English

Reconstructing Gaussian sources by spatial sampling

Information Theory 2018-03-16 v1 Machine Learning math.IT

Abstract

Consider a Gaussian memoryless multiple source with mm components with joint probability distribution known only to lie in a given class of distributions. A subset of kmk \leq m components are sampled and compressed with the objective of reconstructing all the mm components within a specified level of distortion under a mean-squared error criterion. In Bayesian and nonBayesian settings, the notion of universal sampling rate distortion function for Gaussian sources is introduced to capture the optimal tradeoffs among sampling, compression rate and distortion level. Single-letter characterizations are provided for the universal sampling rate distortion function. Our achievability proofs highlight the following structural property: it is optimal to compress and reconstruct first the sampled components of the GMMS alone, and then form estimates for the unsampled components based on the former.

Keywords

Cite

@article{arxiv.1803.05605,
  title  = {Reconstructing Gaussian sources by spatial sampling},
  author = {Vinay Praneeth Boda},
  journal= {arXiv preprint arXiv:1803.05605},
  year   = {2018}
}