Abstract:
Vehicle-to-everything (V2X) communication supports numerous tasks, from driving safety to entertainment services. To achieve a holistic view, vehicles are typically equip...Show MoreMetadata
Abstract:
Vehicle-to-everything (V2X) communication supports numerous tasks, from driving safety to entertainment services. To achieve a holistic view, vehicles are typically equipped with multiple sensors. However, processing large volumes of multimodal data increases transmission load, while the dynamic nature of vehicular networks adds to transmission instability. To address these challenges, we propose a novel framework, generative artificial intelligence (GAI)-enhanced multimodal semantic communication (SemCom), referred to as G-MSC, designed to handle various vehicular network tasks by employing suitable analog or digital transmission. GAI presents a promising opportunity to transform the SemCom framework by significantly enhancing semantic encoding, semantic information transmission, and semantic decoding. It optimizes multimodal information fusion at the transmitter, enhances channel robustness during transmission, and mitigates noise interference at the receiver. To validate the effectiveness of the G-MSC framework, we conduct a case study showcasing its performance in vehicular communication networks for predictive tasks. The experimental results show that the design achieves reliable and efficient communication in V2X networks. In the end, we present future research directions of G-MSC.
Published in: IEEE Vehicular Technology Magazine ( Early Access )
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- IEEE Keywords
- Index Terms
- Information Transmission ,
- Semantic Information ,
- Prediction Task ,
- Multiple Sensors ,
- Reliable Communication ,
- Vehicular Networks ,
- Vehicular Communication ,
- Vehicle-to-everything ,
- Digital Transmission ,
- Deep Learning ,
- Decoding ,
- Intersection Over Union ,
- Point Cloud ,
- Generative Adversarial Networks ,
- Path Planning ,
- Channel Model ,
- Inertial Measurement Unit ,
- Channel Estimation ,
- Variational Autoencoder ,
- Forward Error Correction ,
- Internet Of Vehicles ,
- Point Cloud Data ,
- Unified Representation ,
- Edge Server ,
- Collaborative Tasks ,
- Radar Sensor ,
- Early Fusion ,
- V2V Communication ,
- Lane Change ,
- Internet Of Things
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Information Transmission ,
- Semantic Information ,
- Prediction Task ,
- Multiple Sensors ,
- Reliable Communication ,
- Vehicular Networks ,
- Vehicular Communication ,
- Vehicle-to-everything ,
- Digital Transmission ,
- Deep Learning ,
- Decoding ,
- Intersection Over Union ,
- Point Cloud ,
- Generative Adversarial Networks ,
- Path Planning ,
- Channel Model ,
- Inertial Measurement Unit ,
- Channel Estimation ,
- Variational Autoencoder ,
- Forward Error Correction ,
- Internet Of Vehicles ,
- Point Cloud Data ,
- Unified Representation ,
- Edge Server ,
- Collaborative Tasks ,
- Radar Sensor ,
- Early Fusion ,
- V2V Communication ,
- Lane Change ,
- Internet Of Things