RINN: One Sample Radio Frequency Imaging based on Physics Informed Neural Network
- URL: http://arxiv.org/abs/2504.15311v1
- Date: Sat, 19 Apr 2025 15:19:12 GMT
- Title: RINN: One Sample Radio Frequency Imaging based on Physics Informed Neural Network
- Authors: Fei Shang, Haohua Du, Dawei Yan, Panlong Yang, Xiang-Yang Li,
- Abstract summary: Radio frequency (RF) imaging technology is expected to bring new possibilities for embodied intelligence and multimodal sensing.<n>In this paper, we combine the ideas of PINN to design the RINN network, using physical constraints instead of true value comparison constraints.<n>Our numerical evaluation results show that RINN's imaging results based on phaseless data are good, with indicators such as RRMSE (0.11) performing similarly well.
- Score: 9.812746486699323
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Due to its ability to work in non-line-of-sight and low-light environments, radio frequency (RF) imaging technology is expected to bring new possibilities for embodied intelligence and multimodal sensing. However, widely used RF devices (such as Wi-Fi) often struggle to provide high-precision electromagnetic measurements and large-scale datasets, hindering the application of RF imaging technology. In this paper, we combine the ideas of PINN to design the RINN network, using physical constraints instead of true value comparison constraints and adapting it with the characteristics of ubiquitous RF signals, allowing the RINN network to achieve RF imaging using only one sample without phase and with amplitude noise. Our numerical evaluation results show that compared with 5 classic algorithms based on phase data for imaging results, RINN's imaging results based on phaseless data are good, with indicators such as RRMSE (0.11) performing similarly well. RINN provides new possibilities for the universal development of radio frequency imaging technology.
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