Mutli-Level Autoencoder: Deep Learning Based Channel Coding and Modulation
Abstract
In this paper, we design a deep learning-based convolutional autoencoder for channel coding and modulation. The objective is to develop an adaptive scheme capable of operating at various signal-to-noise ratios (SNR)s without the need for re-training. Additionally, the proposed framework allows validation by testing all possible codes in the codebook, as opposed to previous AI-based encoder/decoder frameworks which relied on testing only a small subset of the available codes. This limitation in earlier methods often led to unreliable conclusions when generalized to larger codebooks. In contrast to previous methods, our multi-level encoding and decoding approach splits the message into blocks, where each encoder block processes a distinct group of bits. By doing so, the proposed scheme can exhaustively test possible codewords for each encoder/decoder level, constituting a layer of the overall scheme. The proposed model was compared to classical polar codes and TurboAE-MOD schemes, showing improved reliability with achieving comparable, or even superior results in some settings. Notably, the architecture can adapt to different SNRs by selectively removing one of the encoder/decoder layers without re-training, thus demonstrating flexibility and efficiency in practical wireless communication scenarios.
Cite
@article{arxiv.2506.23511,
title = {Mutli-Level Autoencoder: Deep Learning Based Channel Coding and Modulation},
author = {Ahmad Abdel-Qader and Anas Chaaban and Mohamed S. Shehata},
journal= {arXiv preprint arXiv:2506.23511},
year = {2025}
}
Comments
Accepted at IWCMC 2025