AI.news
主页教程研究工具模型AI创业讨论新闻WIKI🚀 创业库★ 投稿
AI+医疗机器人教育金融能源健康娱乐思考

GeRaF: Neural Geometry Reconstruction from Radio Frequency Signals

arxiv.org
分享到

View PDF HTML (experimental)

Abstract:GeRaF is the first method to use neural implicit learning for near-range 3D geometry reconstruction from radio frequency (RF) signals. Unlike RGB or LiDAR-based methods, RF sensing can see through occlusion but suffers from low resolution and noise due to its lensless imaging nature. While lenses in RGB imaging constrain sampling to 1D rays, RF signals propagate through the entire space, introducing significant noise and leading to cubic complexity in volumetric rendering. Moreover, RF signals interact with surfaces via specular reflections, requiring fundamentally different modeling. To address these challenges, GeRaF (1) introduces filter-based rendering to suppress irrelevant signals, (2) implements a physics-based RF volumetric rendering pipeline, and (3) proposes a novel lensless sampling and lensless alpha blending strategy that makes full-space sampling feasible during training. By learning signed distance functions, reflectiveness, and signal power through MLPs and trainable parameters, GeRaF takes the first step towards reconstructing millimeter-level geometry from RF signals in real-world settings.

Submission history

From: Jiachen Lu [view email]
[v1] Wed, 27 May 2026 20:58:36 UTC (19,647 KB)