Skip to main content

Research Repository

Advanced Search

CAST: Efficient Traffic Scenario Inpainting in Cellular Vehicle-to-Everything Systems

Zhao, Liang; Mao, Chaojin; Wan, Shaohua; Hawbani, Ammar; Al-Dubai, Ahmed Y.; Min, Geyong; Zomaya, Albert Y.

Authors

Liang Zhao

Chaojin Mao

Shaohua Wan

Ammar Hawbani

Geyong Min

Albert Y. Zomaya



Abstract

As a promising vehicular communication technology, Cellular Vehicle-to-Everything (C-V2X) is expected to ensure the safety and convenience of Intelligent Transportation Systems (ITS) by providing global road information. However, it is difficult to obtain global road information in practical scenarios since there will still be many vehicles on the road without onboard units (OBUs) in the near future. Specifically, although C-V2X vehicles have sensors that can perceive their surroundings and broadcast their perceived information to the C-V2X system, their line-of-sight (LoS) is limited and obscured by the environment, such as other vehicles and terrain. Besides, vehicles without OBUs cannot share their perceived information. These two problems cause extensive areas with unperceived information in the C-V2X system, and whether vehicles are in these areas is unknown. Thus, extending the perceivable range of the limited scenario for C-V2X applications that require global road information is necessary. To this end, this paper pioneers investigating the scenario inpainting task problem in C-V2X. To solve this challenging problem, we propose an effiCient trAffic Scenario inpainTing (CAST) solution consisting of a generative architecture and knowledge distillation, simultaneously considering the inpainting precision and computation efficiency. Extensive experiments have been conducted to demonstrate the effectiveness of CAST in terms of Precise Inpaint Rate (PIR), Rough Inpaint Rate (RIR), Lane-Level Inpaint Rate (LLIR), and Inpaint Confidence Error (ICE), paving the way for novel solutions for the inpainting problem in more complex road scenarios.

Citation

Zhao, L., Mao, C., Wan, S., Hawbani, A., Al-Dubai, A. Y., Min, G., & Zomaya, A. Y. (online). CAST: Efficient Traffic Scenario Inpainting in Cellular Vehicle-to-Everything Systems. IEEE Transactions on Mobile Computing, https://doi.org/10.1109/tmc.2024.3492148

Journal Article Type Article
Acceptance Date Nov 1, 2024
Online Publication Date Nov 6, 2024
Deposit Date Nov 2, 2024
Publicly Available Date Nov 6, 2024
Journal IEEE Transactions on Mobile Computing
Print ISSN 1536-1233
Publisher Institute of Electrical and Electronics Engineers
Peer Reviewed Peer Reviewed
DOI https://doi.org/10.1109/tmc.2024.3492148
Keywords C-V2X Scenario Inpainting, Generative Architecture, Knowledge Distillation, Intelligent Transportation Systems

Files

CAST: Efficient Traffic Scenario Inpainting in Cellular Vehicle-to-Everything Systems (accepted version) (2.7 Mb)
PDF








You might also like



Downloadable Citations