This is the code for paper for OFDM-guided Deep Joint Source Channel Coding for Wireless Multipath Fading Channels, which is a journal version of Deep Joint Source Channel Coding for WirelessImage Transmission with OFDM.
CIFAR-10
and CIFAR-100
will be downloaded after the first run.
CelebA
can be downloaded here and should be placed at dataset/celeba/CelebA_train
and dataset/celeba/CelebA_test
.
OpenImage
can be donwloaded here.
Please edit the files under configs
to test different schemes.
__C.name = 'JSCC_OFDM' # Name of the experiment
__C.gpu_ids = [1] # GPUs to use
__C.dataset_mode = 'OpenImage' # ['CIFAR10', 'CIFAR100', 'CelebA', 'OpenImage']
__C.checkpoints_dir = './Checkpoints/' + __C.dataset_mode # Path to store the model
__C.model = 'JSCCOFDM'
__C.C_channel = 12 # Number of channels for output latents (controls the communication rate)
# Calculation of the rate (channel usage per pixel):
# C_channel / (3 x 2^(2 x n_downsample + 1))
__C.SNR = 5 # Signal to noise ratio
__C.SNR_cal = 'ins' # ['ins', 'avg']. 'ins' is for instantaneous SNR, 'avg' is for average SNR
__C.feedforward = 'OFDM-CE-sub-EQ-sub' # Different schemes:
# OFDM-CE-EQ: MMSE channel estimation and equalization without any subnets
# OFDM-CE-sub-EQ: MMSE channel estimation and equalization with CE subnet
# OFDM-CE-sub-EQ-sub: MMSE channel estimation and equalization with CE & EQ subnet
# OFDM-feedback: pre-coding scheme with CSI feedback
__C.N_pilot = 1 # Number of pilot symbols
__C.is_clip = False # Whether to apply signal clipping or not
__C.CR = 1.2 # Clipping ratio if clipping is applied
__C.lam_h = 50 # Weight for the channel reconstruction loss
__C.gan_mode = 'none' # ['wgangp', 'lsgan', 'vanilla', 'none']
__C.lam_G = 0.02 # Weight for the adversarial loss
__C.lam_L2 = 100 # Weight for image reconstruction loss
Run train.py
to train the model. The trained model will be saved under Checkpoints
.
Run test.py
to test the model. Some recovered images will be saved under Images
.
@misc{yang2021ofdmguided,
title={OFDM-guided Deep Joint Source Channel Coding for Wireless Multipath Fading Channels},
author={Mingyu Yang and Chenghong Bian and Hun-Seok Kim},
year={2021},
eprint={2109.05194},
archivePrefix={arXiv},
primaryClass={eess.SP}
}
@INPROCEEDINGS{9500996,
author={Yang, Mingyu and Bian, Chenghong and Kim, Hun-Seok},
booktitle={ICC 2021 - IEEE International Conference on Communications},
title={Deep Joint Source Channel Coding for Wireless Image Transmission with OFDM},
year={2021},
volume={},
number={},
pages={1-6},
doi={10.1109/ICC42927.2021.9500996}
}