English

Super-resolution multi-reference alignment

Information Theory 2020-11-10 v2 Signal Processing math.IT

Abstract

We study super-resolution multi-reference alignment, the problem of estimating a signal from many circularly shifted, down-sampled, and noisy observations. We focus on the low SNR regime, and show that a signal in RM\mathbb{R}^M is uniquely determined when the number LL of samples per observation is of the order of the square root of the signal's length (L=O(M))(L=O(\sqrt{M})). Phrased more informally, one can square the resolution. This result holds if the number of observations is proportional to at least 1/SNR3^3. In contrast, with fewer observations recovery is impossible even when the observations are not down-sampled (L=ML=M). The analysis combines tools from statistical signal processing and invariant theory. We design an expectation-maximization algorithm and demonstrate that it can super-resolve the signal in challenging SNR regimes.

Keywords

Cite

@article{arxiv.2006.15354,
  title  = {Super-resolution multi-reference alignment},
  author = {Tamir Bendory and Ariel Jaffe and William Leeb and Nir Sharon and Amit Singer},
  journal= {arXiv preprint arXiv:2006.15354},
  year   = {2020}
}