中文

SoftBinary Coding: A New Information-Theoretic Neural Compression Paradigm

信息论 2026-06-28 v1 信号处理

摘要

Neural compression is currently dominated by Nonlinear Transform Coding (NTC), which maps data to real-valued latents via continuous transforms. Despite its success, NTC suffers from train-test mismatch due to non-differentiable quantization, a ``smoothness bias" inherent in continuous transforms that precludes optimality for certain sources, and a loss of ``shaping gain" due to the complexity of including high-dimensional vector quantization. We propose SoftBinary Coding (SBC), an end-to-end learning paradigm that bypasses these limitations by using a stochastic binary latent space. In the spirit of vector quantization, SBC employs discrete representations and compresses them through a novel fast binary channel simulation scheme, for which we provide a proof of rate optimality. Experimental gains on information-theoretic sources provide both theoretical and practical closure to NTC's limitations, establishing discrete binary structures as a viable path toward reaching optimal rate--distortion bounds. Surprisingly, SBC also achieves state-of-the-art performance on vector quantization of i.i.d. sources, exceeding Trellis Coded Quantization of the Gaussian source.

引用

@article{arxiv.2606.29578,
  title  = {SoftBinary Coding: A New Information-Theoretic Neural Compression Paradigm},
  author = {Ezgi Ozyilkan and Sharang M. Sriramu and Elza Erkip and Aaron B. Wagner and Jona Ballé},
  journal= {arXiv preprint arXiv:2606.29578},
  year   = {2026}
}

备注

accepted to ICML 2026 as a conference paper