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Applying Deep-Learning-Based Computer Vision to Wireless Communications:
  Methodologies, Opportunities, and Challenges
v1v2v3v4 (latest)

Applying Deep-Learning-Based Computer Vision to Wireless Communications: Methodologies, Opportunities, and Challenges

IEEE Open Journal of the Communications Society (OJ-COMSOC), 2020
10 June 2020
Yu Tian
Gaofeng Pan
Mohamed-Slim Alouini
ArXiv (abs)PDFHTML

Papers citing "Applying Deep-Learning-Based Computer Vision to Wireless Communications: Methodologies, Opportunities, and Challenges"

8 / 8 papers shown
Semantic-Aware Visual Information Transmission With Key Information Extraction Over Wireless Networks
Semantic-Aware Visual Information Transmission With Key Information Extraction Over Wireless Networks
Chen Zhu
Kang Liang
Jianrong Bao
Zhouxiang Zhao
Zhaohui Yang
Zhaoyang Zhang
M. Shikh-Bahaei
117
0
0
15 Jun 2025
Vision Aided Channel Prediction for Vehicular Communications: A Case Study of Received Power Prediction Using RGB Images
Vision Aided Channel Prediction for Vehicular Communications: A Case Study of Received Power Prediction Using RGB ImagesIEEE Transactions on Vehicular Technology (IEEE Trans. Veh. Technol.), 2025
Xuejian Zhang
Ruisi He
Mi Yang
Zhengyu Zhang
Ziyi Qi
Bo Ai
198
4
0
25 Jan 2025
VOMTC: Vision Objects for Millimeter and Terahertz Communications
VOMTC: Vision Objects for Millimeter and Terahertz CommunicationsIEEE Transactions on Cognitive Communications and Networking (IEEE TCCN), 2024
Sunwoo Kim
Yongjun Ahn
Daeyoung Park
B. Shim
166
7
0
14 Sep 2024
Multimodal Transformers for Wireless Communications: A Case Study in
  Beam Prediction
Multimodal Transformers for Wireless Communications: A Case Study in Beam Prediction
Yu Tian
Qiyang Zhao
Zine el abidine Kherroubi
Fouzi Boukhalfa
Kebin Wu
Faouzi Bader
132
30
0
21 Sep 2023
Camera Based mmWave Beam Prediction: Towards Multi-Candidate Real-World
  Scenarios
Camera Based mmWave Beam Prediction: Towards Multi-Candidate Real-World ScenariosIEEE Transactions on Vehicular Technology (IEEE Trans. Veh. Technol.), 2023
Gouranga Charan
Muhammad Alrabeiah
Tawfik Osman
Ahmed Alkhateeb
140
20
0
14 Aug 2023
Deep Learning on Multimodal Sensor Data at the Wireless Edge for
  Vehicular Network
Deep Learning on Multimodal Sensor Data at the Wireless Edge for Vehicular NetworkIEEE Transactions on Vehicular Technology (IEEE Trans. Veh. Technol.), 2022
Batool Salehi
Guillem Reus-Muns
Debashri Roy
Zifeng Wang
T. Jian
Jennifer Dy
Stratis Ioannidis
Kaushik R. Chowdhury
110
73
0
12 Jan 2022
Vision-Aided Beam Tracking: Explore the Proper Use of Camera Images with
  Deep Learning
Vision-Aided Beam Tracking: Explore the Proper Use of Camera Images with Deep Learning
Yu Tian
Chenwei Wang
106
16
0
29 Sep 2021
Vision-Aided Radio: User Identity Match in Radio and Video Domains Using
  Machine Learning
Vision-Aided Radio: User Identity Match in Radio and Video Domains Using Machine Learning
Vinicius Mesquita De Pinho
M. D. De Campos
L. U. Garcia
D. Popescu
256
12
0
14 Oct 2020
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