Robust one-bit compressed sensing with partial circulant matrices

Sjoerd Dirksen, Shahar Mendelson

Research output: Working paperPreprintAcademic

Abstract

We present optimal sample complexity estimates for one-bit compressed sensing problems in a realistic scenario: the procedure uses a structured matrix (a randomly sub-sampled circulant matrix) and is robust to analog pre-quantization noise as well as to adversarial bit corruptions in the quantization process. Our results imply that quantization is not a statistically expensive procedure in the presence of nontrivial analog noise: recovery requires the same sample size one would have needed had the measurement matrix been Gaussian and the noisy analog measurements been given as data.
Original languageEnglish
PublisherarXiv
Number of pages28
DOIs
Publication statusUnpublished - 17 Dec 2018

Keywords

  • cs.IT
  • eess.SP
  • math.IT
  • math.PR

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