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Building Semantic Communication System via Molecules: An End-to-End
  Training Approach

Building Semantic Communication System via Molecules: An End-to-End Training Approach

15 April 2024
Yukun Cheng
Wei Chen
Bo Ai
ArXivPDFHTML

Papers citing "Building Semantic Communication System via Molecules: An End-to-End Training Approach"

8 / 8 papers shown
Title
Semantic Learning for Molecular Communication in Internet of Bio-Nano Things
Semantic Learning for Molecular Communication in Internet of Bio-Nano Things
Hanlin Cai
Ozgur B. Akan
58
0
0
12 Feb 2025
VideoQA-SC: Adaptive Semantic Communication for Video Question Answering
VideoQA-SC: Adaptive Semantic Communication for Video Question Answering
Jiangyuan Guo
Wei Chen
Yuxuan Sun
Jia-lin Xu
Bo Ai
76
4
0
17 May 2024
Encrypted Semantic Communication Using Adversarial Training for Privacy
  Preserving
Encrypted Semantic Communication Using Adversarial Training for Privacy Preserving
Xinlai Luo
Zhiyong Chen
M. Tao
Feng Yang
FedML
60
43
0
19 Sep 2022
Beyond Transmitting Bits: Context, Semantics, and Task-Oriented
  Communications
Beyond Transmitting Bits: Context, Semantics, and Task-Oriented Communications
Deniz Gunduz
Zhijin Qin
Iñaki Estella Aguerri
Harpreet S. Dhillon
Zhaohui Yang
Aylin Yener
Kai‐Kit Wong
C. Chae
49
441
0
19 Jul 2022
Deep Joint Source-Channel Coding for Image Transmission with Visual
  Protection
Deep Joint Source-Channel Coding for Image Transmission with Visual Protection
Jia-lin Xu
Bo Ai
Wei Chen
Ning Wang
Miguel R. D. Rodrigues
62
16
0
05 Nov 2021
Model-free Training of End-to-end Communication Systems
Model-free Training of End-to-end Communication Systems
Fayçal Ait Aoudia
J. Hoydis
45
189
0
14 Dec 2018
Approximating the Void: Learning Stochastic Channel Models from
  Observation with Variational Generative Adversarial Networks
Approximating the Void: Learning Stochastic Channel Models from Observation with Variational Generative Adversarial Networks
Tim O'Shea
Tamoghna Roy
Nathan E. West
GAN
34
129
0
16 May 2018
A Novel Experimental Platform for In-Vessel Multi-Chemical Molecular
  Communications
A Novel Experimental Platform for In-Vessel Multi-Chemical Molecular Communications
Nariman Farsad
David Pan
Andrea J. Goldsmith
27
106
0
16 Apr 2017
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