Generative AI Meets 6G and Beyond: Diffusion Models for Semantic Communications
- URL: http://arxiv.org/abs/2511.08416v1
- Date: Wed, 12 Nov 2025 01:58:06 GMT
- Title: Generative AI Meets 6G and Beyond: Diffusion Models for Semantic Communications
- Authors: Hai-Long Qin, Jincheng Dai, Guo Lu, Shuo Shao, Sixian Wang, Tongda Xu, Wenjun Zhang, Ping Zhang, Khaled B. Letaief,
- Abstract summary: generative AI has catalyzed generative semantic communications.<n> diffusion models stand out for their superior generation quality, stable training dynamics, and rigorous theoretical foundations.<n>This article provides the first comprehensive tutorial on diffusion models for generative semantic communications.
- Score: 48.30062801816225
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Semantic communications mark a paradigm shift from bit-accurate transmission toward meaning-centric communication, essential as wireless systems approach theoretical capacity limits. The emergence of generative AI has catalyzed generative semantic communications, where receivers reconstruct content from minimal semantic cues by leveraging learned priors. Among generative approaches, diffusion models stand out for their superior generation quality, stable training dynamics, and rigorous theoretical foundations. However, the field currently lacks systematic guidance connecting diffusion techniques to communication system design, forcing researchers to navigate disparate literatures. This article provides the first comprehensive tutorial on diffusion models for generative semantic communications. We present score-based diffusion foundations and systematically review three technical pillars: conditional diffusion for controllable generation, efficient diffusion for accelerated inference, and generalized diffusion for cross-domain adaptation. In addition, we introduce an inverse problem perspective that reformulates semantic decoding as posterior inference, bridging semantic communications with computational imaging. Through analysis of human-centric, machine-centric, and agent-centric scenarios, we illustrate how diffusion models enable extreme compression while maintaining semantic fidelity and robustness. By bridging generative AI innovations with communication system design, this article aims to establish diffusion models as foundational components of next-generation wireless networks and beyond.
Related papers
- Bridging the Discrete-Continuous Gap: Unified Multimodal Generation via Coupled Manifold Discrete Absorbing Diffusion [60.186310080523135]
Bifurcation of generative modeling into autoregressive approaches for discrete data (text) and diffusion approaches for continuous data (images) hinders development of truly unified multimodal systems.<n>We propose textbfCoM-DAD, a novel probabilistic framework that reformulates multimodal generation as a hierarchical dual-process.<n>Our method demonstrates superior stability over standard masked modeling, establishing a new paradigm for scalable, unified text-image generation.
arXiv Detail & Related papers (2026-01-07T16:21:19Z) - On the Role of Discreteness in Diffusion LLMs [69.64854287505999]
We revisit the view of diffusion process and language modeling, and outline five properties that separate diffusion mechanics from language-specific requirements.<n>We identify two central issues: (i) uniform corruption does not respect how information is distributed across positions, and (ii) token-wise marginal training cannot capture multi-token dependencies during parallel decoding.<n>These observations motivate diffusion processes that align more closely with the structure of text, and encourage future work toward more coherent diffusion language models.
arXiv Detail & Related papers (2025-12-27T16:03:08Z) - Latent Diffusion Model Based Denoising Receiver for 6G Semantic Communication: From Stochastic Differential Theory to Application [11.385703484113552]
We propose a novel semantic communication framework empowered by generative artificial intelligence (GAI)<n>A latent diffusion model (LDM)-based semantic communication framework is proposed that combines a variational autoencoder for semantic features extraction.<n>The proposed system is a training-free framework that supports zero-shot generalization, and achieves superior performance under low-SNR and out-of-distribution conditions.
arXiv Detail & Related papers (2025-06-06T03:20:32Z) - Transformers from Diffusion: A Unified Framework for Neural Message Passing [79.9193447649011]
Message passing neural networks (MPNNs) have become a de facto class of model solutions.<n>We propose an energy-constrained diffusion model, which integrates the inductive bias of diffusion with layer-wise constraints of energy.<n>Building on these insights, we devise a new class of message passing models, dubbed Transformers (DIFFormer), whose global attention layers are derived from the principled energy-constrained diffusion framework.
arXiv Detail & Related papers (2024-09-13T17:54:41Z) - Rethinking Multi-User Semantic Communications with Deep Generative Models [30.745379375963157]
We develop a novel generative semantic communication framework tailored for multi-user scenarios.
Under this innovative perspective, OFDMA systems should not aim to transmit the largest part of information.
The thorough experimental evaluation shows the capabilities of the novel diffusion model and the effectiveness of the proposed framework.
arXiv Detail & Related papers (2024-05-16T07:43:15Z) - Generative AI Meets Semantic Communication: Evolution and Revolution of
Communication Tasks [41.64537121421164]
We present a unified perspective of deep generative models in semantic communication.
We unveil their revolutionary role in future communication frameworks, enabling emerging applications and tasks.
arXiv Detail & Related papers (2024-01-10T09:56:36Z) - Diff-GO: Diffusion Goal-Oriented Communications to Achieve Ultra-High
Spectrum Efficiency [46.92279990929111]
This work presents an ultra-efficient communication design by utilizing generative AI-based on diffusion models.
We propose a new low-dimensional noise space for the training of diffusion models, which significantly reduces the communication overhead.
Our experimental results demonstrate that the proposed noise space and the diffusion-based generative model achieve ultra-high spectrum efficiency and accurate recovery of transmitted image signals.
arXiv Detail & Related papers (2023-11-13T17:52:44Z) - Diffusion Models for Wireless Communications [12.218161437914118]
We outline the applications of diffusion models in wireless communication systems.
The key idea is to decompose data generation process over "denoising" steps, gradually generating samples out of noise.
We show how diffusion models can be employed for the development of resilient AI-native communication systems.
arXiv Detail & Related papers (2023-10-11T08:57:59Z) - Generative AI-aided Joint Training-free Secure Semantic Communications
via Multi-modal Prompts [89.04751776308656]
This paper proposes a GAI-aided SemCom system with multi-model prompts for accurate content decoding.
In response to security concerns, we introduce the application of covert communications aided by a friendly jammer.
arXiv Detail & Related papers (2023-09-05T23:24:56Z) - Causal Semantic Communication for Digital Twins: A Generalizable
Imitation Learning Approach [74.25870052841226]
A digital twin (DT) leverages a virtual representation of the physical world, along with communication (e.g., 6G), computing, and artificial intelligence (AI) technologies to enable many connected intelligence services.
Wireless systems can exploit the paradigm of semantic communication (SC) for facilitating informed decision-making under strict communication constraints.
A novel framework called causal semantic communication (CSC) is proposed for DT-based wireless systems.
arXiv Detail & Related papers (2023-04-25T00:15:00Z) - Communication Beyond Transmitting Bits: Semantics-Guided Source and
Channel Coding [7.080957878208516]
"Semantic communications" offers promising research direction.
Injecting semantic guidance into the coded transmission design to achieve semantics-aware communications shows great potential for breakthrough in effectiveness and reliability.
This article sheds light on semantics-guided source and channel coding as a transmission paradigm of semantic communications.
arXiv Detail & Related papers (2022-08-04T06:12:55Z)
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.