Distributed Image Semantic Communication via Nonlinear Transform Coding
Journal:
arXiv
Published Date:
Jun 9, 2025
Abstract
This paper investigates distributed source-channel coding 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 general
approach for distributed image semantic communication that applies to both
separate source and channel coding (SSCC) and joint source-channel coding
(JSCC). Unlike existing learning-based approaches that implicitly learn source
correlation in a purely data-driven manner, our method leverages nonlinear
transform coding (NTC) to explicitly model source correlation from both
probabilistic and geometric perspectives. A joint entropy model approximates
the joint distribution of latent representations to guide adaptive rate
allocation, while a transformation module aligns latent features for maximal
correlation learning at the decoder. We implement this framework as D-NTSC for
SSCC and D-NTSCC for JSCC, both built on Swin Transformers for effective
feature extraction and correlation exploitation. Variational inference is
employed to derive principled loss functions that jointly optimize encoding,
decoding, and joint entropy modeling. Extensive experiments on real-world
multi-view datasets demonstrate that D-NTSC and D-NTSCC outperform existing
distributed SSCC and distributed JSCC baselines, respectively, achieving
state-of-the-art performance in both pixel-level and perceptual quality
metrics.