propagation model typically requires either ray-tracing over detailed 3D maps or dense measurement campaigns. Both approaches are expensive and often infeasible for rapid deployments where geographic data is unavailable or outdated. We present PropSplat, a map-free propagation modeling method that reconstructs radio frequency (RF) fields using 3D anisotropic Gaussian primitives. Each Gaussian encodes a scalar path loss offset relative to an explicit baseline path loss model with a learnable path loss exponent. Gaussians are initialized along observed transmitter--receiver paths and optimized end-to-end to learn the propagation environment without external information like floor plans, terrain databases, or clutter data. We evaluate PropSplat against wireless radiance field methods NeRF$^2$, GSRF, and WRF-GS+ on two real-world datasets. On large-scale outdoor drive-tests spanning multiple topographical regions at six sub-6 GHz frequencies, PropSplat achieves 5.38 dB RMSE when training measurements are spaced 300m apart and outperforms WRF-GS+ (5.87 dB), GSRF (7.46 dB), and NeRF$^2$ (14.76 dB). On indoor Bluetooth Low Energy measurements, PropSplat achieves 0.19m mean localization error, an order of magnitude better than NeRF$^2$ (1.84m), while achieving near-identical received signal strength prediction accuracy. These results show that accurate site-specific propagation reconstruction is achievable from sparse RF-native measurements. The need for geographic data as a prerequisite for scalable RF environment modeling is reduced.
📬 Weekly AI Paper Digest
Get the top 10 AI/ML arXiv papers from the week — summarized, scored, and delivered to your inbox every Monday.