RadioDiff-Inverse: Diffusion Enhanced Bayesian Inverse Estimation for ISAC Radio Map Construction
- URL: http://arxiv.org/abs/2504.14298v1
- Date: Sat, 19 Apr 2025 13:49:59 GMT
- Title: RadioDiff-Inverse: Diffusion Enhanced Bayesian Inverse Estimation for ISAC Radio Map Construction
- Authors: Xiucheng Wang, Zhongsheng Fang, Nan Cheng,
- Abstract summary: Radio maps (RMs) are essential for environment-aware communication and sensing, providing location-specific wireless channel information.<n>Existing RM construction methods often rely on precise environmental data and base station (BS) locations, which are not always available in dynamic or privacy-sensitive environments.<n>This paper formulates RM construction as a Bayesian inverse problem under coarse environmental knowledge and noisy sparse measurements.<n>We propose RadioDiff-Inverse, a diffusion-enhanced Bayesian inverse estimation framework that uses an unconditional generative diffusion model to learn the RM prior.
- Score: 11.385703484113552
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Radio maps (RMs) are essential for environment-aware communication and sensing, providing location-specific wireless channel information. Existing RM construction methods often rely on precise environmental data and base station (BS) locations, which are not always available in dynamic or privacy-sensitive environments. While sparse measurement techniques reduce data collection, the impact of noise in sparse data on RM accuracy is not well understood. This paper addresses these challenges by formulating RM construction as a Bayesian inverse problem under coarse environmental knowledge and noisy sparse measurements. Although maximum a posteriori (MAP) filtering offers an optimal solution, it requires a precise prior distribution of the RM, which is typically unavailable. To solve this, we propose RadioDiff-Inverse, a diffusion-enhanced Bayesian inverse estimation framework that uses an unconditional generative diffusion model to learn the RM prior. This approach not only reconstructs the spatial distribution of wireless channel features but also enables environmental structure perception, such as building outlines, and location of BS just relay on pathloss, through integrated sensing and communication (ISAC). Remarkably, RadioDiff-Inverse is training-free, leveraging a pre-trained model from Imagenet without task-specific fine-tuning, which significantly reduces the training cost of using generative large model in wireless networks. Experimental results demonstrate that RadioDiff-Inverse achieves state-of-the-art performance in accuracy of RM construction and environmental reconstruction, and robustness against noisy sparse sampling.
Related papers
- DiffusionRIR: Room Impulse Response Interpolation using Diffusion Models [16.92449230293275]
High-quality RIR estimates drive applications such as virtual microphones, sound source localization, augmented reality, and data augmentation.
This research addresses the challenge of estimating RIRs at unmeasured locations within a room using Denoising Diffusion Probabilistic Models (DDPM)
arXiv Detail & Related papers (2025-04-29T10:52:07Z) - RadioDiff-$k^2$: Helmholtz Equation Informed Generative Diffusion Model for Multi-Path Aware Radio Map Construction [69.96295462931168]
We propose a physics-informed generative learning approach, termed RadioDiff-$bmk2$, for accurate and efficient multipath-aware radio map (RM) construction.
We establish a direct correspondence between EM singularities, which correspond to the critical spatial features influencing wireless propagation, and regions defined by negative wave numbers in the Helmholtz equation.
arXiv Detail & Related papers (2025-04-22T06:28:13Z) - Radio Map Estimation via Latent Domain Plug-and-Play Denoising [24.114418244026957]
Radio map estimation (RME) aims to reconstruct the strength of radio interference across different domains (e.g., space and frequency)
The proposed method exploits the underlying physical structure of radio maps and proposes an ADMMnoises in a latent domain.
This design significantly improves computational efficiency and enhances noise robustness.
arXiv Detail & Related papers (2025-01-23T08:42:24Z) - RadioDiff: An Effective Generative Diffusion Model for Sampling-Free Dynamic Radio Map Construction [42.596399621642234]
Radio map (RM) is a promising technology that can obtain pathloss based on only location.
In this paper, a sampling-free RM construction is modeled as a conditional generative problem, where a denoised diffusion-based method, named RadioDiff, is proposed to achieve high-quality RM construction.
Experimental results show that the proposed RadioDiff achieves state-of-the-art performance in all three metrics of accuracy, structural similarity, and peak signal-to-noise ratio.
arXiv Detail & Related papers (2024-08-16T08:02:00Z) - RadioGAT: A Joint Model-based and Data-driven Framework for Multi-band Radiomap Reconstruction via Graph Attention Networks [36.8227064106456]
Multi-band radiomap reconstruction (MB-RMR) is a key component in wireless communications for tasks such as spectrum management and network planning.
Traditional machine-learning-based MB-RMR methods, which rely heavily on simulated data, face significant deployment challenges.
This study presents RadioGAT, a novel framework based on Graph Attention Network (GAT) tailored for MB-RMR within a single area.
arXiv Detail & Related papers (2024-03-25T03:23:10Z) - Fast and Accurate Cooperative Radio Map Estimation Enabled by GAN [63.90647197249949]
In the 6G era, real-time radio resource monitoring and management are urged to support diverse wireless-empowered applications.
In this paper, we present a cooperative radio map estimation approach enabled by the generative adversarial network (GAN)
arXiv Detail & Related papers (2024-02-05T05:01:28Z) - RF-ULM: Ultrasound Localization Microscopy Learned from Radio-Frequency Wavefronts [7.652037892439504]
Delay-and-sum beamforming leads to irreversible reduction of Radio-Frequency (RF) channel data.
rich contextual information embedded within RF wavefronts offers great promise for guiding Deep Neural Networks (DNNs) in challenging localization scenarios.
We propose to directly localize scatterers in RF channel data using learned feature channel shuffling, non-maximum suppression, and a semi-global convolutional block.
arXiv Detail & Related papers (2023-10-02T18:41:23Z) - Uncertainty-Aware Source-Free Adaptive Image Super-Resolution with Wavelet Augmentation Transformer [60.31021888394358]
Unsupervised Domain Adaptation (UDA) can effectively address domain gap issues in real-world image Super-Resolution (SR)
We propose a SOurce-free Domain Adaptation framework for image SR (SODA-SR) to address this issue, i.e., adapt a source-trained model to a target domain with only unlabeled target data.
arXiv Detail & Related papers (2023-03-31T03:14:44Z) - Model-based Deep Learning Receiver Design for Rate-Splitting Multiple
Access [65.21117658030235]
This work proposes a novel design for a practical RSMA receiver based on model-based deep learning (MBDL) methods.
The MBDL receiver is evaluated in terms of uncoded Symbol Error Rate (SER), throughput performance through Link-Level Simulations (LLS) and average training overhead.
Results reveal that the MBDL outperforms by a significant margin the SIC receiver with imperfect CSIR.
arXiv Detail & Related papers (2022-05-02T12:23:55Z) - Three-Way Deep Neural Network for Radio Frequency Map Generation and
Source Localization [67.93423427193055]
Monitoring wireless spectrum over spatial, temporal, and frequency domains will become a critical feature in beyond-5G and 6G communication technologies.
In this paper, we present a Generative Adversarial Network (GAN) machine learning model to interpolate irregularly distributed measurements across the spatial domain.
arXiv Detail & Related papers (2021-11-23T22:25:10Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.