Litcius/Paper detail

Neural Distributed Source Coding

Jay Whang, Alliot Nagle, Anish Acharya, Hyeji Kim, Alexandros G. Dimakis

2024IEEE Journal on Selected Areas in Information Theory13 citationsDOI

Abstract

We consider the Distributed Source Coding (DSC) problem concerning the task of encoding an input in the absence of correlated side information that is only available to the decoder. Remarkably, Slepian and Wolf showed in 1973 that an encoder without access to the side information can asymptotically achieve the same compression rate as when the side information is available to it. This seminal result was later extended to lossy compression of distributed sources by Wyner, Ziv, Berger, and Tung. While there is vast prior work on this topic, practical DSC has been limited to synthetic datasets and specific correlation structures. Here we present a framework for lossy DSC that is agnostic to the correlation structure and can scale to high dimensions. Rather than relying on hand-crafted source modeling, our method utilizes a conditional Vector-Quantized Variational auto-encoder (VQ-VAE) to learn the distributed encoder and decoder. We evaluate our method on multiple datasets and show that our method can handle complex correlations and achieves state-of-the-art PSNR.

Topics & Concepts

Distributed source codingEncoderComputer scienceLossy compressionSource codeCoding (social sciences)Context-adaptive binary arithmetic codingEncoding (memory)AlgorithmTheoretical computer scienceData compressionDecoding methodsArtificial intelligenceVariable-length codeMathematicsStatisticsOperating systemGenerative Adversarial Networks and Image SynthesisChaos-based Image/Signal EncryptionDigital Media Forensic Detection
Neural Distributed Source Coding | Litcius