Learning to Interfere in Non-Orthogonal Multiple-Access Joint Source-Channel Coding
Journal:
arXiv
Published Date:
Mar 23, 2025
Abstract
We consider multiple transmitters aiming to communicate their source signals
(e.g., images) over a multiple access channel (MAC). Conventional communication
systems minimize interference by orthogonally allocating resources (time and/or
bandwidth) among users, which limits their capacity. We introduce a machine
learning (ML)-aided wireless image transmission method that merges compression
and channel coding using a multi-view autoencoder, which allows the
transmitters to use all the available channel resources simultaneously,
resulting in a non-orthogonal multiple access (NOMA) scheme. The receiver must
recover all the images from the received superposed signal, while also
associating each image with its transmitter. Traditional ML models deal with
individual samples, whereas our model allows signals from different users to
interfere in order to leverage gains from NOMA under limited bandwidth and
power constraints. We introduce a progressive fine-tuning algorithm that
doubles the number of users at each iteration, maintaining initial performance
with orthogonalized user-specific projections, which is then improved through
fine-tuning steps. Remarkably, our method scales up to 16 users and beyond,
with only a 0.6% increase in the number of trainable parameters compared to a
single-user model, significantly enhancing recovered image quality and
outperforming existing NOMA-based methods over a wide range of datasets,
metrics, and channel conditions. Our approach paves the way for more efficient
and robust multi-user communication systems, leveraging innovative ML
components and strategies.