Radio Generation Using Generative Adversarial Networks with An Unrolled
Design
- URL: http://arxiv.org/abs/2306.13893v1
- Date: Sat, 24 Jun 2023 07:47:22 GMT
- Title: Radio Generation Using Generative Adversarial Networks with An Unrolled
Design
- Authors: Weidong Wang, Jiancheng An, Hongshu Liao, Lu Gan, and Chau Yuen
- Abstract summary: We develop a novel GAN framework for radio generation called "Radio GAN"
The first is learning based on sampling points, which aims to model an underlying sampling distribution of radio signals.
The second is an unrolled generator design, combined with an estimated pure signal distribution as a prior, which can greatly reduce learning difficulty.
- Score: 18.049453261384013
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As a revolutionary generative paradigm of deep learning, generative
adversarial networks (GANs) have been widely applied in various fields to
synthesize realistic data. However, it is challenging for conventional GANs to
synthesize raw signal data, especially in some complex cases. In this paper, we
develop a novel GAN framework for radio generation called "Radio GAN". Compared
to conventional methods, it benefits from three key improvements. The first is
learning based on sampling points, which aims to model an underlying sampling
distribution of radio signals. The second is an unrolled generator design,
combined with an estimated pure signal distribution as a prior, which can
greatly reduce learning difficulty and effectively improve learning precision.
Finally, we present an energy-constrained optimization algorithm to achieve
better training stability and convergence. Experimental results with extensive
simulations demonstrate that our proposed GAN framework can effectively learn
transmitter characteristics and various channel effects, thus accurately
modeling for an underlying sampling distribution to synthesize radio signals of
high quality.
Related papers
- 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) - Generative AI-Based Probabilistic Constellation Shaping With Diffusion
Models [12.218161437914118]
We aim to unleash the power of generative AI for PHY design of constellation symbols in communication systems.
We exploit the denoise-and-generate'' characteristics of diffusion probabilistic models (DDPM) for probabilistic constellation shaping.
Our results show that the generative AI-based scheme outperforms deep neural network (DNN)-based benchmark and uniform shaping.
arXiv Detail & Related papers (2023-11-15T20:14:21Z) - Joint Sensing, Communication, and AI: A Trifecta for Resilient THz User
Experiences [118.91584633024907]
A novel joint sensing, communication, and artificial intelligence (AI) framework is proposed so as to optimize extended reality (XR) experiences over terahertz (THz) wireless systems.
arXiv Detail & Related papers (2023-04-29T00:39:50Z) - Synthetic Wave-Geometric Impulse Responses for Improved Speech
Dereverberation [69.1351513309953]
We show that accurately simulating the low-frequency components of Room Impulse Responses (RIRs) is important to achieving good dereverberation.
We demonstrate that speech dereverberation models trained on hybrid synthetic RIRs outperform models trained on RIRs generated by prior geometric ray tracing methods.
arXiv Detail & Related papers (2022-12-10T20:15:23Z) - Decision Forest Based EMG Signal Classification with Low Volume Dataset
Augmented with Random Variance Gaussian Noise [51.76329821186873]
We produce a model that can classify six different hand gestures with a limited number of samples that generalizes well to a wider audience.
We appeal to a set of more elementary methods such as the use of random bounds on a signal, but desire to show the power these methods can carry in an online setting.
arXiv Detail & Related papers (2022-06-29T23:22:18Z) - Multi-task Learning Approach for Modulation and Wireless Signal
Classification for 5G and Beyond: Edge Deployment via Model Compression [1.218340575383456]
Future communication networks must address the scarce spectrum to accommodate growth of heterogeneous wireless devices.
We exploit the potential of deep neural networks based multi-task learning framework to simultaneously learn modulation and signal classification tasks.
We provide a comprehensive heterogeneous wireless signals dataset for public use.
arXiv Detail & Related papers (2022-02-26T14:51:02Z) - Conditioning Trick for Training Stable GANs [70.15099665710336]
We propose a conditioning trick, called difference departure from normality, applied on the generator network in response to instability issues during GAN training.
We force the generator to get closer to the departure from normality function of real samples computed in the spectral domain of Schur decomposition.
arXiv Detail & Related papers (2020-10-12T16:50:22Z) - Generative Adversarial Networks (GANs): An Overview of Theoretical
Model, Evaluation Metrics, and Recent Developments [9.023847175654602]
Generative Adversarial Network (GAN) is an effective method to produce samples of large-scale data distribution.
GANs provide an appropriate way to learn deep representations without widespread use of labeled training data.
In GANs, the generative model is estimated via a competitive process where the generator and discriminator networks are trained simultaneously.
arXiv Detail & Related papers (2020-05-27T05:56:53Z) - A Compressive Sensing Approach for Federated Learning over Massive MIMO
Communication Systems [82.2513703281725]
Federated learning is a privacy-preserving approach to train a global model at a central server by collaborating with wireless devices.
We present a compressive sensing approach for federated learning over massive multiple-input multiple-output communication systems.
arXiv Detail & Related papers (2020-03-18T05:56:27Z) - Reconfigurable Intelligent Surface Assisted Multiuser MISO Systems
Exploiting Deep Reinforcement Learning [21.770491711632832]
The reconfigurable intelligent surface (RIS) has been speculated as one of the key enabling technologies for the future six generation (6G) wireless communication systems.
In this paper, we investigate the joint design of transmit beamforming matrix at the base station and the phase shift matrix at the RIS, by leveraging recent advances in deep reinforcement learning (DRL)
The proposed algorithm is not only able to learn from the environment and gradually improve its behavior, but also obtains the comparable performance compared with two state-of-the-art benchmarks.
arXiv Detail & Related papers (2020-02-24T04:28:44Z) - High-Fidelity Synthesis with Disentangled Representation [60.19657080953252]
We propose an Information-Distillation Generative Adrial Network (ID-GAN) for disentanglement learning and high-fidelity synthesis.
Our method learns disentangled representation using VAE-based models, and distills the learned representation with an additional nuisance variable to the separate GAN-based generator for high-fidelity synthesis.
Despite the simplicity, we show that the proposed method is highly effective, achieving comparable image generation quality to the state-of-the-art methods using the disentangled representation.
arXiv Detail & Related papers (2020-01-13T14:39:40Z)
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.