Distributed Nonlinear Transform Source-Channel Coding for Wireless Correlated Image Transmission
Journal:
arXiv
Published Date:
Mar 27, 2025
Abstract
This paper investigates distributed joint source-channel coding (JSCC) for
correlated image semantic transmission over wireless channels. In this setup,
correlated images at different transmitters are separately encoded and
transmitted through dedicated channels for joint recovery at the receiver. We
propose a novel distributed nonlinear transform source-channel coding (D-NTSCC)
framework. Unlike existing learning-based approaches that implicitly learn
source correlation in a purely data-driven manner, our method explicitly models
the source correlation through joint distribution. Specifically, the correlated
images are separately encoded into latent representations via an encoding
transform function, followed by a JSCC encoder to produce channel input
symbols. A learned joint entropy model is introduced to determine the
transmission rates, which more accurately approximates the joint distribution
of the latent representations and captures source dependencies, thereby
improving rate-distortion performance. At the receiver, a JSCC decoder and a
decoding transform function reconstruct the images from the received signals,
each serving as side information for recovering the other image. Therein, a
transformation module is designed to align the latent representations for
maximal correlation learning. Furthermore, a loss function is derived to
jointly optimize encoding, decoding, and the joint entropy model, ensuring that
the learned joint entropy model approximates the true joint distribution.
Experiments on multi-view datasets show that D-NTSCC outperforms
state-of-the-art distributed schemes, demonstrating its effectiveness in
exploiting source correlation.